Metadata
Title
8 million phenological and sky images from 29 ecosystems from the Arctic to the tropics: the Phenological Eyes Network
Authors
Shin Nagai1,2, Tomoko Akitsu3, Taku M Saitoh4, Robert C Busey5, Karibu Fukuzawa6, Yoshiaki Honda7, Tomoaki Ichie8, Reiko Ide9, Hiroki Ikawa10, Akira Iwasaki11, Koki Iwao12, Koji Kajiwara7, Sinkyu Kang13, Yongwon Kim5, Kho Lip Khoon14, Alexander V Kononov15, Yoshiko Kosugi16, Takahisa Maeda17, Wataru Mamiya18, Masayuki Matsuoka8, Trofim C Maximov15, Annette Menzel19,20, Tomoaki Miura21, Toshie Mizunuma22, Tomoki Morozumi23, Takeshi Motohka24, Hiroyuki Muraoka4, Hirohiko Nagano5, Taro Nakai25, Tatsuro Nakaji26, Hiroyuki Oguma9, Takeshi Ohta27, Keisuke Ono10, Runi Anak Sylvester Pungga28, Roman E Petrov15, Rei Sakai18, Christian Schunk20, Seikoh Sekikawa29, Ruslan Shakhmatov23, Yowhan Son30, Atsuko Sugimoto31, Rikie Suzuki2, Kentaro Takagi32, Satoru Takanashi33, Shunsuke Tei31, Satoshi Tsuchida12, Hirokazu Yamamoto12, Eri Yamasaki34, Megumi Yamashita35, Tae Kyung Yoon36, Toshiya Yoshida18, Mitsunori Yoshimura37, Shinpei Yoshitake4, Matthew Wilkinson38, Lisa Wingate39, Kenlo Nishida Nasahara3
1Research and Development Center for Global Change, Japan Agency for Marine-Earth Science and Technology, 3173-25 Showa-machi, Kanazawa-ku, Yokohama, Kanagawa 236-0001, Japan, nagais@jamstec.go.jp
2 Institute of Arctic Climate and Environment Research, Japan Agency for Marine-Earth Science and Technology, 3173-25 Showa-machi, Kanazawa-ku, Yokohama, Kanagawa 236-0001, Japan
3 Faculty of Life and Environmental Sciences, University of Tsukuba, 1-1-1 Tennodai, Tsukuba, Ibaraki 305-8572, Japan, tomo.akki878@gmail.com, 24dakenlo@gmail.com
4 River Basin Research Center, Gifu University, 1-1 Yanagido, Gifu 501-1193, Japan, taku@green.gifu-u.ac.jp, syoshi@green.gifu-u.ac.jp, muraoka@green.gifu-u.ac.jp
5 International Arctic Research Center, University of Alaska Fairbanks, 930 Koyukuk Dr., PO Box 757320, Fairbanks, Alaska 99775-7320 USA, kimywjp@gmail.com, rcbusey@alaska.edu, nagano.hirohiko@jaea.go.jp
6 Nakagawa Experimental Forest, Field Science Center for Northern Biosphere, Hokkaido University, 483 Otoineppu, Otoineppu, Hokkaido 098-2502, Japan, caribu@fsc.hokudai.ac.jp
7 Center for Environmental Remote Sensing, Chiba University, 1-33 Yayoi-cho, Inage-ku, Chiba 263-8522, Japan, kkaji@faculty.chiba-u.jp, yhonda@mtf.biglobe.ne.jp
8Faculty of Agriculture and Marine Science, Kochi University , 200 Otsu, Monobe, Nankoku, Kochi 783-8502 Japan, ichie@kochi-u.ac.jp, msykmtok@kochi-u.ac.jp
9 National Institute for Environmental Studies, 16-2 Onogawa, Tsukuba, Ibaraki 305-8506, Japan, ide.reiko@nies.go.jp, oguma@nies.go.jp
10 Institute for Agro-Environmental Sciences, National Agriculture and Food Research Organization, 3-1-3 Kannondai, Tsukuba, Ibaraki 305-8604, Japan, hikawa.biomet@gmail.com, onok@affrc.go.jp
11 Research Center for Advanced Science and Technology, The University of Tokyo, 4-6-1 Komaba, Meguro-ku, Tokyo 153-8904, Japan, aiwasaki@sal.rcast.u-tokyo.ac.jp
12 Geological Survey of Japan, National Institute of Advanced Industrial Science and Technology, Tsukuba Central 7, Higashi 1-1-1 Tsukuba, Ibaraki 305-8567, Japan, s.tsuchida@aist.go.jp, iwao@aist.go.jp, hirokazu.yamamoto@aist.go.jp
13 Department of Environmental Science, Kangwon National University, Chunchon 200-701, Korea, kangsk@kangwon.ac.kr
14 Tropical Peat Research Institute, Malaysian Palm Oil Board, No.6, Persiaran Institusi, Bandar Baru Bangi, 43000 Selangor, Malaysia, lip.khoon@mpob.gov.my
15 Institute for Biological Problems of Cryolithozone, Siberian Division of Russian Academy of Sciences, 41, Lenin Ave., Yakutsk, The Republic of Sakha, 678891, planteco@mail.ru; t.c.maximov@ibpc.ysn.ru, pre2003@mail.ru
16 Graduate School of Agriculture, Kyoto University, Kitashirakawa, Oiwake-cho, Sakyo-ku, Kyoto, 602-8502, Japan, ykosugi@kais.kyoto-u.ac.jp
17 Environmental Management Research Institute, National Institute of Advanced Industrial Science and Technology, 16-1 Onogawa, Tsukuba, Ibaraki 305-8569, Japan, takahisa.maeda@aist.go.jp
18 Uryu Experimental Forest, Field Science Center for Northern Biosphere, Hokkaido University, Moshiri, Horokanai, Hokkaido, 074-0741, Japan, mamiya-w@fsc.hokudai.ac.jp, reisakai@fsc.hokudai.ac.jp, yoto@fsc.hokudai.ac.jp
19 Ecoclimatology, Technische Universität München, Hans-Carl-von-Carlowitz Platz 2, 85354 Freising, Germany, amenzel@wzw.tum.de
20 Institute for Advanced Study, Technische Universität München, Lichtenbergstraße 2a, 85748 Garching, Germany, schunk@wzw.tum.de
21 Department of Natural Resources and Environmental Management, College of Tropical Agriculture and Human Resources, University of Hawaiʻi at Mānoa, Honolulu, HI 96822, USA, tomoakim@hawaii.edu
22 Department of Botany, National Museum of Nature and Science, 4-1-1 Amakubo, Tsukuba, Ibaraki 305-0005, Japan, toshie.mizunuma@gmail.com
23 Graduate School of Environmental Science, Hokkaido University, N10W5, Sapporo, Hokkaido, 060-0810 Japan, both-horns@ees.hokudai.ac.jp, shakhmatovr@gmail.com
24 Earth Observation Research Center, Japan Aerospace Exploration Agency, 2-1-1 Sengen, Tsukuba 305-8505, Japan, motooka.takeshi@jaxa.jp
25 Institute for Space-Earth Environmental Research, Nagoya University, Furo-cho Chikusa-ku, Nagoya 464-8601 Japan, taro.nakai@gmail.com
26 Tomakomai Experimental Forest, Field Science Center for Northern Biosphere, Hokkaido University, Takaoka, Tomakomai, Hokkaido, 053-0035, Japan, nakaji@fsc.hokudai.ac.jp
27 Graduate School of Bioagricultural Sciences, Nagoya University, Furo-cho Chikusa-ku, Nagoya 464-8601 Japan, takeshi@agr.nagoya-u.ac.jp
28 Forest Department Sarawak, Tingkat 14, Wisma Sumber Alam Jalan Stadium, Petra Jaya, 93050 Kuching, Sarawak, Malaysia, runisp@sarawak.gov.my
29 Department of Agriculture, Tamagawa University, 6-1-1 Tamagawa-gakuen, Machida, Tokyo 194-8610, Japan, sekisei@agr.tamagawa.ac.jp
30 Division of Environmental Science and Ecological Engineering, Korea University, 145 Anamro, Seungbukgu, Seoul, Korea, yson@korea.ac.kr
31 Arctic Research Center, Hokkaido University, N21W11, Kita-ku, Sapporo 001-0021, Japan, atsukos@arc.hokudai.ac.jp, stei@arc.hokudai.ac.jp
32 Teshio Experimental Forest, Field Science Center for Northern Biosphere, Hokkaido University, Toikanbetsu, Horonobe, Hokkaido 098-2943, Japan, kentt@fsc.hokudai.ac.jp
33 Kansai Research Center, Forestry and Forest Products Research Institute, 68 Nagaikyutaroh, Momoyama, Fushimi, Kyoto 612-0855, Japan, tnsatoru@ffpri.affrc.go.jp
34 Department of Evolutionary Biology and Environmental Studies, University of Zurich, Winterthurertrasse 190, 8057 Zurich, Switzerland, eri.yamasaki@uzh.ch
35 Faculty of Agriculture, Tokyo University of Agriculture and Technology, 3-8-1 Harumi-cho, Fuchu, Tokyo 183-8538, Japan, meguyama@cc.tuat.ac.jp
36 Division of Environmental Strategy, Korea Environment Institute, 370 Sicheong-daero, Sejong, 30147, Republic of Korea, yoon.ecology@gmail.com
37 PASCO Corporation, Research and Development Center, 2-8-11 Higashiyama, Meguro-ku, Tokyo 153-0043, Japan, gr4m-ysmr@asahi-net.or.jp
38 Centre for Sustainable Forestry and Climate Change, Forest Research, Alice Holt Lodge, Farnham, Surrey, GU10 4LH, UK, Matthew.Wilkinson@forestry.gsi.gov.uk
39 INRA, UMR Interaction Sol Plante Atmosphère 1391, 33140 Villenave d’Ornon, France, lisa.wingate@inra.fr
*Corresponding author: Dr. Shin NAGAI, Research and Development Center for Global Change, Japan Agency for Marine-Earth Science and Technology, 3173-25 Showa-machi, Kanazawa-ku, Yokohama, Kanagawa 236-0001, Japan. Tel.: +81(45)778-5594; Fax: +81(45)778-5706; E-mail: nagais@jamstec.go.jp
Abstruct
We report long-term continuous phenological and sky images taken by time-lapse cameras through the Phenological Eyes Network (http://www.pheno-eye.org) in various ecosystems from the Arctic to the tropics. Phenological images are useful in recording the year-to-year variability in the timing of flowering, leaf-flush, leaf-coloring, and leaf-fall and detecting the characteristics of phenological patterns and timing sensitivity among species and ecosystems. They can also help interpret variations in carbon, water, and heat cycling in terrestrial ecosystems, and be used to obtain ground-truth data for the validation of satellite-observed products. Sky images are useful in continuously recording atmospheric conditions and obtaining ground-truth data for the validation of cloud contamination and atmospheric noise present in satellite remote-sensing data. We have taken sky, forest canopy, forest floor, and shoot images of a range of tree species and landscapes, using time-lapse cameras installed on forest floors, towers, and rooftops. In total, 84 time-lapse cameras at 29 sites have taken 8 million images since 1999. Our images provide (1) long-term, continuous detailed records of plant phenology that are more quantitative than in situ visual phenological observations of index trees; (2) basic information to explain the responsiveness, vulnerability, and resilience of ecosystem canopies and their functions and services to changes in climate; and (3) ground-truthing for the validation of satellite remote-sensing observations.
