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Prediction of Grain Yield Using SIGA-BP Neural Network

机译:使用SIGA-BP神经网络预测粮食产量

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In order to improve the accuracy of forecasting grain yield, detailed analysis of the reason that the BP network is vulnerable to fall into local minimum was made, then the new method was adopted to solve the problem of BP network. This paper studies the self-adaptive immune genetic algorithm (SIGA), and then uses the SIGA to optimize the BP neural network weights and thresholds values, used the SIGA global search method to solve the local minimum values of BP network, and meanwhile established the SIGA-BP network prediction model about Henan province's grain yield. The simulation experiment results were that the average absolute error of grain yield predicted by the new model is 127.02ten thousand tons, the result shows that the SIGA BP neural network model has higher prediction accuracy than the BP network model.
机译:为了提高粮食单产预测的准确性,对BP网络易陷入局部极小的原因进行了详细分析,然后采用新方法解决了BP网络的问题。本文研究了自适应免疫遗传算法(SIGA),然后使用SIGA优化BP神经网络的权重和阈值,使用SIGA全局搜索方法求解BP网络的局部最小值,同时建立了BP神经网络的局部最小值。关于河南省粮食单产的SIGA-BP网络预测模型。仿真实验结果表明,新模型预测的平均单产绝对误差为127.02万吨,表明SIGA BP神经网络模型比BP网络模型具有更高的预测精度。

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