Analysis, modelling and forecasting of crop yields using artificial neural networks

R. Bischokov
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Abstract

The article gives information about the attempt made to select configurations, train and test artificial neural networks for predicting yields of grain crops considering of climate changes. Peculiarities of agricultural production require constant improvement of methods for analyzing crop yields, time series, and longterm climatic characteristics. Preliminary statistical evaluation of the considered time series made it possible to identify certain patterns. Time series were divided into four intervals: for building a network, its training, testing and control. During the construction of artificial neural networks, three models were used: MLP - multilayer perceptron, RBF - r adial basis functions and GRNN - g eneralized regression neural network. Based on the results of the construction, the best model was chosen. The sum of active air temperatures and the sum of precipitation for the growing season was used for artificial neural networks at the input, and the crop yield was used at the output. The use of sets of neural systems, generated automatically, contributed to the effective forecasting of crop yields based on the analysis of climate data. As a result, according to the selected model, a yield forecast was made for the coming years considering climatic characteristics.
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利用人工神经网络对作物产量进行分析、建模和预测
本文介绍了在考虑气候变化的情况下,为预测粮食作物产量而选择配置、训练和测试人工神经网络的尝试。农业生产的特殊性要求不断改进分析作物产量、时间序列和长期气候特征的方法。通过对所考虑的时间序列进行初步统计评估,可以确定某些模式。时间序列分为四个区间:用于构建网络、网络训练、测试和控制。在人工神经网络的构建过程中,使用了三个模型:MLP-多层感知器、RBF-r径向基函数和GRNN-g广义回归神经网络。根据构造结果,选择了最佳模型。人工神经网络在输入端使用生长季节的活跃气温和降水量之和,在输出端使用作物产量。使用自动生成的神经系统有助于在分析气候数据的基础上有效预测作物产量。因此,根据选定的模型,考虑到气候特征,对未来几年的产量进行了预测。
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发文量
34
审稿时长
12 weeks
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