Keywords
- Boreal forest
- Decadal data set
- Digital camera
- Grassland
- Ground-truth
- Phenological Eyes Network
- Plant phenology
- Sky image
- Temperate forest
- Tropical forest
Introduction
Monitoring of spatio-temporal characteristics of plant phenology such as the timing and patterns of flowering, leaf-flush, leaf-coloring, and leaf-fall among species and ecosystem types is an extremely important task in evaluating the spatio-temporal variability of ecosystem functions (photosynthesis and evapotranspiration) and cultural services modulated by climate change (Richardson et al. 2013; Nagai et al. 2016a). In the Northern Hemisphere mid to high latitudes, the timing of flowering and leaf-flush has advanced and the timing of leaf-fall has delayed under global warming (Linderholm 2006; Menzel et al. 2006; Doi and Takahashi 2008; Matsumoto 2010; Ogawa-Onishi and Berry 2013). Shifts in the timing of flowering and leaf-flush may cause a mismatch between plant phenology and the life cycles of pollinators and predators, increasing the risk of biodiversity loss (SCBD 2010; Polgar and Primack 2011; Kudo 2014). Variations in the timing of leaf-flush and leaf-fall (which define growing period) also change the period of photosynthetic activity, and the annual carbon budget (sink or source) can be strongly affected (Richardson et al. 2013). Characteristics of growing period among species and ecosystem types (e.g., leaf longevity) correlate well with leaf traits and climate (Wright et al. 2004; Onoda et al. 2011; Kikuzawa et al. 2013). These findings support the need for accurate evaluation of the responsiveness of plant phenology among species and ecosystems to climate change to characterize the vulnerability and resilience of ecosystem functions and services. The geographical distribution of year-to-year variability in the timing of flowering, leaf-flush, leaf-coloring, and leaf-fall is a useful proxy for climate and its change. For instance, the geographical distribution of cherry flowering dates can be used to evaluate the local climate in and around cities (Matsumoto et al. 2006; Ohashi et al. 2012). In this case, long-term (>1200 years) year-to-year variability of air temperature in spring and autumn can be used to examine climate variability and improve the phenological modeling of cherry blooming and peak leaf-coloring (Aono and Kazui 2008; Aono and Tani 2014).
Long-term phenological observations are traditionally made by experts who visually inspect index trees (Linderholm 2006; Menzel et al. 2006; Doi and Takahashi 2008; Matsumoto 2010; Ogawa-Onishi and Berry 2013). This method has the merit of recording detailed temporal changes in plant phenology, but suffers from a number of drawbacks. It is labor intensive, making it difficult to obtain simultaneous observations at multiple points. In addition, it requires a qualitative criterion for each phenology stage (Richardson et al. 2007). To resolve these issues, remote-sensing observations using digital cameras and spectral radiometers mounted on towers, unmanned aerial vehicles, aircraft, and satellites are useful (Morisette et al. 2009). Digital photographs also have the benefit of accurately recording the characteristics of plant phenology among multiple species and ecosystems at the levels of shoot, individual, canopy, and landscape. In addition, depending on the camera quality and spectral characterization, it is possible to detect changes in red, green, and blue strength, although digital cameras are not radiometrically calibrated (Ahrends et al. 2008; Nagai et al. 2011a; Saitoh et al. 2012a; Inoue et al. 2014; Wingate et al. 2015). However, compared with spectral radiometers, digital cameras are very inexpensive and allow flexible installation at multiple sites (Saitoh et al. 2012a). The technology has improved to the point where phenology can now be recorded at unmanned fixed-point observatories at multiple sites across the world using time-lapse digital cameras. Consequently, an international network is now archiving time-lapse imagery data sets at an extremely high temporal resolution equal to or better than satellite products. The camera networks include the Phenological Eyes Network (PEN; mainly in Asia; Nasahara and Nagai 2015; http://www.pheno-eye.org), the PhenoCam network (mainly in North and South America and Europe; Brown et al. 2016; http://phenocam.sr.unh.edu/webcam/), the European Phenology Camera Network (Wingate et al. 2015; http://european-webcam-network.net/), the Australian Phenocam Network (mainly in Australia; Moore et al. 2016; https://phenocam.org.au/), and the e-phenology network (mainly in Brazil; http://www.recod.ic.unicamp.br/ephenology/client/index.html#/).
The use of time-lapse digital cameras has been useful for obtaining ground-truth data for daily satellite remote-sensing products obtained from the MODIS (Moderate-resolution Imaging Spectroradiometer) sensors onboard the Terra and Aqua satellites, and the VEGETATION sensor onboard the SPOT (Satellite Pour l’Observation de la Terre) satellite (Nagai et al. 2010a, 2014a, 2014b; Kobayashi et al. 2016). Because vegetation signals observed by these remote optical sensors can be contaminated by cloud and atmospheric noise, validation with near-proxy data sets can help establish the sky conditions during the satellites’ passage (Motohka et al. 2011; Nagai et al. 2011b, 2014b). Thus, efforts to monitor plant phenology and sky conditions at the same point and time are beneficial. In addition, the long-term continuous monitoring of sky conditions is an important task for revealing the interaction between the atmosphere and terrestrial ecosystem productivity (Mercado et al. 2009; Wilson and Jetz 2016).
Here, we report long-term, continuous daily phenological and sky images taken at 29 sites from boreal forests in Alaska and eastern Siberia to tropical rain forest in Borneo. A total of 84 time-lapse cameras installed on forest floors, towers, and rooftops have been taking forest canopy, forest floor vegetation, tree shoot, landscape, and sky images every day since 1999, so far collecting 8 million images. Our image database is now ready to provide (1) long-term, continuous detailed records of plant phenology that are more quantitative than historical, in situ phenological observations based on fixed-point visual inspection of index trees; (2) basic information for explaining the responsiveness, vulnerability, and resilience of ecosystem canopies and their functions and services to changes in climate; and (3) ground-truth data for the validation of satellite remote-sensing products.
Metadata
1. TITLE
8 million phenological and sky images from 29 ecosystems from the Arctic to the tropics: the Phenological Eyes Network
2. IDENTIFIER
ERDP-2018-05
3. CONTRIBUTOR
Data set owners and contact persons
Data set owners and contact persons are listed in Table 1. To obtain detailed site information and support for the use of the images, we recommend contacting the principal investigator at each site.
Table 1 Summary of data set owners and contact persons at the 29 PEN sites
Site ID |
Data set owners |
Contact person(s) |
Main organizations concerned |
AHS |
M. Wilkinson1; T. Mizunuma2 |
M. Wilkinson1 Matthew.Wilkinson@forestry.gsi.gov.uk |
Forest Research, UK |
EGT |
K.N. Nasahara3 |
K.N. Nasahara3 24dakenlo@gmail.com |
University of Tsukuba, Japan |
FHK |
H. Oguma4; R. Ide4, S. Tsuchida5, H. Yamamoto5 |
R. Ide4 Ide.reiko@nies.go.jp |
National Institute for Environmental Studies (NIES), Japan |
FJY |
S. Takanashi6 |
S. Takanashi6 tnsatoru@ffpri.affrc.go.jp |
Forestry and Forest Products Research Institute, Japan |
GDK |
S. Kang7 |
S. Kang7 kangsk@kangwon.ac.kr |
Kangwon National University, Korea |
HVT |
T. Miura8 |
T. Miura8 tomoakim@hawaii.edu |
University of Hawaiʻi at Mānoa, USA |
KBF |
A. Menzel9&10, C. Schunk9 |
A. Menzel9&10, C. Schunk9 amenzel@wzw.tum.de, schunk@wzw.tum.de |
Technische Universität München, Germany |
KEW |
Y. Kosugi11 |
Y. Kosugi11 ykosugi@kais.kyoto-u.ac.jp |
Kyoto University, Japan |
LAM |
K.L. Khoon12, S. Nagai13,14 |
L.K. Kho12 lip.khoon@mpob.gov.my |
Sarawak Oil Palms Berhad, Malaysia |
LBR |
S. Nagai13,14; T. Ichie15; M. Matsuoka15; E. Yamasaki16; R.A.S. Pungga17 |
S. Nagai13,14 nagais@jamstec.go.jp |
Forest Department Sarawak, Malaysia |
MMF |
K. Fukuzawa18 |
K. Fukuzawa18 caribu@fsc.hokudai.ac.jp |
Hokkaido University, Japan |
MSE |
K. Ono19; T. Akitsu20; T. Maeda21; T. Motohka22 |
K. Ono19; T. Maeda21 onok@affrc.go.jp, takahisa.maeda@aist.go.jp |
National Agriculture and Food Research Organization, Japan |
MTK |
T. Akitsu20; K.N. Nasahara20 |
T. Akitsu20 tomo.akki878@gmail.com |
University of Tsukuba, Japan |
PFA |
S. Nagai13,14; Y. Kim23; R.C. Busey23; T. Nakai24; H. Ikawa18; H. Nagano23, R. Suzuki14 |
S. Nagai13,14 nagais@jamstec.go.jp |
University of Alaska Fairbanks, USA |
RHN |
M. Yoshimura25, M. Yamashita26 |
M. Yoshimura25 gr4m-ysmr@asahi-net.or.jp |
PASCO Corporation, Japan |
SGD |
S. Sekikawa27 |
S. Sekikawa27 sekisei@agr.tamagawa.ac.jp |
Tamagawa University, Japan |
SHA |
Y. Son28, T.K. Yoon29 |
Y. Son28 yson@korea.ac.kr |
Korea University, Korea |
SSP |
S. Nagai13,14; T.C. Maximov30; A.V. Kononov30; R.E. Petrov 30; S. Tei31; T. Morozumi32; R. Shakhmatov32; A. Sugimoto31; O. Takeshi33, R. Suzuki14 |
S. Nagai13,14 nagais@jamstec.go.jp |
Siberian Division of Russian Academy of Sciences, Russia |
TFS |
H. Oguma4; R. Ide4 |
R. Ide4 ide.reiko@nies.go.jp |
NIES, Japan |
TGF |
T. Akitsu20; K.N. Nasahara20, T. Maeda21; T. Motohka22, S. Tsuchida5, H. Yamamoto5 |
T. Akitsu20, T. Maeda21 tomo.akki878@gmail.com, takahisa.maeda@aist.go.jp |
University of Tsukuba |
TKC |
S. Nagai13,14; T.M. Saitoh34 |
T.M. Saitoh34 taku@green.gifu-u.ac.jp |
Gifu University, Japan |
TKY |
T. Akitsu20; K.N. Nasahara20; S. Nagai13,14; S. Yoshitake34; T.M. Saitoh34; H. Muraoka34, S. Tsuchida5, H. Yamamoto5 |
H. Muraoka34 muraoka@green.gifu-u.ac.jp |
Gifu University, Japan |
TOC |
T. Nakaji35; H. Muraoka34 |
T. Nakaji35 nakaji@fsc.hokudai.ac.jp |
Hokkaido University, Japan |
TOE |
T. Nakaji35; R. Ide4; H. Oguma4 |
T. Nakaji35 nakaji@fsc.hokudai.ac.jp |
Hokkaido University, Japan |
TOS |
T. Nakaji35 |
T. Nakaji35 nakaji@fsc.hokudai.ac.jp |
Hokkaido University, Japan |
TSE |
K. Takagi36, H. Oguma4; R. Ide4; K. Fukuzawa22 |
R. Ide4 ide.reiko@nies.go.jp |
NIES, Japan |
UAK |
S. Nagai13,14; Y. Kim23; T. Nakai24; H. Ikawa18; H. Nagano23, R. Suzuki14 |
S. Nagai13,14 nagais@jamstec.go.jp |
University of Alaska Fairbanks, USA |
URY
|
T. Yoshida37; R. Sakai37, W. Mamiya37; T. Akitsu20 |
T. Yoshida37 yoto@fsc.hokudai.ac.jp |
Hokkaido University, Japan |
YGT |
K. Kajiwara38; Y. Honda38; S. Nagai13,14 |
K. Kajiwara38 kkaji@faculty.chiba-u.jp |
Chiba University, Japan |
1: Centre for Sustainable Forestry and Climate Change, Forest Research, Alice Holt Lodge, Farnham, Surrey, GU10 4LH, UK
2: Department of Botany, National Museum of Nature and Science, 4-1-1 Amakubo, Tsukuba, Ibaraki 305-0005, Japan
3: Faculty of Life and Environmental Sciences, University of Tsukuba, 1-1-1 Tennodai, Tsukuba, Ibaraki 305-8572, Japan
4: National Institute for Environmental Studies, 16-2 Onogawa, Tsukuba, Ibaraki 305-8506, Japan
5: Geological Survey of Japan, National Institute of Advanced Industrial Science and Technology, Tsukuba Central 7, Higashi 1-1-1 Tsukuba, Ibaraki 305-8567, Japan
6: Kansai Research Center, Forestry and Forest Products Research Institute, 68 Nagaikyutaroh, Momoyama, Fushimi, Kyoto 612-0855 Japan
7: Department of Environmental Science, Kangwon National University, Chunchon 200-701, Korea
8: Department of Natural Resources and Environmental Management, College of Tropical Agriculture and Human Resources, University of Hawaiʻi at Mānoa, Honolulu, HI 96822, USA
