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Gap-filling eddy covariance methane fluxes: Comparison of machine learning model predictions and uncertainties at FLUXNET-CH4 wetlands
2021
Irvin, Jeremy | Zhou, Sharon | McNicol, Gavin | Lu, Fred | Liu, Vincent | Fluet-Chouinard, Etienne | Ouyang, Zutao | Knox, Sara Helen | Lucas-Moffat, Antje | Trotta, Carlo | Papale, Dario | Vitale, Domenico | Mammarella, Ivan | Alekseychik, Pavel | Aurela, Mika | Avati, Anand | Baldocchi, Dennis | Bansal, Sheel | Bohrer, Gil | Campbell, David I. | Jiquan Chen | Chu, Housen | Dalmagro, Higo J. | Delwiche, Kyle B. | Desai, Ankur R. | Euskirchen, Eugénie | Feron, Sarah | Goeckede, Mathias | Heimann, Martin | Helbig, Manuel | Helfter, Carole | Hemes, Kyle S. | Hirano, Takashi | Iwata, Hiroki | Jurasinski, Gerald | Kalhori, Aram | Kondrich, Andrew | Lai, Derrick Y.F. | Lohila, Annalea | Malhotra, Avni | Merbold, Lutz | Mitra, Bhaskar | Ng, Andrew | Nilsson, Mats B. | Noormets, Asko | Peichl, Matthias | Rey Sanchez, A. Camilo | Richardson, Andrew D. | Runkle, Benjamin R.K. | Schäfer, Karina V.R. | Sonnentag, Oliver | Stuart-Haëntjens, Ellen | Sturtevant, Cove | Ueyama, Masahito | Valach, Alex C. | Vargas, Rodrigo | Vourlitis, George L. | Ward, Eric J. | Wong, Guan Xhuan | Zona, Donatella | Alberto, Ma.Carmelita R. | Billesbach, David P. | Celis, Gerardo | Dolman, Han | Friborg, Thomas | Fuchs, Kathrin | Gogo, Sébastien | Gondwe, Mangaliso J. | Goodrich, Jordan P. | Gottschalk, Pia | Hörtnagl, Lukas | Jacotot, Adrien | Koebsch, Franziska | Kasak, Kuno | Maier, Regine | Morin, Timothy H. | Nemitz, Eiko | Oechel, Walter C. | Oikawa, Patricia Y. | Ono, Keisuke | Sachs, Torsten | Sakabe, Ayaka | Schuur, Edward A.G. | Shortt, Robert | Sullivan, Ryan C. | Szutu, Daphne J. | Tuittila, Eeva-Stiina | Varlagin, Andrej | Verfaillie, Joseph G. | Wille, Christian | Windham-Myers, Lisamarie | Poulter, Benjamin | Jackson, Robert B.
Curated genome annotation of Oryza sativa ssp. japonica and comparative genome analysis with Arabidopsis thaliana.
2007
Itoh, Takeshi | Tanaka, Tsuyoshi | Barrero, Roberto A. | Yamasaki, Chisato | Fujii, Yasuyuki | Hilton, Phillip B. | Antonio, Baltazar A. | Aono, Hideo | Apweiler, Rolf | Bruskiewich, Richard | Bureau, Thomas | Burr, Frances | Costa de Oliveira, Antonio | Fuks, Galina | Habara, Takuya | Haberer, Georg | Han, Bin | Harada, Erimi | Hiraki, Aiko T. | Hirochika, Hirohiko | Hoen, Douglas | Hokari, Hiroki | Hosokawa, Satomi | Hsing, Yue | Ikawa, Hiroshi | Ikeo, Kazuho | Imanishi, Tadashi | Ito, Yukiyo | Jaiswal, Pankaj | Kanno, Masako | Kawahara, Yoshihiro | Kawamura, Toshiyuki | Kawashima, Hiroaki | Khurana, Jitendra P. | Kikuchi, Shoshi | Komatsu, Setsuko | Koyanagi, Kanako O. | Kubooka, Hiromi | Lieberherr, Damien | Lin, Yao-Cheng | Lonsdale, David | Matsumoto, Takashi | Matsuya, Akihiro | McCombie, W. Richard | Messing, Joachim | Miyao, Akio | Mulder, Nicola | Nagamura, Yoshiaki | Nam, Jongmin | Namiki, Nobukazu | Numa, Hisataka | Nurimoto, Shin | O’Donovan, Claire | Ohyanagi, Hajime | Okido, Toshihisa | OOta, Satoshi | Osato, Naoki | Palmer, Lance E. | Quetier, Francis | Raghuvanshi, Saurabh | Saichi, Naomi | Sakai, Hiroaki | Sakai, Yasumichi | Sakata, Katsumi | Sakurai, Tetsuya | Sato, Fumihiko | Sato, Yoshiharu | Schoof, Heiko | Seki, Motoaki | Shibata, Michie | Shimizu, Yuji | Shinozaki, Kazuo | Shinso, Yuji | Singh, Nagendra K. | Smith-White, Brian | Takeda, Jun-ichi | Tanino, Motohiko | Tatusova, Tatiana | Thongjuea, Supat | Todokoro, Fusano | Tsugane, Mika | Tyagi, Akhilesh K. | Vanavichit, Apichart | Wang, Aihui | Wing, Rod A. | Yamaguchi, Kaori | Yamamoto, Mayu | Yamamoto, Naoyuki | Yu, Yeisoo | Zhang, Hao | Zhao, Qiang | Higo, Kenichi | Burr, Benjamin | Gojobori, Takashi | Sasaki, Takuji
