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Estimation of soil moisture profile using Wavelet Neural Networks

机译:利用小波神经网络估算土壤水分剖面

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The main purpose of the presented study is to examine the usability of a Wavelet Neural Network (WNN) model for soil moisture estimation. In this study, the wavelet transformations and neural networks have been employed to estimate the daily soil moisture. Collected data have been decomposed into wavelet sub-time series using Discrete Wavelet Transformation (DWT) with Haar mother wavelets. The sub-time series have been selected as the inputs of neural network for estimation performance. Decomposition is done on different type of data. At the same time, those decomposed sub-time series data are used like inputs to the Time-Delay Neural Network (TDNN). The selection of sub-time series has effect on the output data also. Soil moisture values at different depths are estimated using inverse discrete wavelet transformation (IDWT). DWT and IDWT are applied with the quadrature mirror filters of decomposition and synthesis filters. Also, it is shown that selection of sub-time series has impact on the neural network model's performance. Consequently, the most appropriate wavelet-NN configuration is determined for each station which means of selecting the appropriate mother wavelet, number of scales and the neural network type. The main point, in WNN type configuration is the wavelet decomposition and usage of sub-time series as inputs of neural network. The results have been provided with the error metrics of the Root Mean Square Error (RMSE) and Coefficient of Efficiency (CE) by comparing the real and estimated values.
机译:本研究的主要目的是检验小波神经网络(WNN)模型在土壤水分估算中的可用性。在这项研究中,小波变换和神经网络已被用来估计每日土壤湿度。使用具有Haar母小波的离散小波变换(DWT)将收集的数据分解为小波子时间序列。子时间序列已被选择作为神经网络的输入,以进行估计性能。分解是在不同类型的数据上完成的。同时,这些分解后的子时间序列数据也用作时延神经网络(TDNN)的输入。子时间序列的选择也会影响输出数据。使用反离散小波变换(IDWT)估算不同深度的土壤水分值。 DWT和IDWT与分解和合成滤波器的正交镜像滤波器一起应用。此外,还表明,子时间序列的选择会影响神经网络模型的性能。因此,为每个站确定最合适的小波NN配置,这意味着选择合适的母小波,标度数和神经网络类型。在WNN类型配置中,要点是小波分解和将子时间序列用作神经网络的输入。通过比较实际值和估计值,为结果提供了均方根误差(RMSE)和效率系数(CE)的误差度量。

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