9: Technische Universität München, Hans-Carl-von-Carlowitz Platz 2, 85354 Freising, Germany
10: Institute for Advanced Study, Technische Universität München, Lichtenbergstraße 2a, 85748 Garching, Germany
11: Graduate School of Agriculture, Kyoto University, Kitashirakawa, Oiwake-cho, Sakyo-ku, Kyoto 602-8502, Japan
12: Tropical Peat Research Institute, Malaysian Palm Oil Board, No.6, Persiaran Institusi, Bandar Baru Bangi, 43000 Selangor, Malaysia
13: Research and Development Center for Global Change, Japan Agency for Marine-Earth Science and Technology, 3173-25 Showa-machi, Kanazawa-ku, Yokohama, Kanagawa 236-0001, Japan
14: Institute of Arctic Climate and Environment Research, Japan Agency for Marine-Earth Science and Technology, 3173-25 Showa-machi, Kanazawa-ku, Yokohama, Kanagawa 236-0001, Japan
15: Faculty of Agriculture and Marine Science, Kochi University, 200 Otsu, Monobe, Nankoku, Kochi 783-8502, Japan
16: Department of Evolutionary Biology and Environmental Studies, University of Zurich, Winterthurertrasse 190, 8057 Zurich, Switzerland
17: Forest Department Sarawak, Tingkat 14, Wisma Sumber Alam Jalan Stadium, Petra Jaya, 93050 Kuching, Sarawak, Malaysia
18: Nakagawa Experimental Forest, Field Science Center for Northern Biosphere, Hokkaido University, 483 Otoineppu, Otoineppu, Hokkaido 098-2502, Japan
19: Institute for Agro-Environmental Sciences, National Agriculture and Food Research Organization, 3-1-3 Kannondai, Tsukuba, Ibaraki 305-8604, Japan
20: Faculty of Life and Environmental Sciences, University of Tsukuba, 1-1-1 Tennodai, Tsukuba, Ibaraki 305-8572, Japan
21: Environmental Management Research Institute, National Institute of Advanced Industrial Science and Technology, 16-1 Onogawa, Tsukuba, Ibaraki 305-8569, Japan
22: Earth Observation Research Center, Japan Aerospace Exploration Agency, 2-1-1 Sengen, Tsukuba 305-8505, Japan
23: International Arctic Research Center, University of Alaska Fairbanks, 930 Koyukuk Dr., PO Box 757320, Fairbanks, AK 99775-7320, USA
24: Institute for Space-Earth Environmental Research, Nagoya University, Furo-cho Chikusa-ku, Nagoya 464-8601, Japan
25: PASCO Corporation, Research and Development Center, 2-8-11 Higashiyama, Meguro-ku, Tokyo 153-0043, Japan
26: Faculty of Agriculture, Tokyo University of Agriculture and Technology, 3-8-1 Harumi-cho, Fuchu, Tokyo 183-8538, Japan
27: Department of Agriculture, Tamagawa University, 6-1-1 Tamagawa-gakuen, Machida, Tokyo 194-8610, Japan
28: Division of Environmental Science and Ecological Engineering, Korea University, 145 Anamro, Seungbukgu, Seoul, Korea
29: Division of Environmental Strategy, Korea Environment Institute, 370 Sicheong-daero, Sejong, 30147, Republic of Korea
30: Institute for Biological Problems of Cryolithozone, Siberian Division of Russian Academy of Sciences, 41, Lenin Ave., Yakutsk, The Republic of Sakha (Yakutia), 678891, Russia
31: Arctic Research Center, Hokkaido University, N21W11, Kita-ku, Sapporo 001-0021, Japan
32: Graduate School of Environmental Science, Hokkaido University, N10W5, Sapporo, Hokkaido, 060-0810, Japan
33: Graduate School of Bioagricultural Sciences, Nagoya University, Furo-cho Chikusa-ku, Nagoya, 464-8601 Japan
34: River Basin Research Center, Gifu University, 1-1 Yanagido, Gifu 501-1193, Japan
35: Tomakomai Experimental Forest, Field Science Center for Northern Biosphere, Hokkaido University, Takaoka, Tomakomai, Hokkaido 053-0035, Japan
36: Teshio Experimental Forest, Field Science Center for Northern Biosphere, Hokkaido University, Toikanbetsu, Horonobe, Hokkaido 098-2943, Japan
37: Uryu Experimental Forest, Field Science Center for Northern Biosphere, Hokkaido University, Moshiri, Horokanai, Hokkaido 074-0741, Japan
38: Center for Environmental Remote Sensing, Chiba University, 1-33 Yayoi-cho, Inage-ku, Chiba 263-8522, Japan
4. PROJECTS
Projects associated with each site are listed in Table 2.
Table 2 Summary of projects that provided funding for the 29 PEN sites
Site ID |
Title |
Personal |
Funding |
AHS |
UK-Japan 2008 Collaborative Project Grant (Science and Innovation) |
John Grace, School of GeoSciences, The University of Edinburgh; K.N. Nasahara, Faculty of Life and Environmental Sciences, University of Tsukuba |
British Embassy Tokyo, British Council |
EGT |
GEWEX Asian Monsoon Experiment-Tropics (GAME-T) |
K.N. Nasahara, Faculty of Life and Environmental Sciences, University of Tsukuba |
The Ministry of Education, Culture, Sports, Science Technology of Japan (MEXT) |
FHK |
1: Environment Research and Technology Development Fund (S-1) (hereafter described S-1) 2: Global Change Observation Mission (GCOM) PI 116 |
1–2: K.N. Nasahara, Faculty of Life and Environmental Sciences, University of Tsukuba |
1: Ministry of the Environment of Japan 2: Japan Aerospace Exploration Agency (JAXA) |
FJY |
1: Global Change Observation Mission (GCOM) PI 116 |
1: K.N. Nasahara, Faculty of Life and Environmental Sciences, University of Tsukuba |
1: Japan Aerospace Exploration Agency (JAXA) |
GDK |
1: Long-term monitoring and ecological studies on forest ecosystem (FE0100–2004–02) 2: Assessing crop production and agricultural environment using remote sensing techniques (PJ00997802) |
1 & 2: S. Kang, Kangwon National University |
1: Korea Forest Service 2: Rural Development Agency |
HVT |
1: Environment Research and Technology Development Fund (S-9) (hereafter described S-9) 2: McIntire-Stennis Research Project 143M |
1: R. Suzuki, Japan Agency for Marine-Earth Science and Technology (JAMSTEC) 2: T. Miura, University of Hawaiʻi at Mānoa |
1: Ministry of the Environment of Japan 2: United States Department of Agriculture |
KBF |
UK-Japan 2008 Collaborative Project Grant (Science and Innovation) |
J. Grace, School of GeoSciences, The University of Edinburgh; K.N. Nasahara, Faculty of Life and Environmental Sciences, University of Tsukuba |
British Embassy Tokyo, British Council |
KEW |
Research collaboration |
Y. Kosugi, Kyoto University |
Coca-Cola Foundation |
LAM |
Grant-in-Aid for Scientific Research (KAKENHI) Grant Numbers JP 15H02645 |
Tomo’omi Kumagai, The University of Tokyo |
Japan Society for the Promotion of Science (JSPS) |
LBR |
1: S-9 2: KAKENHI Grant Numbers JP #24710021 3: KAKENHI Grant Numbers JP 15H02645 4: GCOM PI 117 |
1: R. Suzuki, JAMSTEC 2: S. Nagai, JAMSTEC 3: T. Kumagai, The University of Tokyo 4: R. Suzuki & S. Nagai, JAMSTEC |
1: Ministry of the Environment of Japan 2–3: JSPS 4: JAXA |
MMF |
GCOM PI#102 |
K.N. Nasahara, Faculty of Life and Environmental Sciences, University of Tsukuba |
JAXA |
MSE |
1: S-1 2: GCOM PI#102 3: GCOM PI 116 4: Global Environment Research Account for National Institutes (FY2007–2011) 5: Global Environment Research Account for National Institutes (FY2012–2016) 6: Development of Technology for Impacts, Mitigation and Adaptation of Climate Change (FY 2006–2009) 7: AIST-NIAES Joint Research Program |
1–3: K.N. Nasahara, Faculty of Life and Environmental Sciences, University of Tsukuba 4–6: Akira Miyata, National Agriculture and Food Research Organization (NARO) 7: T. Maeda, National Institute of Advanced Industrial Science and Technology (AIST) & K. Ono, National Institute for Agro-Environmental Sciences (NIAES) and NARO |
1, 4–5: Ministry of the Environment of Japan 2–3: JAXA 6: Ministry of Agriculture, Forestry and Fishery of Japan 7: AIST and NIAES |
MTK |
1: S-1 2: GCOM PI#102 3: GCOM PI 116 |
1–3: K.N. Nasahara, Faculty of Life and Environmental Sciences, University of Tsukuba |
1: Ministry of the Environment of Japan 2–3: JAXA |
PFA |
1: The JAMSTEC-IARC Collaboration Study (JICS) (hereafter described COE) 2: Arctic Challenge for Sustainability (ArCS) |
1: R. Suzuki, JAMSTEC & Y. Kim, International Arctic Research Center, University of Alaska Fairbanks 2: Makoto Koike, School of Science, The University of Tokyo |
1: JAMSTEC 2: MEXT |
RHN |
S-1 |
K.N. Nasahara, Faculty of Life and Environmental Sciences, University of Tsukuba |
Ministry of the Environment of Japan |
SGD |
1: S-1 2: KAKENHI Grant Numbers JP21580335 |
1–2: S. Sekikawa, Department of Agriculture, Tamagawa University |
1: Ministry of the Environment of Japan 2: JSPS |
SHA |
JSPS-NRF-NSFC A3 Foresight Program (hereafter described A3 Foresight Program) |
H. Muraoka, River Basin Research Center, Gifu University; Y. Son, Division of Environmental Science and Ecological Engineering, Korea University |
Japan Society for the Promotion of Science (JSPS), National Research Foundation of Korea (NRF) |
SSP |
1: Green Network of Excellence (GRENE) Program 2: COPERA (C budget of ecosystems and cities and villages on permafrost in eastern Russian Arctic) project |
1: A. Sugimoto, Arctic Research Center, Hokkaido University 2: A. Sugimoto, Arctic Research Center, Hokkaido University |
1: MEXT 2: The Belmont Forum |
TFS |
1: S-1 2: GCOM PI 116 |
1: K.N. Nasahara, Faculty of Life and Environmental Sciences, University of Tsukuba |
1: Ministry of the Environment of Japan 2: JAXA |
TGF |
1: S-1 2: GCOM PI#102 3: GCOM PI 116 |
1–3: K.N. Nasahara, Faculty of Life and Environmental Sciences, University of Tsukuba |
1: Ministry of the Environment of Japan 2–3: JAXA |
TKC |
1: 21st Century COE Program (Satellite Ecology, Gifu University) (hereafter described COE) 2: A3 Foresight Program 3: KAKENHI Grant Numbers JP 23710005 4: KAKENHI Grant Numbers JP26241005 5: Joint Research |
1, 2, 4: H. Muraoka, River Basin Research Center, Gifu University 3: T.M. Saitoh, River Basin Research Center, Gifu University 5: S. Nagai, JAMSTEC |
1–4: JSPS 5: River Basin Research Center, Gifu University |
TKY |
1: S-1 2: COE 3: A3 Foresight Program 4: Funding Program for Next Generation World-Leading Researchers (NEXT Program) 5: KAKENHI Grant Numbers JP26241005 6: KAKENHI Grant Numbers JP15H04512 7: GCOM PI#102 8: GCOM PI 116 9: Joint Research |
1, 7, 8: K.N. Nasahara, Faculty of Life and Environmental Sciences, University of Tsukuba 2–5: H. Muraoka, River Basin Research Center, Gifu University 6: T.M. Saitoh, River Basin Research Center, Gifu University 9: S. Nagai, JAMSTEC |
1: Ministry of the Environment of Japan 2–6: JSPS 7–8: JAXA 9: River Basin Research Center, Gifu University |
TOC |
1: Funding Program for Next Generation World-Leading Researchers (NEXT Program) 2: KAKENHI Grant Numbers JP26241005 |
1–2: H. Muraoka, River Basin Research Center, Gifu University |
JSPS |
TOE |
1: Ministry of Environment Grant Number 0708BD437 2: Ministry of Environment Grant Number D-0909 |
1–2: T. Hiura, Tomakomai Experimental Forest, Hokkaido University |
Ministry of the Environment |
TOS |
1: GCOM PI#102 2: GCOM PI 116 |
1–2: K.N. Nasahara, Faculty of Life and Environmental Sciences, University of Tsukuba |
1–2: JAXA |
TSE |
KAKENHI Grant Numbers JP25241002 |
T. Hirano, Research Faculty of Agriculture, Hokkaido University |
JSPS |
UAK |
JICS |
R. Suzuki, JAMSTEC & Y. Kim, International Arctic Research Center, University of Alaska Fairbanks |
JAMSTEC |
URY |
GCOM PI 116 |
K.N. Nasahara, Faculty of Life and Environmental Sciences, University of Tsukuba |
JAXA |
YGT |
CeRES Joint Research Program |
S. Nagai, JAMSTEC |
Centre for Environmental Remote Sensing, Chiba University |
5. GEOGRAPHIC COVERAGE
Geographic descriptions and positions
Geographic coordinates and descriptions of the 29 PEN sites are listed in Table 3 and Figure 1. The locations, direction of view, and type of camera system are listed in Table 4. The date of changes in view of phenological photographs is listed in Table 5. In addition to the 29 PEN sites, we have initiated another 5 sites in Japan (2 sites), China (1), France (1), and Egypt (1) (Nasahara and Nagai 2015, http://pen.agbi.tsukuba.ac.jp/), but their data are not publicly accessible yet.