We present here the annotation of the complete genome of riceOryza sativaL. ssp.japonicacultivar Nipponbare. All functional annotations for proteins and non-protein-coding RNA (npRNA) candidates were manually curated. Functions were identified or inferred in 19,969 (70%) of the proteins, and 131 possible npRNAs (including 58 antisense transcripts) were found. Almost 5000 annotated protein-coding genes were found to be disrupted in insertional mutant lines, which will accelerate future experimental validation of the annotations. The rice loci were determined by using cDNA sequences obtained from rice and other representative cereals. Our conservative estimate based on these loci and an extrapolation suggested that the gene number of rice is ∼32,000, which is smaller than previous estimates. We conducted comparative analyses between rice andArabidopsis thalianaand found that both genomes possessed several lineage-specific genes, which might account for the observed differences between these species, while they had similar sets of predicted functional domains among the protein sequences. A system to control translational efficiency seems to be conserved across large evolutionary distances. Moreover, the evolutionary process of protein-coding genes was examined. Our results suggest that natural selection may have played a role for duplicated genes in both species, so that duplication was suppressed or favored in a manner that depended on the function of a gene.
اظهر المزيد [+] اقل [-]FLUXNET-CH4: a global, multi-ecosystem dataset and analysis of methane seasonality from freshwater wetlands
2021
Delwiche, Kyle B. | Knox, Sara Helen | Malhotra, Avni | Fluet-Chouinard, Etienne | McNicol, Gavin | Feron, Sarah | Ouyang, Zutao | Papale, Dario | Trotta, Carlo | Canfora, Eleonora | Cheah, You-Wei | Christianson, Danielle | Alberto, Ma.Carmelita R. | Alekseychik, Pavel | Aurela, Mika | Baldocchi, Dennis | Bansal, Sheel | Billesbach, David P. | Bohrer, Gil | Bracho, Rosvel | Buchmann, Nina | Campbell, David I. | Celis, Gerardo | Jiquan Chen | Weinan Chen | Chu, Housen | Dalmagro, Higo J. | Dengel, Sigrid | Desai, Ankur R. | Detto, Matteo | Dolman, Han | Eichelmann, Elke | Euskirchen, Eugénie | Famulari, Daniela | Fuchs, Kathrin | Goeckede, Mathias | Gogo, Sébastien | Gondwe, Mangaliso J. | Goodrich, Jordan P. | Gottschalk, Pia | Graham, Scott L. | Heimann, Martin | Helbig, Manuel | Helfter, Carole | Hemes, Kyle S. | Hirano, Takashi | Hollinger, David | Hörtnagl, Lukas | Iwata, Hiroki | Jacotot, Adrien | Jurasinski, Gerald | Kang, Minseok | Kasak, Kuno | King, John | Klatt, Janina | Koebsch, Franziska | Krauss, Ken W. | Lai, Derrick Y.F. | Lohila, Annalea | Mammarella, Ivan | Belelli Marchesini, Luca | Manca, Giovanni | Matthes, Jaclyn Hatala | Maximov, Trofim | Merbold, Lutz | Mitra, Bhaskar | Morin, Timothy H. | Nemitz, Eiko | Nilsson, Mats B. | Niu, Shuli | Oechel, Walter C. | Oikawa, Patricia Y. | Ono, Keisuke | Peichl, Matthias | Peltola, Olli | Reba, Michele L. | Richardson, Andrew D. | Riley, William | Runkle, Benjamin R.K. | Ryu, Youngryel | Sachs, Torsten | Sakabe, Ayaka | Sanchez, Camilo Rey | Schuur, Edward A.G. | Schäfer, Karina V.R. | Sonnentag, Oliver | Sparks, Jed P. | Stuart-Haëntjens, Ellen | Sturtevant, Cove | Sullivan, Ryan C. | Szutu, Daphne J. | Thom, Jonathan E. | Torn, Margaret S. | Tuittila, Eeva-Stiina | Turner, Jessica | Ueyama, Masahito | Valach, Alex C. | Vargas, Rodrigo | Varlagin, Andrej | Vazquez-Lule, Alma | Verfaillie, Joseph G. | Vesala, Timo | Vourlitis, George L. | Ward, Eric J. | Wille, Christian | Wohlfahrt, Georg | Wong, Guan Xhuan | Zhang, Zhen | Zona, Donatella | Windham-Myers, Lisamarie | Poulter, Benjamin | Jackson, Robert B.
