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Using the Method Combining PCA with BP Neural Network to Predict Water Demand for Urban Development

机译:用PCA和BP神经网络相结合的方法预测城市发展的需水量

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Combining Principal Component Analysis (PCA) with BP Neural Network, the paper has established a model to predict water demand for urban development with a demonstration in Hefei city. The results indicate that the error absolute value of prediction model is less than 0.9 percent with an ideal effect. Viewed from PCA results, the principal factors affecting urban water demand can be summarized up as economic development (first principal component F1) and population size (second principal component F2). By model training of BP network with the scores of F1 and F2 as inputs and water demand as outputs, we has provided three prediction programs, while we think the medium program is relatively better suitable for guiding Hefeiȁ9;s water resources planning according to a comparative analysis on the balance between water supply and demand.
机译:将主成分分析(PCA)与BP神经网络相结合,以合肥市为例,建立了预测城市发展用水需求的模型。结果表明,预测模型的误差绝对值小于0.9%,效果理想。从PCA结果来看,影响城市用水需求的主要因素可以概括为经济发展(第一主要要素F1)和人口规模(第二主要要素F2)。通过以F1和F2分数作为输入,需水量作为输出的BP网络模型训练,我们提供了三个预测程序,而根据比较,我们认为中等程序更适合指导合肥市9的水资源规划。分析供需之间的平衡。

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