Wallach, D, Palosuo, T, Thorburn, P, Hochman, Z, Gourdain, E, Andrianasolo, F, Asseng, S, Basso, B, Buis, S, Crout, N, Dibari, C, Dumont, B, Ferrise, R, Gaiser, T, Garcia, C, Gayler, S, Ghahramani, A, Hiremath, S, Hoek, S, Horan, H, Hoogenboom, G, Huang, M, Jabloun, M, Jansson, P E, Jing, Q, Justes, E, Kersebaum, K C, Klosterhalfen, A, Launay, M, Lewan, E, Luo, Q, Maestrini, B, Mielenz, H, Moriondo, M, Nariman Zadeh, H, Padovan, G, Olesen, J E, Poyda, A, Priesack, E, Pullens, J W M, Qian, B, Schütze, N, Shelia, V, Souissi, A, Specka, X, Srivastava, A K, Stella, T, Streck, T, Trombi, G, Wallor, E, Wang, J, Weber, T K D, Weihermüller, L, de Wit, A, Wöhling, T, Xiao, L, Zhao, C, Zhu, Y & Seidel, S J 2021, ' The chaos in calibrating crop models : Lessons learned from a multi-model calibration exercise ', Environmental Modelling and Software, vol. 145, 105206 . https://doi.org/10.1016/j.envsoft.2021.105206 Environ. Modell. Softw. 145:105206 (2021) Environmental Modelling and Software 145 (2021) Environmental modelling & software 145, 105206-(2021). doi:10.1016/j.envsoft.2021.105206 Environmental Modelling and Software, 145 Environmental Modelling and Software Environmental Modelling and Software, Elsevier, 2021, 145, ⟨10.1016/j.envsoft.2021.105206⟩
Asseng, S, Martre, P, Maiorano, A, Rötter, R P, O’Leary, G J, Fitzgerald, G J, Girousse, C, Motzo, R, Giunta, F, Babar, M A, Reynolds, M P, Kheir, A M S, Thorburn, P J, Waha, K, Ruane, A C, Aggarwal, P K, Ahmed, M, Balkovič, J, Basso, B, Biernath, C, Bindi, M, Cammarano, D, Challinor, A J, De Sanctis, G, Dumont, B, Eyshi Rezaei, E, Fereres, E, Ferrise, R, Garcia-Vila, M, Gayler, S, Gao, Y, Horan, H, Hoogenboom, G, Izaurralde, R C, Jabloun, M, Jones, C D, Kassie, B T, Kersebaum, K C, Klein, C, Koehler, A K, Liu, B, Minoli, S, Montesino San Martin, M, Müller, C, Naresh Kumar, S, Nendel, C, Olesen, J E, Palosuo, T, Porter, J R, Priesack, E, Ripoche, D, Semenov, M A, Stöckle, C, Stratonovitch, P, Streck, T, Supit, I, Tao, F, Van der Velde, M, Wallach, D, Wang, E, Webber, H, Wolf, J, Xiao, L, Zhang, Z, Zhao, Z, Zhu, Y & Ewert, F 2019, ' Climate change impact and adaptation for wheat protein ', Global Change Biology, vol. 25, no. 1, pp. 155-173 . https://doi.org/10.1111/gcb.14481 Asseng, S, Martre, P, Maiorano, A, Roetter, R P, O'Leary, G J, Fitzgerald, G J, Girousse, C, Motzo, R, Giunta, F, Babar, M A, Reynolds, M P, Kheir, A M S, Thorburn, P J, Waha, K, Ruane, A C, Aggarwal, P K, Ahmed, M, Balkovic, J, Basso, B, Biernath, C, Bindi, M, Cammarano, D, Challinor, A J, De Sanctis, G, Dumont, B, Rezaei, E E, Fereres, E, Ferrise, R, Garcia-Vila, M, Gayler, S, Gao, Y, Horan, H, Hoogenboom, G, Izaurralde, R C, Jabloun, M, Jones, C D, Kassie, B T, Kersebaum, K-C, Klein, C, Koehler, A-K, Liu, B, Minoli, S, San Martin, M M, Mueller, C, Kumar, S N, Nendel, C, Olesen, J E, Palosuo, T, Porter, J