Table 3 Summary of location, plant functional type, and dominant species at the 29 PEN sites
Site ID |
Fluxnet site ID |
Site name |
Country |
Latitude |
Longitude |
Elevation (a.s.l.) |
Vegetation type |
Dominant species |
References |
AHS |
None |
Alice Holt |
UK (England) |
51°9′17″N |
0°51′23″W |
88 m |
DBF |
Quercus robur (oak) |
Wilkinson et al. 2012, 2016 |
EGT |
TH-Mix |
Mixed Vegetation Site at EGAT tower |
Thailand |
16°56′23″N |
99°25′47″E |
105 m |
Mixed forest |
Tectona grandis (teak) |
Toda et al. 2002; URL 1 |
FHK |
JP-FHK |
Fuji-Hokuroku |
Japan |
35°26′37″N |
138°45′53″E |
1106 m |
DNF |
Larix kaempferi (larch) |
Akitsu et al. 2015; Takahashi et al. 2015; URL 1 |
FJY |
JP-Fuj |
Fuji-Yoshida |
Japan |
35°27′17″N |
138°45′44″E |
1030 m |
ENF |
Pinus densiflora (red pine) |
Mizoguchi et al. 2012; URL 1 |
GDK |
KR-Kw2 |
Gwangneung |
Korea |
37°44′56″N |
127°8′57″E |
252 m |
DBF |
Quercus serrata, Carpinus laxiflora (oak, loose-flowered hornbeam) |
Choi et al. 2011; URL 1 |
HVT |
None |
Hawaii Volcano Thurston |
USA (Hawaii) |
19°24′55″N |
155°14′55″W |
1219 m |
EBF |
Metrosideros polymorpha (ohia lehua) |
Giambelluca et al. 2009, Bergstrom 2013 |
KBF |
None |
Kranzberger Forst |
Germany |
48°25′10″N |
11°39′40″E |
490 m |
Mixed forest DBF/ENF |
Fagus sylvatica (European beech), Picea abies (Norway spruce) |
Leuchner et al. 2011 |
KEW |
JP-Kew |
Kiryu Experimental Watershed |
Japan |
34°57′49″N |
135°59′40″E |
250 m |
ENF |
Chamaecyparis obtusa (Japanese cypress) |
Nakaji et al. 2008; Kosugi et al. 2013; URL 1 |
LAM |
None |
Lambir Oil Palm Estate |
Malaysia (Sarawak) |
4°9′7″N |
113°57′58″E |
27 m |
Oil palm plantation |
Elaeis guineensis (oil palm) |
None |
LBR |
MY-Lam |
Lambir Hills |
Malaysia (Sarawak) |
4°11′44″N |
114°2′26″E |
150-200 m |
EBF |
Shorea beccariana, Dryobalanops aromatic (dipterocarp) |
Kishimoto-Yamada et al. 2010; URL 1 |
MMF |
JP-MMF |
Moshiri Mixed Forest |
Japan |
44°19′19″N |
142°15′42″E |
340 m |
Mixed forest |
Picea glehnii, abies Sachalinensis, Quercus crispula, Betula ermanii (pine, oak, birch) |
Nakai et al. 2008; URL 1 |
MSE |
JP-Mas |
Mase Flux site |
Japan |
36°3′14″N |
140°1′37″E |
14 m |
Paddy |
Oryza sativa (rice) |
|
MTK |
None |
Mt. Tsukuba |
Japan |
36°13′33″N |
140°5′55″E |
871 m |
Mixed forest |
Fagus crenata (beech) |
Mizunuma et al. 2011 |
PFA |
US-Prr |
Poker Flat Research Range |
USA (Alaska) |
65°07′24″N |
147°29′15″W |
210 m |
ENF |
Picea mariana (black spruce) |
Nakai et al. 2013; URL 2 |
RHN |
None |
RIHN |
Japan |
35°01′5″N |
135°46′7″E |
47 m |
No vegetation (building) |
None |
Yamashita and Yoshimura 2010 |
SGD |
None |
Sugadaira |
Japan |
36°31′25″N |
138°20′50″E |
1320 m |
Grassland |
Miscanthus sinensis (Japanese pampas grass), Pteridium aquilinum (bracken) |
None |
SHA |
None |
Seoul Heonilleung Alder Forest |
Korea |
37°27′53″N |
127°4′56″E |
49 m |
DBF |
Alnus japonica (Japanese alder) upland and wetland stands |
Yoon et al. 2015 |
SSP |
RU-SkP |
Spasskaya Pad |
Russia (Saha) |
62°15′17″N |
129°37′10″E |
214 m |
DNF |
Larix cajanderi (larch) |
Ohta et al. 2001, 2008; URL 1 |
TFS |
JP-Tom |
Tomakomai Flux Research Site |
Japan |
42°44′13″N |
141°31′7″E |
140 m |
DNF |
Larix kaempferi (larch) |
Hirata et al. 2007; URL 1 |
TGF |
None |
TERC Grass Field |
Japan |
36°6′49″N |
140°5′42″E |
29 m |
Grassland |
Solidago altissima, Miscanthus sinensis, Imperata cylindrica |
Akitsu et al. 2011 |
TKC |
JP-Ta2 |
Takayama Evergreen Coniferous Forest site |
Japan |
36°08′23″N |
137°22′15″E |
800 m |
ENF |
Cryptomeria japonica (Japanese cedar) |
Lee et al. 2008; URL 1 |
TKY |
JP-Tak |
Takayama |
Japan |
36°08′46″N |
137°25′23″E |
1420 m |
DBF |
Betula ermanii, Quercus crispula (birch, oak) |
Ohtsuka et al. 2005; URL 1 |
TOC |
None |
Tomakomai Crane site |
Japan |
42°42′35″N |
141°33′57″E |
80 m |
DBF |
Quercus crispula, Acer mono, Ostrya japonica (oak, maple) |
Hiura, 2005; Ishihara et al. 2011 |
TOE |
None |
Tomakomai Experimental Forest Flux site |
Japan |
42°41′56″N |
141°34′17″E |
80 m |
DBF |
Quercus crispula, Acer mono, Betula ermanii (oak, maple, birch) |
Hiura, 2005; Ishihara et al. 2011 |
TOS |
None |
Tomakomai Satellite monitoring/validation site |
Japan |
42°42′28″N |
141°33′17″E |
80 m |
DBF |
Quercus crispula, Acer mono, Fraxinus mandshurica (oak, maple) |
Hiura, 2005; Ishihara et al. 2011 |
TSE |
JP-TEF |
Teshio CC-LaG Exp Site |
Japan |
45°03′21″N (camera ID: ttp_d) 45°03′3″N (camera ID: k03_u) |
142°06′26″E (camera ID: ttp_d) 142°06′36″E (camera ID: k03_u) |
70 m (camera ID: ttp_d) 3 m (camera ID: k03_u) |
DNF (camera ID: ttp_d) Mixed forest (camera ID: k03_u)
|
Larix gmelinii × L. kaempferi (hybrid larch), Sasa senanensis, Sasa kurilensis (camera ID: ttp_d) Quercus crispula, Betula ermanii, Betula platyphylla var. japonica, Abies sachalinensis (oak, birch, pine) (camera ID: k03_u) |
Nakaji et al. 2008; Takagi et al. 2009; URL 1 (camera ID: ttp_d) Fukuzawa et al. 2013; Fukuzawa et al. 2015 (camera ID: k03_u) |
UAK |
None |
University of Alaska Fairbanks |
USA (Alaska) |
64°51′58″N |
147°51′21″W |
156 m |
ENF |
Picea mariana (black spruce) |
Ueyama et al. 2006; Kim et al. 2007 |
URY |
None |
Uryu Experimental Forest |
Japan |
44°21′54″N |
142°15′40″E |
803 m |
No vegetation (building) |
None |
None |
YGT |
None |
Yatsugatake |
Japan |
35°54′15″N |
138°19′55″E |
1240 m |
DNF |
Larix kaempferi (larch) |
Ono et al. 2015 |
DBF: deciduous broad-leaved forest; DNF: deciduous needle-leaved forest; EBF: evergreen broad-leaved forest; ENF: evergreen needle-leaved forest; URL 1: http://www.asiaflux.net/; URL 2: http://ameriflux.lbl.gov/. Camera IDs are explained in Table 4.
Figure 1 Maps of the Phenological Eyes Network sites (a) around the world and (b) in Japan. Site IDs are explained in Table 3. Click to download full size image(.tif).
