小时需水量的短期预测——以葡萄牙为例

Q2 Social Sciences International Journal of Water Pub Date : 2019-05-02 DOI:10.1504/IJW.2019.099515
B. Coelho, A. Andrade-Campos
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引用次数: 2

摘要

预测未来的用水需求对于供水系统的有效管理至关重要。为了改进葡萄牙网络的运行,将短期需水量预测模型应用于从网络中不同位置收集的多个数据集。对传统的预测模型,如指数平滑和朴素模型,以及基于人工神经网络的预测模型进行了发展和比较。此外,还分析了人工神经网络模型中人为和天气变量的影响。结果表明,在本案例研究中,当模型中包含人类和天气变量等外部预测因素时,基于人工神经网络的模型优于传统模型。然而,对这些变量的不当选择可能会导致更差的预测性能。
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Short-term forecasting of hourly water demands - a Portuguese case study
Predicting future water demands is becoming essential for the efficient management of water supply systems (WSS). To improve the operations of a Portuguese network, short-term water demand forecasting models are applied to a number of datasets collected from distinct locations in the network. Traditional forecasting models, such as exponential smoothing and naive models, and artificial neural network (ANN)-based models are developed and compared. Additionally, the influence of anthropic and weather variables in the ANN-based models is also analysed. Results demonstrate that, for this case-study, ANN-based models outperform the traditional models when external predictors such as anthropic and weather variables are included in the models. However, the inappropriate choice of such variables may lead to worse forecasting performances.
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来源期刊
International Journal of Water
International Journal of Water Social Sciences-Geography, Planning and Development
CiteScore
0.40
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期刊介绍: The IJW is a fully refereed journal, providing a high profile international outlet for analyses and discussions of all aspects of water, environment and society.
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