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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预测

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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:为了将水的表面蒸发的构建预测模型,以便容易地计划和管理水资源,作者提出与主成分分析(PCA)和径向基函数(RBF)用于预测水面蒸发神经网络模型的方法。首先,PCA被用来消除,可以防止由过多的输入参数,并通过在神经网络建模的过大网络规模效率的问题可以解决初始输入层数据的相关性。然后,水表面蒸发的预测模型是通过服用PCA的结果作为RBF网络的输入建造。研究结果表明,该模型的提出有一个更好的预测精度,平均预测准确率达到了95.3%,并分别与传统的BP网络和RBF网络,符合实际的水资源规划的要求相比提高5.5%和5.0%提供了一种用于水面蒸发预测的其他区域中的理论参考。

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