Table 4 Summary of locations of the 84 time-lapse digital cameras at the 29 PEN sites
Site ID |
Camera ID |
Location (height; above the ground) |
Direction of view |
Target |
Lens |
Camera system |
Power supply |
Controller |
Remark |
AHS |
t24_d |
Top of tower (24 m) |
Downwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
|
f02_u |
Forest floor |
Upwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
||
EGT |
t60_s |
Middle of tower (60 m) |
Sideways (southwards) |
Landscape |
Semi fish-eye |
Minolta |
Battery |
- |
1 |
FHK |
f02dr |
Forest floor |
Downwards |
Forest floor |
Fish-eye lens |
ADFC |
Grid |
PC |
2 |
f02u0 |
Forest floor |
Upwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
||
f02u1 |
Forest floor |
Upwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
||
f02ur |
Forest floor |
Upwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
2 |
|
t32_d |
Top of tower (32 m) |
Downwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
||
t22_n |
Middle of tower (22 m) |
Sideways (northwards) |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
||
t32_u |
Top of tower (32 m) |
Upwards |
Sky |
Fish-eye lens |
ADFC |
Grid |
PC |
||
FJY |
t32_u |
Top of tower (32 m) |
Upwards |
Sky |
Fish-eye lens |
ADFC |
Grid |
PC |
|
h01_u |
Forest floor (1 m) |
Upwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
3 |
|
l01_u |
Forest floor (1 m) |
Upwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
3 |
|
n01_u |
Forest floor (1 m) |
Upwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
3 |
|
h28_d |
Top of tower (28 m) |
Downwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
4 |
|
l28_d |
Top of tower (28 m) |
Downwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
4 |
|
n28_d |
Top of tower (28 m) |
Downwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
4 |
|
GDK |
e21_d |
Top of tower (21 m) |
Downward |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
|
f02_u |
Forest floor |
Upwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
||
e18_s |
Middle of tower (18 m) |
Sideways (southwards) |
Forest canopy |
Standard lens |
ADFC |
Grid |
PC |
||
HVT |
y23_d |
Top of tower (23 m) |
Downward |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
|
KBF |
c40_d |
Near top of crane (40 m) |
Downwards |
Forest canopy |
Fish-eye lens |
ADFC |
Battery |
Remote controller |
|
KEW |
t20_s |
Top of tower (20 m) |
Sideways (southward) |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
|
t27_f |
Top of tower (27 m) |
Downwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
||
t27_w |
Top of tower (27 m) |
Downwards |
Forest canopy |
Standard lens |
TLC200 |
Battery |
- |
||
t27_n |
Top of tower (27 m) |
Downwards |
Forest canopy |
Standard lens |
TLC200 |
Battery |
- |
||
t27_d |
Top of tower (27 m) |
Downwards |
Forest canopy |
Standard lens |
Nikon D3300 |
Grid |
Remote controller |
||
LAM |
t12_n |
Middle of tower (12 m) |
Sideways (northwards) |
Landscape |
Standard lens |
Raspberry Pi |
Grid |
PC |
|
LBR |
c76_w |
Top of crane tower (76 m) |
Sideways (westwards) |
Forest canopy |
Fish-eye lens |
ADFC |
Solar |
Remote controller |
|
c76_e |
Top of crane tower (76 m) |
Sideways (eastwards) |
Forest canopy |
Fish-eye lens |
ADFC |
Solar |
Remote controller |
||
btp_n |
Balcony of building |
Sideways (northwards) |
Sky |
Standard lens |
ADFC |
Grid |
PC |
||
MMF |
t30sd |
Top of tower (30 m) |
Downwards |
Forest canopy |
Fish-eye lens |
ADFC |
Battery |
PC |
|
t30_d |
Top of tower (30 m) |
Downwards |
Forest canopy |
Standard lens |
TLC200 |
Battery |
- |
||
MSE |
y02rd |
Paddy floor (2 m) |
Downwards |
Paddy canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
5 |
y02ru |
Paddy floor (2 m) |
Upwards |
Sky |
Fish-eye lens |
ADFC |
Grid |
PC |
5 |
|
y02se |
Paddy floor (2 m) |
Sideways (southeastwards) |
Paddy canopy |
Standard lens |
AIST Pheno-mon |
Grid |
PC |
||
MTK |
btp_w |
Balcony of building |
Sideways (westwards) |
Forest canopy |
Standard lens |
ADFC |
Grid |
PC |
|
PFA |
y17_d |
Top of tower (17 m) |
Downwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
|
y02_d |
Forest floor (2 m) |
Downwards |
Understory vegetation |
Standard lens |
Raspberry Pi |
Grid |
PC |
||
f02_u |
Forest floor (2 m) |
Upwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
||
y02_s |
Forest floor (2 m) |
Sideways (southwards) |
Understory vegetation |
Standard lens |
Raspberry Pi |
Grid |
PC |
||
RHN |
btp_u |
Rooftop of building |
Upwards |
Sky |
Fish-eye lens |
ADFC |
Grid |
PC |
|
SGD |
g00_u |
Grassland floor (0 m) |
Upwards |
Canopy of grass |
Fish-eye lens |
ADFC |
Grid |
PC |
|
g02_d |
Grassland floor (2 or 3 m) |
Downwards |
Canopy of grass |
Fish-eye lens |
ADFC |
Grid |
PC |
6 |
|
g02_u |
Grassland floor (2 m) |
Upwards |
Sky |
Fish-eye lens |
ADFC |
Grid |
PC |
||
SHA |
f02ul |
Forest floor (2 m) |
Upwards |
Forest canopy |
Fish-eye lens |
ADFC |
Battery |
Remote controller |
|
f02um |
Forest floor (2 m) |
Upwards |
Forest canopy |
Fish-eye lens |
ADFC |
Battery |
Remote controller |
||
f02uh |
Forest floor (2 m) |
Upwards |
Forest canopy |
Fish-eye lens |
ADFC |
Battery |
Remote controller |
||
SSP |
y31_d |
Top of tower (31 m) |
Downwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
|
y03_d |
Bottom of tower (3 m) |
Downwards |
Canopy of shrub trees |
Fish-eye lens |
ADFC |
Grid |
PC |
||
f02_u |
Forest floor (2 m) |
Upwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
||
TFS |
t30_e |
Middle of tower (30 m) |
Sideways (eastwards) |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
|
t30_w |
Middle of tower (30 m) |
Sideways (westwards) |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
||
t40_u |
Top of tower (40 m) |
Upwards |
Sky |
Fish-eye lens |
ADFC |
Grid |
PC |
||
y02er |
Forest floor (2 m) |
Upwards and downwards |
Sky and understory vegetation |
Fish-eye lens |
ADFC |
Grid |
PC |
||
TGF |
btp_u |
Rooftop of building |
Upwards |
Sky |
Fish-eye lens |
ADFC |
Grid |
PC |
|
t12_n |
Middle of tower (12 m) |
Sideways (northwards) |
Landscape |
Fish-eye lens |
ADFC |
Grid |
PC |
||
t12_s |
Middle of tower (12 m) |
Sideways (southwards) |
Landscape |
Fish-eye lens |
ADFC |
Grid |
PC |
||
y03_d |
Top of tower (3 m) |
Downwards |
Canopy of grass |
Fish-eye lens |
ADFC |
Grid |
PC |
||
m06_s |
Middle of mast (6 m) |
Sideways (southwards) |
Landscape |
Standard lens |
AIST Pheno-mon |
Grid |
PC |
||
TKC |
y30_u |
Top of tower (30 m) |
Upwards |
Sky |
Fish-eye lens |
ADFC |
Grid |
PC |
|
y24_d |
Top of tower (24 m) |
Downwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
||
y19cb |
Middle of tower (19 m) |
Sideways |
Shoot of C. japonica |
Standard lens |
ADFC |
Grid |
PC |
||
f02_u |
Forest floor (2 m) |
Upwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
||
TKY |
btp_n |
Rooftop of building |
Sideways (northwards) |
Landscape |
Standard lens |
ADFC |
Grid |
PC |
|
f02_d |
Forest floor (2 m) |
Downwards |
Forest floor |
Fish-eye lens |
ADFC |
Grid |
PC |
||
f02_u |
Forest floor (2 m) |
Upwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
||
L12_u |
Forest floor (2 m) |
Upwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
||
miz_u |
Forest floor (2 m) |
Upwards |
Canopy of Q. crispula |
Fish-eye lens |
ADFC |
Grid |
PC |
||
y02_d |
Forest floor (2 m) |
Downwards |
Forest floor |
Fish-eye lens |
ADFC |
Grid |
PC |
7 |
|
y02_u |
Forest floor (2 m) |
Upwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
7 |
|
y08sd |
Middle of tower (8 m) |
Downwards (southwards) |
Canopy of shrub trees |
Standard lens |
ADFC |
Grid |
PC |
||
y12qb |
Middle of tower (12 m) |
Sideways |
Shoot of Q. crispula |
Standard lens |
ADFC |
Grid |
PC |
||
y13wd |
Middle of tower (13 m) |
Downwards (westwards) |
Canopy of shrub trees |
Standard lens |
ADFC |
Grid |
PC |
||
y14nq |
Middle of tower (14 m) |
Sideways |
Shoot of Q. crispula |
Standard lens |
ADFC |
Grid |
PC |
||
y18_d |
Top of tower (18 m) |
Downwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
||
y18_e |
Top of tower (18 m) |
Sideways (eastwards) |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
||
y18_u |
Top of tower (18 m) |
Upwards |
Sky |
Fish-eye lens |
ADFC |
Grid |
PC |
||
y18_w |
Top of tower (18 m) |
Sideways (westwards) |
Landscape |
Standard lens |
ADFC |
Grid |
PC |
||
y18bb |
Top of tower (18 m) |
Sideways |
Shoot of B. ermanii |
Standard lens |
ADFC |
Grid |
PC |
||
y20bq |
Top of tower (20 m) |
Sideways |
Canopy of B. ermanii and B. platyphylla |
Standard lens |
Raspberry Pi |
Grid |
PC |
||
y20mo |
Top of tower (20 m) |
Sideways |
Shoot of Magnolia obovata |
Standard lens |
Raspberry Pi |
Grid |
PC |
||
TOC |
c29_d |
Top of crane boom (29 m) |
Downwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
|
TOE |
t21_w |
Top of tower (21 m) |
Sideways (westwards) |
Forest canopy |
Standard lens |
Canon EOS |
Grid |
Remote controller |
|
TOS |
t21_s |
Top of tower (21 m) |
Sideways (southwards) |
Forest canopy |
Standard lens |
Canon EOS |
Solar |
Remote controller |
|
TSE |
ttp_d |
Top of tower (30 m) |
Downwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
|
k03_u |
Forest floor (3 m) |
Upwards |
Forest canopy |
Fish-eye lens |
ADFC |
Battery |
PC |
||
UAK |
f01_u |
Forest floor (1 m) |
Upwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
|
URY |
btp_u |
Rooftop of building |
Upwards |
Sky |
Fish-eye lens |
ADFC |
Grid |
PC |
|
YGT |
y25_d |
Top of tower (25 m) |
Downwards |
Forest canopy |
Fish-eye lens |
ADFC |
Grid |
PC |
ADFC = automatic digital fish-eye camera.
1: Film camera (not digital). 2: “f02dr” and “f02ur” refer to the same time-lapse digital camera. Camera was rotated upwards and downwards every 60 min. 3: “h01_u”, “l01_u”, and “n01_u” refer to the same time-lapse digital camera used to take images at different exposures. 4: “h28_d”, “l28_d”, and “n28_d” refer to the same time-lapse digital camera used to take images at different exposures. 5: “y02rd” and “y02ru” were the same time-lapse digital camera until DOY 81, 2013. Camera was rotated upwards and downwards every 10 min. After this date, two ADFCs have been running. 6: Height of location was changed from 2 m to 3 m in 2006. 7: “y02_d” and “y02_u” refer to the same time-lapse digital camera. Camera was rotated upwards and downwards every 10 min. Details of camera system are described in “METHODS”.
Table 5 Summary of date of changes in view of phenological photographs of the 73 time-lapse digital cameras at the 27 PEN sites
Site ID |
Camera ID |
Date (DOY, year) |
AHS |
t24_d |
31, 2011 |
f02_u |
313, 2015 |
|
EGT |
t60_s |
None |
FHK |
f02dr |
None |
f02u0 |
None |
|
f02u1 |
None |
|
f02ur |
None |
|
t32_d |
None |
|
t22_n |
None |
|
FJY |
h01_u |
102, 2011 |
l01_u |
102, 2011 |
|
n01_u |
102, 2011 |
|
h28_d |
102, 2011 |
|
l28_d |
102, 2011 |
|
n28_d |
102, 2011 |
|
GDK |
e21_d |
79, 2009 |
f02_u |
None |
|
e18_s |
77, 2010 |
|
HVT |
y23_d |
None |
KBF |
c40_d |
None |
KEW |
t20_s |
237, 2006; 348, 2006; 25, 2007 |
t27_f |
None |
|
t27_w |
None |
|
t27_n |
None |
|
t27_d |
None |
|
LAM |
t12_n |
240, 2017 |
LBR |
c76_w |
None |
c76_e |
None |
|
MMF |
t30sd |
None |
t30_d |
164, 2013 |
|
MSE |
y02rd |
206, 2012; 81, 2013 |
y02se |
None |
|
MTK |
btp_w |
None |
PFA |
y17_d |
None |
y02_d |
None |
|
f02_u |
132, 2011; 138, 2011 |
|
y02_s |
None |
|
SGD |
g00_u |
None |
g02_d |
146, 2006 |
|
SHA |
f02ul |
126, 2009; 139, 2009 |
f02um |
109, 2010 |
|
f02uh |
None |
|
SSP |
y32_d |
None |
y03_d |
None |
|
f02_u |
196, 2017 |
|
TFS |
t30_e |
None |
t30_w |
None |
|
y02er |
None |
|
TGF |
t12_n |
None |
t12_s |
116, 2011 |
|
y03_d |
None |
|
m06_s |
None |
|
TKC |
y24_d |
238, 2013 |
y19cb |
None |
|
f02_u |
None |
|
TKY |
btp_n |
200, 2005 |
f02_d |
277, 2004; 342, 2004 |
|
f02_u |
246, 2003; 277, 2004; 119, 2005; 330, 2005*; 119, 2006; 246, 2014 |
|
L12_u |
342, 2004*; 124, 2005; 330*, 2005; 119, 2006; 231, 2006; 54, 2011; 87, 2011 |
|
miz_u |
119, 2005; 330, 2005*; 119, 2006 |
|
y02_d |
None |
|
y02_u |
None |
|
y08sd |
None |
|
y12qb |
281, 2014 |
|
y13wd |
253, 2016; 261, 2017; 286, 2017; 300, 2017 |
|
y14nq |
None |
|
y18_d |
85, 2013 |
|
y18_e |
None |
|
y18_w |
None |
|
y18bb |
None |
|
y20bq |
None |
|
y20mo |
None |
|
TOC |
c29_d |
105, 2012; 214, 2012; 160, 2016 |
TOE |
t21_w |
214, 2012 |
TOS |
t21_s |
282, 2015; 287, 2015 |
TSE |
ttp_d |
None |
k03_u |
None |
|
UAK |
f01_u |
None |
YGT |
y25_d |
None |
*: The camera system was pointed downwards in winter.
