Article (Scientific journals)
Multi-model evaluation of phenology prediction for wheat in Australia
Wallach, Daniel; Palosuo, Taru; Thorburn, Peter et al.
2021In Agricultural and Forest Meteorology, 298-299, p. 108289
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Keywords :
Evaluation; Phenology; Wheat; Australia; Structure uncertainty; Parameter uncertainty
Abstract :
[en] Predicting wheat phenology is important for cultivar selection, for effective crop management and provides a baseline for evaluating the effects of global change. Evaluating how well crop phenology can be predicted is therefore of major interest. Twenty-eight wheat modeling groups participated in this evaluation. Our target population was wheat fields in the major wheat growing regions of Australia under current climatic conditions and with current local management practices. The environments used for calibration and for evaluation were both sampled from this same target population. The calibration and evaluation environments had neither sites nor years in common, so this is a rigorous evaluation of the ability of modeling groups to predict phenology for new sites and weather conditions. Mean absolute error (MAE) for the evaluation environments, averaged over predictions of three phenological stages and over modeling groups, was 9 days, with a range from 6 to 20 days. Predictions using the multi-modeling group mean and median had prediction errors nearly as small as the best modeling group. About two thirds of the modeling groups performed better than a simple but relevant benchmark, which predicts phenology by assuming a constant temperature sum for each development stage. The added complexity of crop models beyond just the effect of temperature was thus justified in most cases. There was substantial variability between modeling groups using the same model structure, which implies that model improvement could be achieved not only by improving model structure, but also by improving parameter values, and in particular by improving calibration techniques.
Disciplines :
Agriculture & agronomy
Computer science
Author, co-author :
Wallach, Daniel
Palosuo, Taru
Thorburn, Peter
Hochman, Zvi
Andrianasolo, Fety
Asseng, Senthold
Basso, Bruno
Buis, Samuel
Crout, Neil
Dumont, Benjamin  ;  Université de Liège - ULiège > Département GxABT > Plant Sciences
Ferrise, Roberto
Gaiser, Thomas
Gayler, Sebastian
Hiremath, Santosh
Hoek, Steven
Horan, Heidi
Hoogenboom, Gerrit
Huang, Mingxia
Jabloun, Mohamed
Jansson, Per-Erik
Jing, Qi
Justes, Eric
Kersebaum, Kurt Christian
Launay, Marie
Lewan, Elisabet
Luo, Qunying
Maestrini, Bernardo
Moriondo, Marco
Olesen, Jørgen Eivind
Padovan, Gloria
Poyda, Arne
Priesack, Eckart
Pullens, Johannes Wilhelmus Maria
Qian, Budong
Schütze, Niels
Shelia, Vakhtang
Souissi, Amir
Specka, Xenia
Srivastava, Amit Kumar
Stella, Tommaso
Streck, Thilo
Trombi, Giacomo
Wallor, Evelyn
Wang, Jing
Weber, Tobias K. D.
Weihermüller, Lutz
Wit, Allard De
Wöhling, Thomas
Xiao, Liujun
Zhao, Chuang
Zhu, Yan
Seidel, Sabine J.
More authors (42 more) Less
Language :
English
Title :
Multi-model evaluation of phenology prediction for wheat in Australia
Publication date :
2021
Journal title :
Agricultural and Forest Meteorology
ISSN :
0168-1923
eISSN :
1873-2240
Publisher :
Elsevier, Netherlands
Volume :
298-299
Pages :
108289
Peer reviewed :
Peer Reviewed verified by ORBi
Available on ORBi :
since 01 December 2021

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