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Short-term municipal water demand forecasting

机译:短期市政用水需求预测

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Water demand forecasts are needed for the design, operation and management of urban water supply systems. In this study, the relative performance of regression, time series analysis and artificial neural network (ANN) models are investigated for short-term peak water demand forecasting. The significance of climatic variables (rainfall and maximum air temperature, in addition to past water demand) on water demand management is also investigated. Numerical analysis was performed on data from the city of Ottawa, Ontario, Canada. The existing water supply infrastructure will not be able to meet the demand for projected population growth; thus, a study is needed to determine the effect of peak water demand management on the sizing and staging of facilities for developing an expansion strategy. Three different ANNs and regression models and seven time-series models have been developed and compared. The ANN models consistently outperformed the regression and time-series models developed in this study. It has been found that water demand on a weekly basis is more significantly correlated with the rainfall amount than the occurrence of rainfall.
机译:城市供水系统的设计,运行和管理需要用水量预测。在本研究中,研究了回归,时间序列分析和人工神经网络(ANN)模型在短期峰值需水量预测中的相对性能。还研究了气候变量(除了过去的需水量之外的降雨和最高气温)对需水量管理的重要性。对来自加拿大安大略省渥太华市的数据进行了数值分析。现有的供水基础设施将无法满足预计的人口增长需求;因此,需要进行一项研究来确定高峰用水需求管理对制定扩展策略的设施的规模和阶段性的影响。已经开发并比较了三种不同的人工神经网络,回归模型和七个时间序列模型。 ANN模型始终优于本研究中开发的回归模型和时间序列模型。已经发现,与降雨的发生相比,每周的需水量与降雨量的相关性更大。

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