6. TEMPORAL COVERAGE
The temporal coverage of the images is listed in Table 6. The longest running site is TGF, with continuous phenological image archives dating back to 2003.
Table 6 Summary of observation period, frequency, missing periods >10 days, and major errors of the 84 time-lapse digital cameras at the 29 PEN sites
Site ID |
Camera ID |
Start date (DOY, year) |
End date (DOY, year) |
Typical frequency (period; local time) |
Missing period (Year: DOY) |
Total numbers of images until the last collection day (DOY, year) |
Remarks |
AHS |
t24_d |
55, 2009 |
Working |
30 min (05:00–21:00) |
2014: 9–58, 93–103, 151–162; 2015: 30–41, 78–88, 108–127; 2016: 175–188, 334–350 |
87479 (125, 2017) |
|
f02_u |
96, 2010 |
Working |
30 min (04:20–21:50) |
2014: 151–162; 317–365; 2015: 1–56, 78–88, 108–127; 2016:334–350 |
79254 (125, 2017) |
||
EGT |
t60_s |
132, 1999 |
320, 2000 |
Approximately noon |
None |
554 (320, 2000) |
|
FHK |
f02dr |
119, 2006 |
Working |
60 min (06:00–18:00) |
2008: 86–217; 2010: 268–310; 2011: 69–111, 312–336; 2012: 172–185, 246–259; 2017: 246–265; 2013: 86–123; 2014: 316–329; 2015: 321–365; 2016: 1–39, 71–197, 203–311 |
42799 (313, 2017) |
1 |
f02u0 |
342, 2005 |
Working |
60 min (06:00–18:00) |
2007: 72–119, 136–147, 152–165; 2010: 178–185; 2011: 69–94; 2012: 172–185, 318–326 |
51392 (313, 2017) |
||
f02u1 |
342, 2005 |
Working |
60 min (06:00–18:00) |
2007: 1–17, 136–147, 2011: 69–114, 352–361; 2013: 352–365; 2014: 1–15 |
51435 (313, 2017) |
||
f02ur |
119, 2006 |
Working |
60 min (06:00–18:00) |
2008; 1–28, 86–218; 2010: 34–68, 268–310; 2011: 69–227; 2012: 172–185, 246–265, 359–366; 2013: 1–63, 75–123; 2014: 315–329; 2015: 321–365; 2016: 1–39, 71–197, 199–311 |
42704 (313, 2017) |
1 |
|
t32_d |
117, 2006 |
Working |
60 min (06:00–18:00) |
2011: 69–101, 307–336; 2012: 172–199; 2016: 327–336 |
50106 (313, 2017) |
||
t22_n |
45, 2006 |
Working |
60 min (06:00–18:00) |
2011: 69–94, 312–336; 2012: 172–185; 2013: 138–260 |
50617 (313, 2017) |
||
t32_u |
117, 2006 |
Working |
10 min (06:00–18:00) |
2006: 281–365; 2010: 148–161; 2011: 71–111, 299–335; 2012: 110–133; 2013: 58–105 |
275189 (313, 2017) |
||
FJY |
t32_u |
46, 2012 |
Working |
30 min (00:02–22:30) |
2012: 287–298; 2013: 130–365; 2014: 1–7; 2016: 176–210 |
55346 (98, 2017) |
|
h01_u |
216, 2009 |
Working |
30 min (04:00–20:30) |
2009: 252–273; 2010: 166–180; 2011: 33–81, 83–101; 2012: 172–205, 287–298; 2013: 130–365; 2014: 1–7; 2015: 292–350; 2016: 116–174 |
77566 (98, 2017) |
||
l01_u |
216, 2009 |
Working |
30 min (04:00–20:30) |
2009: 259–273; 2010: 166–180; 2011: 30–81, 83–101; 2012: 172–205, 287–298; 2013: 130–365; 2014: 1–7; 2015: 292–350; 2016: 116–174 |
77021 (98, 2017) |
||
n01_u |
216, 2009 |
Working |
30 min (04:01–20:31) |
2009: 252–273; 2010: 166–180; 2011: 30–81, 83–101; 2012: 172–205, 287–298; 2013: 130–365; 2014: 1–7; 2015: 292–350; 2016: 118–174 |
77662 (98, 2017) |
||
h28_d |
216, 2009 |
Working |
30 min (00:01–23:31) |
2009: 252–273; 2010: 166–180; 2011: 30–81, 215–241; 2012: 287–298, 306–318, 334–352, 355–366; 2013: 1–24, 130–365; 2014: 1–7; 2016: 176–209 |
79439 (98, 2017) |
||
l28_d |
216, 2009 |
Working |
30 min (00:00–22:30) |
2009: 252–273; 2010: 166–180; 2011: 30–81, 215–241; 2012: 287–298, 306–318, 334–352, 355–366; 2013: 1–24, 130–365; 2014: 1–7; 2016: 176–209 |
79585 (98, 2017) |
||
n28_d |
216, 2009 |
Working |
30 min (04:00–20:30) |
2009: 259–273; 2010: 166–180; 2011: 30–81, 215–241; 2012: 287–298, 306–318, 333–352, 355–366; 2013: 1–24, 130–365; 2014: 1–7; 2016: 176–209 |
79459 (98, 2017) |
||
GDK |
e21_d |
65, 2009 |
Working |
60 min (06:00–20:00) |
2009: 199–210, 224–239; 2010: 21–62, 64–76 |
5228 (183, 2010) |
2 |
f02_u |
79, 2009 |
Working |
60 min (06:00–20:00) |
2009: 199–210, 224–239; 2010: 21–62, 64–76 |
5194 (183, 2010) |
2 |
|
e18_s |
65, 2009 |
Working |
60 min (06:00–20:00) |
2009: 199–210, 224–239; 2010: 21–62, 64–76 |
5231 (183, 2010) |
2 |
|
HVT |
y23_d |
54, 2012 |
207, 2013 |
60 min (06:00–18:00) |
2012: 55–95, 144–157, 166–192, 203–211, 338–366; 2013: 1–14, 42–58, 105–157 |
3906 (207, 2013) |
|
KBF |
c40_d |
61, 2011 |
165, 2012 |
24 h |
2011: 174–188, 251–263, 354–365; 2012: 1–11, 31–80, 131–144, 146–157 |
310 (165, 2012) |
|
KEW |
t20_s |
218, 2004
|
350, 2008 |
3 h (09:00–15:00) |
2004: 238–252, 259–270; 2005: 182–196; 2006: 104–120, 198–236; 2007: 139–151, 232–245, 316–325; 2008: 106–196 |
3918 (350, 2008) |
|
t27_f |
357, 2008 |
282, 2014 |
3 h (09:00–15:00) |
2009: 283–304 |
6124 (282, 2014) |
||
t27_w |
324, 2014 |
139, 2016 |
1 h
|
2015: 8–132, 225–334 |
5199 (139, 2016) |
||
t27_n |
353, 2014 |
139, 2016 |
1 h
|
2015: 8–132, 174–334 |
4027 (139, 2016) |
||
t27_d |
56, 2016 |
Working |
3 h or 1 h |
2016: 166–248; 2017: 20–72, 74–114, 143–194 |
2705 (203, 2017) |
||
LAM |
t12_n |
26, 2017 |
Working |
60 min (06:00–18:00) |
2017: 53–156, 168–239 |
946 (277, 2017) |
|
LBR |
c76_w |
67; 2009 |
Working |
24 h (approximately noon) |
2009: 171–215, 252–365; 2010: 1–58, 73–365; 2011: 1–60, 130–265, 352–365; 2012: 1–49; 2013: 337–365; 2014: 1–4; 2016: 122–185; 2017: 113–164 |
2124 (168, 2017) |
|
c76_e |
59; 2010 |
Working |
24 h (approximately noon) |
2010: 145–365; 2011: 1–63, 82–265; 2012: 34–49, 143–233; 2013: 337–365; 2014: 1–4, 275–321 |
1807 (167, 2017) |
3 |
|
btp_n |
313; 2012 |
Working |
15 min (06:00–18:45) |
2013: 254–317; 2014: 36–69, 137–148, 231–258, 276–319; 2015: 164–182, 184–204, 210–237; 2016: 109–185, 187–232, 271–346 358–366; 2017: 1–51, 89–118, 138–166 |
53258 (185, 2017) |
||
MMF |
t30sd |
138, 2010 |
282, 2013 |
3 h
|
2010: 143–166, 255–365; 2011: 50–130, 147–205; 2012: 41–131, 149–270, 283–366; 2013: 1–129, 169–224, 268–281 |
3549 (282, 2013) |
|
t30_d |
130, 2013 |
178, 2013 |
3 h |
None |
388 (178, 2013) |
||
MSE |
y02rd |
55, 2005 |
Working |
30 min (05:59–19:59) |
2005: 176–191, 3423–64; 2006: 24–47, 67–93, 95–107, 306–331; 2007: 286–296; 2008: 94–113, 276–366; 2009: 1–42, 103–117, 227–281; 2011: 65–83, 356–365; 2012: 1–10, 112–122, 155–163, 168–179, 231–253, 292–359; 2013: 159–171; 2014: 45–68, 164–190; 2015: 44–105; 2016: 46–62 |
93673 (310, 2017) |
1 |
y02ru |
58, 2005 |
Working |
5 min (06:00–19:55) |
2005: 176–191, 342–364; 2006: 24–47, 66–93, 95–107, 306–331; 2007: 286–296, 2008: 94–113, 276–336, 338–366; 2009: 1–42, 103–117, 227–259, 261–281; 2011: 65–83, 343–353, 356–365; 2012: 1–10, 60–72, 233–253, 310–339, 341–359; 2013: 89–111, 139–156, 159–170; 2014: 45–68, 164–176, 178–190; 2015: 44–105; 2016: 1–12 |
493875 (310, 2017) |
1 |
|
y02se |
119, 2010 |
Working |
30 min (04:00–20:30) |
2010: 147–199, 278–297; 2011: 16–25, 47–67, 72–103, 159–171, 203–217; 2012: 361–366; 2013: 1–7, 11–59, 219–232 |
83075 (310, 2017) |
||
MTK |
btp_w |
302, 2007 |
Working |
15–180 min (08:00–18:45) |
2008: 64–95, 210–219, 362–366; 2009: 1–37, 43–69, 220–247, 307–324; 2010: 34–67, 70–89, 267–277; 2011: 71–84, 90–102; 2012: 239–257, 2015: 1–22, 56–81; 2017: 120–135, 209–221 |
71876 (310, 2017) |
|
PFA |
y17_d |
78, 2011 |
Working |
30–180 min (06:00–18:30) |
2011: 308–352; 2013: 200–230, 278–365; 2014: 1–2, 249–267; 2015: 179–228, 273–365; 2016: 1–41, 234–252, 324–353, 363–366; 2017: 1–82, 162–179, 181–193, 205–214, 284–319 |
27854 (320, 2017) |
4 |
y02_d |
230, 2015 |
Working |
30 min (06:00–18:30), 24 h in 2015 |
2015: 334–365; 2016: 1–53, 291–366; 2017: 1–82 |
9315 (320, 2017) |
4 |
|
f02_u |
78, 2011 |
Working |
15 min (06:00–18:45) |
2011: 152–166, 308–352; 2013: 200–224, 278–365; 2014: 1–2, 249–267; 2015: 179–228, 273–365; 2016: 1–53, 234–267, 324–353, 363–366; 2017: 1–82, 205–214 |
91113 (283, 2017) |
4 |
|
y02_s |
230, 2015 |
Working |
30 min (06:00–18:30) |
2015: 333–365; 2016: 1–53, 320–366; 2017: 1–320 |
6989 (320, 2017) |
4 |
|
RHN |
btp_u |
52, 2005 |
11, 2006 |
2 min (05:00–19:58) |
None |
113008 (11, 2006) |
|
SGD |
g00_u |
142, 2005 |
285, 2014 |
3 h (05:00–17:00) |
2005: 292–365; 2006: 1–145, 341–365; 2007: 1–119, 170–181, 316–365; 2008: 1–144, 293–365; 2009: 1–177, 179–190, 292–365; 2010: 1–127, 137–168, 314–365; 2011: 1–112, 290–365; 2012: 1–136, 289–365; 2013: 1–109, 286–365; 2014: 1–135 |
40608 (285, 2014) |
5 |
g02_d |
142, 2005 |
278, 2017 |
3 h (05:00–17:00) |
2005: 292–365; 2006: 1–145, 341–365; 2007: 1–119, 170–181, 316–347, 349–365; 2008: 31–108, 322–347; 2009: 126–177, 179–190; 2010: 137–168, 314–365; 2011: 1–114; 2013: 338–365; 2014: 1–135; 2016: 308–366; 2017: 1–144 |
