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Bayesian regularized NAR neural network based short-term prediction method of water consumption

机译:基于贝叶斯正则化NAR神经网络的用水量短期预测方法

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With the continuous construction of urban water supply infrastructure, it is extremely urgent to change the management mode of water supply from traditional manual experience to modern and efficient means. The water consumption forecast is the premise of water supply scheduling, and its accuracy also directly affects the effectiveness of water supply scheduling. This paper analyzes the regularity of water consumption time series, establishes a short-term water consumption prediction model based on Bayesian regularized NAR neural network, and compares and evaluates the prediction effect of the model. The verification results show that the Bayesian based NAR neural network prediction model has higher adaptability to the water consumption prediction than the standard BP neural network and the Bayesian regularized BP neural network. The prediction accuracy can more accurately reflect the short-term variation of water consumption.
机译:随着城市供水基础设施的不断建设,迫切需要将供水管理模式从传统的人工经验转变为现代高效的手段。用水量预测是供水调度的前提,其准确性也直接影响着供水调度的有效性。本文对耗水时间序列的规律性进行了分析,建立了基于贝叶斯正则化NAR神经网络的短期耗水量预测模型,并对模型的预测效果进行了比较和评价。验证结果表明,基于贝叶斯的NAR神经网络预测模型与标准BP神经网络和贝叶斯正则化BP神经网络相比,对水耗预测具有更高的适应性。预测精度可以更准确地反映水消耗的短期变化。

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