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Research on the precise fertilization based on MapReduce model for BP neural network field

机译:基于BP神经网络字段MapReduce模型的精确施肥研究

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With the help of MapReduce powerful parallel computing ability and good extensibility, we try to solve the bottleneck problem of traditional BP neural network in dealing with the big data for the training sets in this paper. Through the experimental data for the farmland fertilizer effect, we propose that fertilizer rate is taken as input for the neural network, and ultimately yield is taken as the output, then building the precise fertilization model. By solving the nonlinear programming problem, the model can get the maximum yield and the optimum fertilizer rate at the same time, and can solve the estimating crop yield problem. In terms of predicting accuracy, the fertilization model result basing on the big data training sets is much better than the small data sets result obviously, and our proposed model can effectively guide the precise fertilization.
机译:在Mapreduce强大的平行计算能力和良好的可扩展性的帮助下,我们尝试解决传统BP神经网络的瓶颈问题,以便在本文中处理培训集的大数据。通过对农田施肥的实验数据,我们提出施肥率被视为神经网络的输入,最终得到产量作为输出,然后建立精确的施肥模型。通过解决非线性编程问题,模型可以同时获得最大产量和最佳肥料速率,并可以解决估计作物产量问题。在预测准确性方面,基于大数据训练集的施肥模型结果比小数据集明显好多多数,我们提出的模型可以有效地引导精确施肥。

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