17846 (278, 2017) |
||
g02_u |
120, 2007 |
307, 2016 |
3 h (05:00–17:00) |
2007: 123–132, 169–184, 316–347, 349–365; 2008: 16–108, 322–347; 2009: 126–177, 179–191; 2010: 137–168, 314–365; 2011: 1–114, 290–343; 2013: 1–109, 338–365; 2014: 1–135 |
15156 (307, 2016) |
||
SHA |
f02ul |
79, 2009 |
264, 2009 |
6 h |
2009; 93–108; 112–125; 127–138, 149–258 |
90 (264, 2009) |
|
f02um |
65, 2009 |
60, 2011 |
6 h |
2009; 80–91, 155–258, 263–295, 301–365; 2010; 1–107, 136–212, 232–295, 309–365; 2011; 1–46 |
625 (60, 2011) |
||
f02uh |
70, 2009 |
300, 2009 |
6 h |
2009; 155–258, 266–295 |
262 (300, 2009) |
||
SSP |
y32_d |
161, 2013 |
175, 2017 |
60 min (02:00–23:00) |
2013: 263–274; 2014: 6–100, 300–365; 2015: 357–365; 2016: 1–105, 222–242; 2017: 5–32, 42–63, 89–99, 144–160 |
19177 (175, 2017) |
|
y03_d |
160, 2013 |
173, 2017 |
60 min (02:00–23:00) |
2013: 176–217, 319–365; 2014: 1–100, 106–118, 127–192, 235–290, 300–365; 2015: 1–178, 195–236, 260–365; 2016: 1–105, 168–183, 204–215, 222–242, 324–366; 2017: 1–32, 42–63, 89–99, 114–141, 144–160 |
9222 (173, 2017) |
||
f02_u |
218, 2013 |
Working |
60 min (02:00–23:00) |
2013: 275–365; 2014: 1–118, 127–206; 235–290; 300–365; 2015: 1–119, 195–236; 260–365; 2016: 1–150, 168–183, 204–215, 222–242, 258–273, 324–342; 2017: 5–32, 42–63, 89–99, 114–124, 144–160 |
9845 (253, 2017) |
||
TFS |
t30_e |
212, 2004 |
252, 2004 |
30 min (04:00–20:00) |
None |
1346 (252, 2004) |
|
t30_w |
212, 2004 |
252, 2004 |
30 min (04:00–20:00) |
None |
1346 (252, 2004) |
||
t40_u |
212, 2004 |
252, 2004 |
2 min (04:00–20:00) |
None |
19188 (252, 2004) |
||
y02er |
212, 2004 |
252, 2004 |
15 min (04:00–20:00) |
None |
2645 (252, 2004) |
||
TGF |
btp_u |
133, 2003 |
Working |
2 min (04:00–20:00) |
2003: 155–176, 197–215; 2007: 233–246; 2009: 42–60; 2016: 244–255 |
1996046 (314, 2017) |
|
t12_n |
237, 2003 |
Working |
30 min (04:00–19:30) |
2010: 81–103, 257–269; 2012: 98–108; 2013: 239–253; 2015: 317–354 |
76897 (313, 2017) |
||
t12_s |
266, 2003 |
Working |
30 min (04:00–19:30) |
2010: 81–103, 257–269; 2011: 71–83; 2012: 98–108; 2013: 227–237, 239–253 |
75692 (313, 2017) |
||
y03_d |
241, 2003 |
Working |
30 min (04:00–19:30) |
2012: 221–302; 2017: 40–88, 296–310 |
82765 (312, 2017) |
||
m06_s |
278, 2012 |
105, 2015 |
30 min (10:00–13:30) |
2013: 27–365; 2014: 1–211, 360–365; 2015: 1–54 |
2068 (105, 2015) |
||
TKC |
y30_u |
170, 2007 |
211, 2012 |
2 min (04:30–19:28) |
2008: 341–354; 2010: 32–84, 183–208; 2011: 49–101; 2012: 21–88, 150–197 |
584686 (211, 2012) |
|
y24_d |
122, 2007 |
Working |
90 min (04:30–18:00) |
2009: 289–301; 2010: 69–84, 183–208; 2012: 199–212, 356–366; 2013: 1–79; 2014: 352–365; 2015: 1–28 |
28612 (260, 2017) |
6, 7 |
|
y19cb |
304, 2009 |
355, 2012 |
90 min (07:30–15:00) |
2010: 69–84, 183–208 |
6459 (355, 2012) |
||
f02_u |
170, 2007 |
213, 2012 |
90 min (04:30–18:00) |
2009: 287–301; 2010: 69–84, 183–208; 2011: 49–101; 2012: 21–88 |
40287 (213, 2012) |
8 |
|
TKY |
btp_n |
100, 2005 |
Working |
90–180 min (06:03–18:03) |
2009: 358–365; 2010: 1–40; 2012: 222–232; 2014: 352–365; 2015: 1–64 |
29173 (305, 2017) |
|
f02_d |
245, 2003 |
Working |
90 min (07:00–17:00) |
2013: 248–272, 283–294; 2014: 15–28, 297–306 |
29492 (304, 2017) |
9 |
|
f02_u |
218, 2003 |
Working |
30 min (06:00–18:30) |
2003: 234–245, 358–365; 2004: 1–88, 343–366; 2005: 1–118, 198–211; 2010: 207–238; 2013: 203–227, 346–365; 2014: 1–28, 71–86, 94–103, 297–306 |
182695 (304, 2017) |
9 |
|
L12_u |
131, 2004 |
Working |
30 min (08:02–16:32) |
2012: 175–185, 198–212, 311–341; 2014: 204–245; 2015: 63–365; 2016: 1–118 |
130248 (304, 2017) |
10, 11 |
|
miz_u |
131, 2004 |
198, 2012 |
30 min–24 h (04:00–19:35) |
2004: 343–366; 2005: 1–118, 198–211; 2008: 61–117, 224–238; 2009: 19–117; 2010: 183–195; 2012: 149–197 |
54272 (198, 2012) |
9 |
|
y02_d |
102, 2004 |
Working |
30 min (07:37–16:37) |
2007: 197–207, 364–365; 2008: 1–23, 202–214, 224–247; 2009: 318–331; 2013: 171–181; 2014: 223–245, 352–365; 2015: 1–6 |
60915 (304, 2017) |
1, 8, 12 |
|
y02_u |
102, 2004 |
Working |
30 min (07:00–17:30) |
2005: 99–118; 2007: 363–365; 2008: 1–23, 202–214, 224–243; 2009: 318–331; 2013: 171–181; 2014: 223–245, 352–365; 2015: 1–6 |
108613 (304, 2017) |
1, 8, 13 |
|
y08sd |
253, 2016 |
Working |
60 min (06:16–18:16) |
2017: 143–152 |
5280 (304, 2017) |
||
y12qb |
131, 2005 |
Working |
30 min (08:01–16:31) |
2012: 311–340, 342–366; 2013: 1–84; 2014: 223–245, 352–365; 2015: 1–365; 2016: 1–251, 257–272 |
37389 (304, 2017) |
||
y13wd |
290, 2014 |
Working |
30 min (06:00–18:31) |
2014: 352–365; 2015: 1–7, 16–365; 2016: 1–252 |
9287 (304, 2017) |
||
y14nq |
117, 2015 |
Working |
60 min (06:00–18:00) |
2015: 220–269 |
11223 (304, 2017) |
||
y18_d |
246, 2003 |
Working |
15–90 min (04:00–20:00) |
2003:253–272, 286–295; 2013: 70–84; 2017: 143–152 |
82267 (304, 2017) |
||
y18_e |
246, 2003 |
85, 2013 |
30 min (07:30–16:31) |
2003: 250–272, 280–294; 2004: 40–59, 61–87; 2009: 215–224 |
49662 (85, 2013) |
||
y18_u |
298, 2003 |
Working |
2 min (03:00–20:58) |
2003: 300–309, 311–365; 2004: 1–87; 2005: 119–129; 2008: 343–352; 2011: 71–87, 293–302; 2014: 352–365; 2015: 1–6 |
1674178 (304, 2017) |
||
y18_w |
238, 2013 |
351, 2014 |
30 min (06:00–18:30) |
2014: 223–245, 291–303 |
11236 (351, 2014) |
||
y18bb |
133, 2005 |
Working |
30 min (06:00–17:30) |
2005: 174–189; 2010: 96–122, 125–135; 2011: 71–87, 266–275, 293–302; 2012: 311–340; 2014: 352–365; 2015: 1–6 |
89835 (304, 2017) |
||
y20bq |
116, 2016 |
Working |
60 min (06:00–18:00) |
None |
5286 (156, 2017) |
||
y20mo |
116, 2016 |
Working |
60 min (06:00–18:00) |
None |
5291 (156, 2017) |
||
TOC |
c29_d |
135, 2010 |
Working |
24h (around noon) |
2010: 215–260, 316–365; 2011: 1–67, 232–262, 346–365; 2012: 1–104, 349–366; 2013: 1–69, 344–365; 2014: 1–77, 198–255, 337–365; 2015: 1–85, 184–259, 281–310, 337–365; 2016: 1–97, 162–176, 178–189 |
1397 (325, 2016) |
|
TOE |
t21_w |
135, 2010 |
Working |
24 h (11:40) |
2010: 186–231; 2011: 267–296, 342–365; 2012: 1–95; 2014: 152–181; 2015: 51–62, 269–278; 2016: 323–349 |
2298 (181, 2017) |
|
TOS |
t21_s |
97, 2015 |
Working |
24 h (11:40) |
2015: 266–277 |
800 (181, 2017) |
|
TSE |
ttp_d |
178, 2006 |
Working |
24 h (12:00) |
2007: 1–127, 341–365; 2008: 1–132, 337–366; 2010: 330–365; 2011: 1–131; 2012: 168–177; 2014: 40–62; 2015: 146–158 |
3355 (49, 2017) |
14, 15 |
k03_u |
139, 2010 |
288, 2015 |
3 h |
2010: 208–244, 270–285, 289–365; 2011: 1–138, 185–230, 240–276, 301–365; 2012: 1–365; 2013: 1–132, 148–178, 216–267, 303–365; 2014: 1–258, 260–365; 2015: 1–130, 132–202, 205–286 |
1924 (288, 2015) |
||
UAK |
f01_u |
189, 2010 |
297, 2013 |
15 min (06:00–21:45) |
2010: 306–365; 2011: 1–76; 305–365; 2012: 1–67, 267–366; 2013: 1–80, 208–217, 228–245 |
45535 (297, 2013) |
4, 16 |
URY |
btp_u |
258, 2017 |
Working |
5 min (04:00–19:55) |
None |
10498 (313, 2017) |
|
YGT |
y25_d |
144, 2011 |
Working |
15–60 min (06:00–20:00) |
2012: 66–84; 118–288; 2013: 167–346; 2014: 157–220, 223–345; 2015: 28–78, 98–114, 139–155, 164–211; 226–316; 2016: 30–83, 131–155, 160–208, 319–346; 2017: 93–113, 117–173 |
26555 (174, 2017) |
1: Including images in wrong directions (opposite and oblique). 2: Site manager permitted to use data until DOY 183 in 2010. 3: We evaluated the time stamp of images because the digital camera clock was reset owing to flat battery of hardware clock (2015: DOY 263–365; 2016: 1–185). 4: The time stamp of images included time lags of 1 hour because of daylight saving time setting. 5: Five images were taken at different exposures each time since DOY 120, 2007. 6: Images were out of focus (2014: DOY 102–150, 315–351; 2015: 109–148; 2016: 61–172, 328–366; 2017: 1–107). 7: Images were black owing to sensor errors (2011: DOY 355, 358–365; 2012: 1–195, 198). 8: Including images taken at three exposures. 9: Including images taken at five exposures. 10: Including images taken at seven exposures. 11: Images were black owing to sensor errors (2012: DOY 358–366; 2013: 1–86). 12: Images were black owing to sensor errors (2013: DOY 205–228). 13: Images were black owing to sensor errors (2013: DOY 206–228). 14: Images without fish-eye lens (2012: DOY 178–193, 295). 15: Including images without fish-eye lens (2011: DOY 349; 2012: 212, 296, 320). 16: Observations were suspended in winter.
