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  Gap-filling eddy covariance methane fluxes: Comparison of machine learning model predictions and uncertainties at FLUXNET-CH4 wetlands

Irvin, J., Zhou, S., McNicol, G., Lu, F., Liu, V., Fluet-Chouinard, E., Ouyang, Z., Knox, S. H., Lucas-Moffat, A., Trotta, C., Papale, D., Vitale, D., Mammarella, I., Alekseychik, P., Aurela, M., Avati, A., Baldocchi, D., Bansal, S., Bohrer, G., Campbell, D. I., Chen, J., Chu, H., Dalmagro, H. J., Delwiche, K. B., Desai, A. R., Euskirchen, E., Feron, S., Goeckede, M., Heimann, M., Helbig, M., Helfter, C., Hemes, K. S., Hirano, T., Iwata, H., Jurasinski, G., Kalhori, A., Kondrich, A., Lai, D. Y., Lohila, A., Malhotra, A., Merbold, L., Mitra, B., Ng, A., Nilsson, M. B., Noormets, A., Peichl, M., Rey-Sanchez, A. C., Richardson, A. D., Runkle, B. R., Schäfer, K. V., Sonnentag, O., Stuart-Haëntjens, E., Sturtevant, C., Ueyama, M., Valach, A. C., Vargas, R., Vourlitis, G. L., Ward, E. J., Wong, G. X., Zona, D., Alberto, M. C. R., Billesbach, D. P., Celis, G., Dolman, H., Friborg, T., Fuchs, K., Gogo, S., Gondwe, M. J., Goodrich, J. P., Gottschalk, P., Hörtnagl, L., Jacotot, A., Koebsch, F., Kasak, K., Maier, R., Morin, T. H., Nemitz, E., Oechel, W. C., Oikawa, P. Y., Ono, K., Sachs, T., Sakabe, A., Schuur, E. A., Shortt, R., Sullivan, R. C., Szutu, D. J., Tuittila, E.-S., Varlagin, A., Verfaillie, J. G., Wille, C., Windham-Myers, L., Poulter, B., Jackson, R. B. (2021): Gap-filling eddy covariance methane fluxes: Comparison of machine learning model predictions and uncertainties at FLUXNET-CH4 wetlands. - Agricultural and Forest Meteorology, 308-309, 108528.
https://doi.org/10.1016/j.agrformet.2021.108528

