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A Comparison of Short-Term Water Demand Forecasting Models

机译:短期需水量预测模型的比较

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摘要

This paper presents a comparison of different short-term water demand forecasting models. The comparison regards six models that differ in terms of: forecasting technique, type of forecast (deterministic or probabilistic) and the amount of data necessary for calibration. Specifically, the following are compared: a neural-network based model (ANN_WDF), a pattern-based model (Patt_WDF), two pattern-based models relying on the moving-window technique (_WDF and Bakk_WDF), a probabilistic Markov chain-based model (HMC_WDF) and a naive benchmark model. The comparison is made by applying the models to seven real-life cases, making reference to the water demands observed over 2years in district-metered areas/water distribution networks of different sizes serving a different number and type of users. The models are applied in order to forecast the hourly water demands over a 24-h time horizon. The comparison shows that a) models based on different techniques provide comparable, medium-high forecasting accuracies, but also that b) short-term water demand forecasting models based on moving-window techniques are generally the most robust and easier to set up and parameterize.
机译:本文对不同的短期需水量预测模型进行了比较。比较涉及六个模型,这些模型在以下方面有所不同:预测技术,预测类型(确定性或概率性)以及校准所需的数据量。具体来说,将进行以下比较:基于神经网络的模型(ANN_WDF),基于模式的模型(Patt_WDF),两个依赖于移动窗口技术的基于模式的模型(_WDF和Bakk_WDF),基于概率马尔可夫链的模型模型(HMC_WDF)和天真的基准模型。通过将模型应用于七个实际案例进行比较,并参考了两年来在不同规模,服务于不同数量和类型用户的区域计量区域/供水网络中观察到的需水量。应用这些模型是为了预测24小时内的每小时需水量。比较表明,a)基于不同技术的模型可提供可比较的中高预测精度,而且b)基于移动窗口技术的短期需水量预测模型通常最健壮且易于设置和参数化。

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