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首页> 外文期刊>Journal of Water Resources Planning and Management >Short-Term Water Demand Forecasting Using Nonlinear Autoregressive Artificial Neural Networks
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Short-Term Water Demand Forecasting Using Nonlinear Autoregressive Artificial Neural Networks

机译:非线性自回归人工神经网络的短期需水量预测

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摘要

Short-term water demand forecasting models address the case of a real-time optimal water pumping schedule. This study focuses on developing artificial neural network (ANN) models to forecast water demand 24 h and 1 week ahead. A number of studies have shown that the relationship between water demand and the driving variables is nonlinear. Two ANN time-series models were developed, a nonlinear autoregressive with exogenous (NARX) model with historical demand and weather data as an exogenous input, and a nonlinear autoregressive (NAR) model with only historical demand as an input. This investigation examines how model structure, length of historical data span, and improvement of an exogenous input can influence model performance. The results show that on average, using a nonlinear ANN model can improve water demand prediction by 18% and 25% when forecasting 24 h and 1 week ahead, respectively. The results also show that training the model (i.e., NARX) with correlated exogenous parameters dropped the error by 30% on average compared with a single-input model. In addition, using historical data for only 4 months compared with 5 years and 1 year decreased the error by 76% and 68% for NARX models and 35% and 33% for NAR models, forecasting 24 h and 1 week ahead, respectively.
机译:短期需水量预测模型可解决实时最佳水泵时间表的情况。这项研究的重点是开发人工神经网络(ANN)模型来预测24小时和1周前的需水量。大量研究表明,需水量和驱动变量之间的关系是非线性的。开发了两个ANN时间序列模型:具有历史需求和天气数据作为外部输入的非线性自回归非线性(NARX)模型以及仅具有历史需求作为输入的非线性自回归(NAR)模型。这项调查研究了模型结构,历史数据跨度的长度以及外部输入的改进如何影响模型性能。结果表明,平均而言,使用非线性ANN模型可以将用水量预测提前24小时和1周分别提高18%和25%。结果还表明,与单输入模型相比,使用相关的外源参数训练模型(即NARX)平均可将误差降低30%。此外,仅使用4个月的历史数据(相比5年和1年),NARX模型的误差降低了76%和68%,NAR模型的误差降低了35%和33%,分别预测了24小时和1周。

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