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Simulation of genotype-by-environment interactions on irrigated soybean yields in the US Midsouth

机译:浅型逐种环境互动的仿真对美国中间南部灌溉大豆产量的模拟

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Dynamic crop models that incorporate the effect of environmental variables can potentially explain yield differences associated with location, year, planting date, and cultivars with different growing cycles. Soybean (Glycine max (L) Mer.) cultivar coefficients for the DSSAT-CROPGRO model were calibrated from two growing seasons (2012 2013) comprising 58 irrigated environments (site x year x planting date combinations) for cultivars within maturity groups (MGs) 3 to 6 using end of season data (yield, seed weight, and seed oil and protein concentration) and previously calibrated phenology coefficients. Model accuracy after calibration of cultivar coefficients by MG (cultivars averaged within a MG) was similar compared to cultivar-specific coefficients. During the subsequent growing season in 2014 (33 environments), the model efficiency (ME) for predicting yield was 0.40, with a root mean square error (RMSE) of 571 kg ha(-1). The model was less efficient predicting seed number and seed weight (ME = 0.06 and 0.06, respectively) than yield. The model was able to simulate differences in seed oil concentration across environments and MGs (ME = 0.52), but not protein concentration (ME = 025). The analysis of yield stability had similar slopes for the observed and predicted yield regressions against an observed environmental index (El) that were only dependent on the MG. Simulated yields were significantly different from the observed when EI > 0, but yield differences in the highest yielding environments were still relatively small (245 to 608 kg ha(-1)). The results indicate an overall robust model performance in capturing G x E responses with coefficients calibrated by MG. (C) 2016 Elsevier Ltd. All rights reserved.
机译:融合环境变量效果的动态作物模型可能会解释与具有不同生长循环的地点,年,种植日和品种相关的产量差异。大豆(甘氨酸MAX(L)MER。)DSSAT-CRAPGRO模型的品种系数从两个生长季节(2012-2013)校准,包括58个灌溉环境(现场X年X种植日组合),用于成熟群(MGS)3中的品种通过季节数据(产率,种子重量和种子油和蛋白质浓度)和先前校准的候选系数。与栽培品种特异性系数相比,Mg校准Mg(Mg内平均品种的栽培品种校准后的模型精度。在2014年(33个环境)的随后的生长季节期间,预测产量的模型效率(ME)为0.40,具有571 kg HA(-1)的根均方误差(RMSE)。该模型比产率低于预测种子数和种子重量(分别为0.06和0.06)。该模型能够模拟跨环境和MGS(ME = 0.52)种子油浓度的差异,但不是蛋白质浓度(ME = 025)。屈服稳定性的分析具有类似于观察到的和预测的对观察到的环境指数(EL)的斜率,其仅依赖于MG。与EI> 0观察到的观察结果显着不同,但最高产量环境中的产量差异仍然相对较小(245至608kg ha(-1))。结果表明,在捕获MG校准的系数的G X E响应时表明了整体鲁棒模型性能。 (c)2016 Elsevier Ltd.保留所有权利。

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