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Prediction for Water Surface Evaporation Based on PCA and RBF Neural Network

机译:基于PCA和RBF神经网络的水面蒸发量预测。

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摘要

In order to build prediction model of the water surface evaporation so as to easily plan and manage water resources, authors presented a method with the principal component analysis(PCA) and radial basis function(RBF) neural network model for predicting the water surface evaporation. Firstly, the PCA was used to eliminate the correlation of the initial input layer data so that the problem of efficiency caused by too many input parameters and by too large network scale in neural network modeling could be solved. And then, the prediction model of water surface evaporation was built through taking the results of PCA as inputs of the RBF neural network. The research result showed that the model proposed had a better prediction accuracy that the average prediction accuracy reached 95.3%, and enhanced 5.5% and 5.0% compared with the conventional BP network and RBF network respectively, which met the requirements of actual water resources planning and provided a theoretical reference for other region of water surface evaporation forecasting.
机译:为了建立水面蒸发量的预测模型,以方便规划和管理水资源,作者提出了一种利用主成分分析(PCA)和径向基函数(RBF)神经网络模型进行水面蒸发量预测的方法。首先,利用PCA消除了初始输入层数据的相关性,从而解决了在神经网络建模中输入参数过多和网络规模太大导致的效率问题。然后,以PCA的结果作为RBF神经网络的输入,建立了水面蒸发的预测模型。研究结果表明,与常规的BP网络和RBF网络相比,所提出的模型具有较好的预测精度,平均预测精度达到95.3%,分别提高了5.5%和5.0%,满足了实际水资源规划和规划的要求。为其他地区的水面蒸发预报提供理论参考。

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