7. METHODS
Time-lapse camera system
We used seven types of time-lapse cameras, described below.
A. ADFC
An automatic digital fish-eye camera (ADFC) is the main time-lapse camera system of PEN. This system consists of a digital camera (CoolPix 3400 or 4500, Nikon, Tokyo, Japan) and fish-eye lens (FC-E8, Nikon). It was installed at 25 sites (except EGT, LAM, TOE, and TOS; Table 4). An ADFC was installed in a waterproof box with control cables and a circuit board (SPC31A, Hayasaka Rikoh Co. Ltd., Sapporo, Japan). A PC running Linux or Windows controlled the ADFC. Shooting period and frequency were set to different values among ADFCs (Table 6). At KBF, KEW, LBR, and SHA, where it was not possible to use PCs, we used remote release cords (MC-EU1, Nikon, Japan; Table 4). Some ADFCs had a standard lens instead of a fish-eye lens (Table 4). Images were saved to the PEN database in JPEG format at 2272 × 1704 pixels. Exposure was set to automatic except at FJY (h01_u, l01_u, n01_u, h28_d, l28_d, n28_d), SGD (g00_u), TKC (f02_u), and TKY (f02_d, f02_u, L12_u, miz_u, y02_d, and y02_u) (Table 6). White balance was set to different values among ADFCs (see EXIF data of each image). As for the effect of different setting of white balance for analysis of red, green and blue digital numbers extracted from digital images, see Nagai et al. (2013a).
B. AIST Pheno-mon
This system consists of a main camera (EOS Kiss X4 digital SLR, Canon, Tokyo, Japan) equipped with a standard zoom lens (EF-S18–55 mm, f/3.5–5.6 IS, Canon), a supplemental USB camera), and a PC running Linux that controlled the cameras. It was installed at MSE and TGF (Table 4). Images were taken every 30 min during daytime (Table 6). The settings of the main camera were “Program” for exposure, “Auto” for white balance, and 18 mm for focal length (equivalent to 28 mm on 35-mm camera). Images were saved in JPEG format at 5184 × 3456 pixels.
C. Canon EOS
This system consists of a digital SLR camera (EOS Kiss X3, Canon) and an automated shutter timer unit (Garage Shop, Nara, Japan). It was installed at TOE and TOS (Table 4). Images were taken once a day at 11:40 local time (Table 6). Images were saved in JPEG format at 4752 × 3168 pixels. Exposure was set to automatic at f/11. White balance was set to daylight mode.
D. Minolta
This system consists of a film camera (Minolta Alpha 707si, Konika Minolta, Tokyo, Japan) with a semi-fisheye lens, driven by an internal battery. It was installed at EGT (Table 4). Using the internal timer, it operated once a day at approximately noon local time. Exposure was set to automatic. The 35-mm negative film was scanned and digitized, and images were saved in JPEG format at 939 × 680 pixels.
E. Nikon D3300
This system consists of a digital SLR camera (D3300, Nikon) and an automated shutter timer unit (E-6317 N3, Etsumi). It was installed at KEW from 2016. Images were taken at 1 hour or 3 hour interval. Images were saved in JPEG format at 6000 × 4000 pixels. Exposure was set to automatic at f/5.6. White balance was set to daylight.
F. Raspberry Pi
This system consists of a Raspberry Pi model B+ (Raspberry Pi Foundation, UK; https://www.raspberrypi.org/), a hand-held computer about the size of a credit card, with an added camera module (Raspberry Pi Camera V2). It was installed at LAM, PFA, and TKY (Table 4). Under the control of the “crontab” command, the “raspistill” command took images at times and intervals specific to each device (Table 6). Images were saved in JPEG format at 2592 × 1944 pixels. Exposure was set to automatic. White balance was set to different values among devices (see EXIF data of each image).
G. TLC200
The TLC200 is a time-lapse digital camera that runs on AA batteries (Brinno, USA; http://brinno.com/time-lapse-camera/TLC200). This system was installed at KEW and MMF. Images were taken every 1 h (Table 4). Images were saved in AVI format (frame-by-frame recording) at 1280 × 720 pixels. Exposure and white balance settings are not available in this system. We extracted still images in the free AVI2JPG v. 6.10 video editing software.
Tasks of contributors
The administrative tasks and managers are summarized in Table 7.
Table 7 Summary of tasks and managers of the time-lapse digital camera systems
Task |
Chief manager |
Basic design of measurement system |
S. Tsuchida1, K.N. Nasahara2 (ADFC), T. Maeda3 (AIST Pheno-mon) |
Developers of monitoring equipment |
S. Tsuchida1, K.N. Nasahara2, K. Iwao1, A. Iwasaki4, H. Oguma5 (ADFC), T. Maeda3 (AIST Pheno-mon) |
Managers of original PEN data server |
T. Akitsu2, K.N. Nasahara2 |
Managers of monitoring equipment |
T. Akitsu3, K.N. Nasahara3, S. Nagai6 |
1:Geological Survey of Japan, National Institute of Advanced Industrial Science and Technology, Tsukuba Central 7, Higashi 1-1-1 Tsukuba, Ibaraki 305-8569, Japan
2:Faculty of Life and Environmental Sciences, University of Tsukuba, 1-1-1 Tennodai, Tsukuba, Ibaraki 305-8572, Japan
3:National Institute of Advanced Industrial Science and Technology, 16-1 Onogawa, Tsukuba, Ibaraki 305-8569, Japan
4:Research Center for Advanced Science and Technology, The University of Tokyo, 4-6-1 Komaba, Meguro-ku, Tokyo 153-8904, Japan
5:National Institute for Environmental Studies, 16-2 Onogawa, Tsukuba, Ibaraki 305-8506, Japan
6:Research and Development Center for Global Change, Japan Agency for Marine-Earth Science and Technology, 3173-25 Showa-machi, Kanazawa-ku, Yokohama, Kanagawa 236-0001, Japan
8. PUBLICATIONS
All published papers based on the image database are summarized in Table 8.
Table 8 Summary of published papers based on long-term, continuous time-lapse images taken at the 29 PEN sites
Site ID |
Published paper |
AHS |
Mizunuma et al. 2013; Wingate et al. 2015 |
EGT |
None |
FHK |
Motohka et al. 2010 |
FJY |
None |
GDK |
Choi et al. 2011 |
HVT |
Bergstrom 2013 |
KBF |
None |
KEW |
None |
LAM |
None |
LBR |
Nagai et al. 2014b; Nagai et al. 2016b |
MMF |
None |
MSE |
Motohka et al. 2009; Motohka et al. 2010; Zukemura et al. 2011 |
MTK |
Mizunuma et al. 2011 |
PFA |
Nagai et al. 2013c; Ikawa et al. 2015 |
RHN |
Yamashita and Yoshimura 2008; Yamashita and Yoshimura 2010 |
SGD |
None |
SHA |
None |
SSP |
Nagai et al. in press |
TFS |
None |
TGF |
Motohka et al. 2010; Akitsu et al. 2011; Murakami et al. 2011 |
TKC |
Nagai et al. 2012; Saitoh et al. 2012a; Saitoh et al. 2012b; Nagai et al. 2013c; Saitoh et al. 2014 |
TKY |
Mikami et al. 2006; Nagai et al. 2008; Motohka et al. 2010; Muraoka et al. 2010; Nagai et al. 2010a; Nagai et al. 2010b; Motohka et al. 2011; Nagai et al. 2011a; Nagai et al. 2011b; Muraoka et al. 2012; Saitoh et al. 2012a; Saitoh et al. 2012b; Muraoka et al. 2013; Nagai et al. 2013a; Nagai et al. 2013b; Potithep et al. 2013; Inoue et al. 2014; Nagai et al. 2014a; Nagai et al. 2014c; Saitoh et al. 2014; Nagai et al. 2015; Saitoh et al. 2015 |
TOC |
None |
TOE |
None |
TOS |
None |
TSE |
None |
UAK |
None |
URY |
None |
YGT |
None |
9. DATA STRUCTURE
A. File format
The data files are saved in JPEG format.
B. Naming rules of the data files
The data files are named “dc_YEAR_DOY_TIMEUTC_SITE__CAMERA±EXPOSURE.jpg”, where YEAR is the year, DOY is the day of year, TIMEUTC is the time expressed in Universal Coordinated Time, SITE is the site ID, CAMERA is the camera ID, and EXPOSURE is the setting of exposure. “EXPOSURE” is an option (–1, –2, –3, –4, –5, –10, –20, +5, +10 and +20). Eight cameras (SGD: g00_u; TKC: f02_u; TKY: f02_d, f02_u, L12_u, miz_u, y02_d, and y02_u) use this option. As an exception, the data files of t27_w and t27_n in KEW and t30_d in MMF are named “dc_YEAR_DOY_+0900 _SITE__CAMERA_ ORDER.jpg”, where YEAR is the year, DOY is the day of year, SITE is the site ID, CAMERA is the camera ID, and ORDER is the order of photograph (from 1 to 21).
10. DATA ACCESS
The catalog page for the data files is here (http://pen.jamstec.go.jp).
The URL format for the data files is http://pen.jamstec.go.jp/SITE_/public_html/original/dc/dc_YEAR/dc_YEAR_DOY/, where SITE is the site ID, YEAR is the year, and DOY is the day of year. You can use “wget” command for downloading data.
11. ACCESSIBILITY
License
This data set is provided under a Creative Commons Attribution 4.0 International license (CC-BY 4.0: https://creativecommons.org/licenses/by/4.0/).
12. ACKNOWLEDGMENTS
This research was supported and conducted by many projects with funding provided by many ministries, institutes, and non-governmental organization (Table 2), notably the Global Change Observation Mission (PI #102, 116, and 117) of the Japan Aerospace Exploration Agency (JAXA). The authors thank K. Kurumado and Y. Miyamoto (River Basin Research Center, Gifu University), Dr. T. Hara (Hokkaido University), technical staff of Uryu and Teshio experimental forests (Hokkaido University), A. Iku (Kyoto University), Dr. U. Shimizu-kaya (Shimane University), and M. Takeuchi (JAMSTEC) for their assistance in the field and laboratory. This data paper is dedicated to the late Dr. Rikie Suzuki of JAMSTEC, our esteemed colleague.
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