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Prediction of soil moisture with complex-valued neural network

机译:复值神经网络在土壤水分预测中的应用

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Soil moisture is a critical state affecting a variety of land surface and subsurface processes. In this paper we report investigation results of multilayer neural network with multi-valued neurons (MLMVN), it is a distinct type of complex-valued neural network with derivative-free back-propagation algorithm. We examined the proposed method by using 4752 soil moisture data set at 30cm underground and environmental factors (rainfall, temperature and wind speed) collected respectively. Firstly, in order to smooth the data, outliers and missing values were replaced by the mean values of the neighbors. Meanwhile, from the autocorrelation and timing diagram can be seen that soil moisture was non-stationary nonlinear time series, and rainfall, temperature and wind speed had significant influence on soil moisture according to the correlation analysis. Secondly, principal component analysis (PCA) was used to eradicate the correlation of initial input parameters (soil moisture, rainfall, temperature and wind speed), and the first three principal components were nominated to restructure the samples into a lower dimensions, to reduce the scale of network and improve network performance. Finally, transformed the restructured samples into complex values as inputs and outputs of MLMVN network. The experimental results show that, in multi-step ahead soil moisture prediction, two hidden layers PCA_MLMVN network outperforms the MLMVN network in term of prediction accuracy with the average prediction accuracy reached 92.8%, enhanced 4.5% compared with the MLMVN network. The result shows that PCA_MLMVN comfirm a good performance in the long-term prediction of soil moisture and show little accumulating errors for multi-step ahead predictions.
机译:土壤水分是影响多种陆地表面和地下过程的关键状态。在本文中,我们报告了具有多值神经元(MLMVN)的多层神经网络的研究结果,它是一种独特的具有无导数反向传播算法的复值神经网络。我们使用在地下30厘米处设置的4752个土壤湿度数据和分别收集的环境因素(降雨,温度和风速)检查了该方法。首先,为了使数据平滑,将异常值和缺失值替换为邻居的平均值。同时,从自相关和时序图可以看出,土壤水分是非平稳的非线性时间序列,根据相关分析,降雨,温度和风速对土壤水分有显着影响。其次,使用主成分分析(PCA)消除了初始输入参数(土壤湿度,降雨,温度和风速)的相关性,并指定了前三个主成分以将样本重组为较小的维数,以减少扩大网络规模并提高网络性能。最后,将重组后的样本转换为复杂值,作为MLMVN网络的输入和输出。实验结果表明,在多步土壤湿度预测中,两个隐含层的PCA_MLMVN网络在预测精度方面优于MLMVN网络,平均预测精度达到MLMVN网络的92.8%,提高了4.5%。结果表明,PCA_MLMVN在长期的土壤湿度预测中具有良好的表现,并且对于多步超前预测的累积误差很小。

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