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 Creators:
Irvin, Jeremy1, 2, Author
Zhou, Sharon1, 2, Author
McNicol, Gavin1, 2, Author
Lu, Fred1, 2, Author
Liu, Vincent1, 2, Author
Fluet-Chouinard, Etienne1, 2, Author
Ouyang, Zutao1, 2, Author
Knox, Sara Helen1, 2, Author
Lucas-Moffat, Antje1, 2, Author
Trotta, Carlo1, 2, Author
Papale, Dario1, 2, Author
Vitale, Domenico1, 2, Author
Mammarella, Ivan1, 2, Author
Alekseychik, Pavel1, 2, Author
Aurela, Mika1, 2, Author
Avati, Anand1, 2, Author
Baldocchi, Dennis1, 2, Author
Bansal, Sheel1, 2, Author
Bohrer, Gil1, 2, Author
Campbell, David I1, 2, Author
Chen, Jiquan1, 2, AuthorChu, Housen1, 2, AuthorDalmagro, Higo J1, 2, AuthorDelwiche, Kyle B1, 2, AuthorDesai, Ankur R1, 2, AuthorEuskirchen, Eugenie1, 2, AuthorFeron, Sarah1, 2, AuthorGoeckede, Mathias1, 2, AuthorHeimann, Martin1, 2, AuthorHelbig, Manuel1, 2, AuthorHelfter, Carole1, 2, AuthorHemes, Kyle S1, 2, AuthorHirano, Takashi1, 2, AuthorIwata, Hiroki1, 2, AuthorJurasinski, Gerald1, 2, AuthorKalhori, Aram2, 3, Author                 Kondrich, Andrew1, 2, AuthorLai, Derrick YF1, 2, AuthorLohila, Annalea1, 2, AuthorMalhotra, Avni1, 2, AuthorMerbold, Lutz1, 2, AuthorMitra, Bhaskar1, 2, AuthorNg, Andrew1, 2, AuthorNilsson, Mats B1, 2, AuthorNoormets, Asko1, 2, AuthorPeichl, Matthias1, 2, AuthorRey-Sanchez, A. Camilo1, 2, AuthorRichardson, Andrew D1, 2, AuthorRunkle, Benjamin RK1, 2, AuthorSchäfer, Karina VR1, 2, AuthorSonnentag, Oliver1, 2, AuthorStuart-Haëntjens, Ellen1, 2, AuthorSturtevant, Cove1, 2, AuthorUeyama, Masahito1, 2, AuthorValach, Alex C1, 2, AuthorVargas, Rodrigo1, 2, AuthorVourlitis, George L1, 2, AuthorWard, Eric J1, 2, AuthorWong, Guan Xhuan1, 2, AuthorZona, Donatella1, 2, AuthorAlberto, Ma. Carmelita R1, 2, AuthorBillesbach, David P1, 2, AuthorCelis, Gerardo1, 2, AuthorDolman, Han1, 2, AuthorFriborg, Thomas1, 2, AuthorFuchs, Kathrin1, 2, AuthorGogo, Sébastien1, 2, AuthorGondwe, Mangaliso J1, 2, AuthorGoodrich, Jordan P1, 2, AuthorGottschalk, Pia2, 3, Author                 Hörtnagl, Lukas1, 2, AuthorJacotot, Adrien1, 2, AuthorKoebsch, Franziska1, 2, AuthorKasak, Kuno1, 2, AuthorMaier, Regine1, 2, AuthorMorin, Timothy H1, 2, AuthorNemitz, Eiko1, 2, AuthorOechel, Walter C1, 2, AuthorOikawa, Patricia Y1, 2, AuthorOno, Keisuke1, 2, AuthorSachs, T.2, 3, Author           Sakabe, Ayaka1, 2, AuthorSchuur, Edward A1, 2, AuthorShortt, Robert1, 2, AuthorSullivan, Ryan C1, 2, AuthorSzutu, Daphne J1, 2, AuthorTuittila, Eeva-Stiina1, 2, AuthorVarlagin, Andrej1, 2, AuthorVerfaillie, Joeseph G1, 2, AuthorWille, C.2, 3, Author           Windham-Myers, Lisamarie1, 2, AuthorPoulter, Benjamin1, 2, AuthorJackson, Robert B1, 2, Author more..
Affiliations:
1External Organizations, ou_persistent22              
2TERENO, Deutsches GeoForschungsZentrum, ou_5026871              
31.4 Remote Sensing, 1.0 Geodesy, Departments, GFZ Publication Database, Deutsches GeoForschungsZentrum, ou_146028              

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Free keywords: Machine learning; time series; imputation; gap-filling; methane; flux; wetlands
 Abstract: Time series of wetland methane fluxes measured by eddy covariance require gap-filling to estimate daily, seasonal, and annual emissions. Gap-filling methane fluxes is challenging because of high variability and complex responses to multiple drivers. To date, there is no widely established gap-filling standard for wetland methane fluxes, with regards both to the best model algorithms and predictors. This study synthesizes results of different gap-filling methods systematically applied at 17 wetland sites spanning boreal to tropical regions and including all major wetland classes and two rice paddies. Procedures are proposed for: 1) creating realistic artificial gap scenarios, 2) training and evaluating gap-filling models without overstating performance, and 3) predicting half-hourly methane fluxes and annual emissions with realistic uncertainty estimates. Performance is compared between a conventional method (marginal distribution sampling) and four machine learning algorithms. The conventional method achieved similar median performance as the machine learning models but was worse than the best machine learning models and relatively insensitive to predictor choices. Of the machine learning models, decision tree algorithms performed the best in cross-validation experiments, even with a baseline predictor set, and artificial neural networks showed comparable performance when using all predictors. Soil temperature was frequently the most important predictor whilst water table depth was important at sites with substantial water table fluctuations, highlighting the value of data on wetland soil conditions. Raw gap-filling uncertainties from the machine learning models were underestimated and we propose a method to calibrate uncertainties to observations. The python code for model development, evaluation, and uncertainty estimation is publicly available. This study outlines a modular and robust machine learning workflow and makes recommendations for, and evaluates an improved baseline of, methane gap-filling models that can be implemented in multi-site syntheses or standardized products from regional and global flux networks (e.g., FLUXNET).

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Language(s): eng - English
 Dates: 20212021
 Publication Status: Finally published
 Pages: -
 Publishing info: -
 Table of Contents: -
 Rev. Type: -
 Identifiers: DOI: 10.1016/j.agrformet.2021.108528
GFZPOF: p4 T5 Future Landscapes
 Degree: -

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Title: Agricultural and Forest Meteorology
Source Genre: Journal, SCI, Scopus
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Pages: - Volume / Issue: 308-309 Sequence Number: 108528 Start / End Page: - Identifier: CoNE: https://gfzpublic.gfz.de/cone/journals/resource/journals15
Publisher: Elsevier