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Variational Mode Decomposition Hybridized With Gradient Boost Regression for Seasonal Forecast of Residential Water Demand

机译:变形模式分解与梯度升压回归杂交,以使季节性预测的住宅需求

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Climate variability highly influences water availability and demand in urban areas, but medium-term predictive models of residential water demand usually do not include climate variables. This study proposes a method to predict monthly residential water demand using temperature and precipitation, by combining a novel decomposition technique and gradient boost regression. The variational mode decomposition (VMD) was used to filter the water demand time series and remove the component associated with the socioeconomic characteristics of households. VMD was also used to extract the relevant signal from precipitation and maximum temperature series which could explain water demand. The results indicate that by filtering the water demand and climate signals we can obtain accurate predictions at least four months in advance. These results suggest that the climate information can be used to explain and predict residential water demand.
机译:气候变异性高度影响城市地区的水可用性和需求,但中期预测模型的住宅需水量通常不包括气候变量。 本研究提出了一种使用温度和降水来预测每月住宅需求的方法,通过结合新的分解技术和梯度升压回归。 变分模式分解(VMD)用于过滤水需求时间序列并删除与家庭的社会经济特征相关的组件。 VMD还用于从降水和最高温度系列中提取相关信号,可以解释水需求。 结果表明,通过过滤水需求和气候信号,我们可以提前四个月获得准确的预测。 这些结果表明,气候信息可用于解释和预测住宅需求。

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