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Modeling winter wheat response to water in North China with feed-forward neural networks

机译:用前馈神经网络模拟华北地区冬小麦对水的响应

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The model of crop response to water describes the quantitative relationship between crop yield and water input, and is essential for the rational regulation of field water regime and the improvement of water use efficiency. A multi-layer feed-forward neural network (MFNN) was used to simulate the crop response to water for winter wheat in Xiaohe irrigation district in North China. The MFNN was trained with field experiment results using the Hybrid Algorithm of genetic algorithms and back-propagation algorithm. It was found that the MFNN is capable to describe wheat yield response to water well when using suitable parameters and training algorithms, while the over-fitting of the MFNN can be improved by decreasing the number of hidden nodes and introducing calibration samples. The simulation results indicate that the yield of winter wheat is sensitive to water stress during three mid-growing stages. Moderate water stress in these three stages has little influence on the yield, and thresholds of moderate water stress for these three stages can be used in irrigation scheduling.
机译:对水的作物反应模型描述了作物产量和水投入之间的定量关系,对现场水规的合理调节以及水利用效率的改善至关重要。多层前馈神经网络(MFNN)用于模拟华北小河灌区冬小麦水的作物反应。使用遗传算法和背传播算法的混合算法,用现场实验结果培训MFNN。发现MFNN能够在使用合适的参数和训练算法时描述对水的小麦产量响应,而可以通过降低隐藏节点的数量并引入校准样本来改善MFNN的过度拟合。模拟结果表明,在三个中生阶段期间,冬小麦的产量对水胁迫敏感。这三个阶段中的中度水分应激对该三个阶段的产量影响几乎没有对产率的影响,并且可以用于灌溉调度。

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