R, Priesack, E, Ripoche, D, Semenov, M A, Stockle, C, Stratonovitch, P, Streck, T, Supit, I, Tao, F, Van der Velde, M, Wallach, D, Wang, E, Webber, H, Wolf, J, Xiao, L, Zhang, Z, Zhao, Z, Zhu, Y & Ewert, F 2019, ' Climate change impact and adaptation for wheat protein ', Global Change Biology, vol. 25, no. 1, pp. 155-173 . https://doi.org/10.1111/gcb.14481 Digital.CSIC. Repositorio Institucional del CSIC instname Global Change Biology Global Change Biology, 2019, ⟨10.1111/gcb.14481⟩ Global Change Biology, Wiley, 2019, ⟨10.1111/gcb.14481⟩ Global Change Biology 25 (2019) 1 Global Change Biology, 25(1), 155-173
Wallach, D, Palosuo, T, Thorburn, P, Gourdain, E, Asseng, S, Basso, B, Buis, S, Crout, N, Dibari, C, Dumont, B, Ferrise, R, Gaiser, T, Garcia, C, Gayler, S, Ghahramani, A, Hochman, Z, Hoek, S, Hoogenboom, G, Horan, H, Huang, M, Jabloun, M, Jing, Q, Justes, E, Kersebaum, K C, Klosterhalfen, A, Launay, M, Luo, Q, Maestrini, B, Mielenz, H, Moriondo, M, Nariman Zadeh, H, Olesen, J E, Poyda, A, Priesack, E, Pullens, J W M, Qian, B, Schütze, N, Shelia, V, Souissi, A, Specka, X, Srivastava, A K, Stella, T, Streck, T, Trombi, G, Wallor, E, Wang, J, Weber, T K D, Weihermüller, L, de Wit, A, Wöhling, T, Xiao, L, Zhao, C, Zhu, Y & Seidel, S J 2021, ' How well do crop modeling groups predict wheat phenology, given calibration data from the target population? ', European Journal of Agronomy, vol. 124, 126195 . https://doi.org/10.1016/j.eja.2020.126195 Eur. J. Agron. 124:126195 (2021) European Journal of Agronomy 124 (2021) European Journal of Agronomy European Journal of Agronomy, 2021, 124, ⟨10.1016/j.eja.2020.126195⟩ European journal of agronomy 124, 126195-(2021). doi:10.1016/j.eja.2020.126195 European Journal of Agronomy, 124
Agricultural and Forest Meteorology 298 (2021) Agricultural and forest meteorology 298-299, 108289-(2021). doi:10.1016/j.agrformet.2020.108289 Wallach, D, Palosuo, T, Thorburn, P, Hochman, Z, Andrianasolo, F, Asseng, S, Basso, B, Buis, S, Crout, N, Dumont, B, Ferrise, R, Gaiser, T, Gayler, S, Hiremath, S, Hoek, S, Horan, H, Hoogenboom, G, Huang, M, Jabloun, M, Jansson, P E, Jing, Q, Justes, E, Kersebaum, K C, Launay, M, Lewan, E, Luo, Q, Maestrini, B, Moriondo, M, Olesen, J E, Padovan, G, Poyda, A, Priesack, E, Pullens, J W M, Qian, B, Schütze, N, Shelia, V, Souissi, A, Specka, X, Kumar Srivastava, A, Stella, T, Streck, T, Trombi, G, Wallor, E, Weber, T K D, Weihermüller, L, de Wit, A, Wöhling, T, Xiao, L, Zhao, C, Zhu, Y & Seidel, S J 2021, ' Multi-model evaluation of phenology prediction for wheat in Australia ', Agricultural and Forest Meteorology, vol. 298-299, 108289 . https://doi.org/10.1016/j.agrformet.2020.108289 Agricultural and Forest Meteorology, 298 Agricultural and Forest Meteorology Agricultural and Forest Meteorology, 2021, 298-299, ⟨10.1016/j.agrformet.2020.108289⟩ Agric. For. Meteorol. 298-299:108289 (2021)