Abstract. Methane (CH4) emissions from natural landscapes constitute roughly half of global CH4 contributions to the atmosphere, yet large uncertainties remain in the absolute magnitude and the seasonality of emission quantities and drivers. Eddy covariance (EC) measurements of CH4 flux are ideal for constraining ecosystem-scale CH4 emissions due to quasi-continuous and high-temporal-resolution CH4 flux measurements, coincident carbon dioxide, water, and energy flux measurements, lack of ecosystem disturbance, and increased availability of datasets over the last decade. Here, we (1) describe the newly published dataset, FLUXNET-CH4 Version 1.0, the first open-source global dataset of CH4 EC measurements (available at https://fluxnet.org/data/fluxnet-ch4-community-product/, last access: 7 April 2021). FLUXNET-CH4 includes half-hourly and daily gap-filled and non-gap-filled aggregated CH4 fluxes and meteorological data from 79 sites globally: 42 freshwater wetlands, 6 brackish and saline wetlands, 7 formerly drained ecosystems, 7 rice paddy sites, 2 lakes, and 15 uplands. Then, we (2) evaluate FLUXNET-CH4 representativeness for freshwater wetland coverage globally because the majority of sites in FLUXNET-CH4 Version 1.0 are freshwater wetlands which are a substantial source of total atmospheric CH4 emissions; and (3) we provide the first global estimates of the seasonal variability and seasonality predictors of freshwater wetland CH4 fluxes. Our representativeness analysis suggests that the freshwater wetland sites in the dataset cover global wetland bioclimatic attributes (encompassing energy, moisture, and vegetation-related parameters) in arctic, boreal, and temperate regions but only sparsely cover humid tropical regions. Seasonality metrics of wetland CH4 emissions vary considerably across latitudinal bands. In freshwater wetlands (except those between 20∘ S to 20∘ N) the spring onset of elevated CH4 emissions starts 3 d earlier, and the CH4 emission season lasts 4 d longer, for each degree Celsius increase in mean annual air temperature. On average, the spring onset of increasing CH4 emissions lags behind soil warming by 1 month, with very few sites experiencing increased CH4 emissions prior to the onset of soil warming. In contrast, roughly half of these sites experience the spring onset of rising CH4 emissions prior to the spring increase in gross primary productivity (GPP). The timing of peak summer CH4 emissions does not correlate with the timing for either peak summer temperature or peak GPP. Our results provide seasonality parameters for CH4 modeling and highlight seasonality metrics that cannot be predicted by temperature or GPP (i.e., seasonality of CH4 peak). FLUXNET-CH4 is a powerful new resource for diagnosing and understanding the role of terrestrial ecosystems and climate drivers in the global CH4 cycle, and future additions of sites in tropical ecosystems and site years of data collection will provide added value to this database. All seasonality parameters are available at https://doi.org/10.5281/zenodo.4672601 (Delwiche et al., 2021). Additionally, raw FLUXNET-CH4 data used to extract seasonality parameters can be downloaded from https://fluxnet.org/data/fluxnet-ch4-community-product/ (last access: 7 April 2021), and a complete list of the 79 individual site data DOIs is provided in Table 2 of this paper.
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