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Short-Term Forecasting of Household Water Demand in the UK Using an Interpretable Machine Learning Approach

机译:使用可解释机器学习方法在英国家庭用水需求的短期预测

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摘要

This study utilizes a rich UK data set of smart demand metering data, household characteristics, and weather data to develop a demand forecasting methodology that combines the high accuracy of machine learning models with the interpretability of statistical methods. For this reason, a random forest model is used to predict daily demands 1 day ahead for groups of properties (mean of 3.8 households/group) with homogenous characteristics. A variety of interpretable machine learning techniques [variable permutation, accumulated local effects (ALE) plots, and individual conditional expectation (ICE) curves] are used to quantify the influence of these predictors (temporal, weather, and household characteristics) on water consumption. Results show that when past consumption data are available, they are the most important explanatory factor. However, when they are not, a combination of household and temporal characteristics can be used to produce a credible model with similar forecasting accuracy. Weather input has overall a mild to no effect on the model's output, although this effect can become significant under certain conditions. (C) 2021 American Society of Civil Engineers.
机译:本研究利用丰富的英国数据集智能需求计量数据,家庭特征和天气数据,以开发一种需求预测方法,将机器学习模型的高精度与统计方法的解释性相结合。因此,随机森林模型用于预测一天的每日需求,以获得具有均匀特征的特性(3.8户/群)的性质(平均值)。各种可解释的机器学习技术[可变置换,累积的局部效果(ALE)图和各个条件期望(冰)曲线)用于量化这些预测因子(时间,天气和家庭特征)对耗水量的影响。结果表明,当过去的消费数据可用时,它们是最重要的解释因素。然而,当它们不是时,家庭和时间特征的组合可用于产生具有类似预测精度的可信模型。天气输入总体上有一个轻度对模型的输出没有影响,尽管这种效果可能在某些条件下变得显着。 (c)2021年美国土木工程师协会。

著录项

  • 来源
    《Journal of Water Resources Planning and Management》 |2021年第4期|04021004.1-04021004.14|共14页
  • 作者单位

    Univ Exeter Ctr Water Syst North Pk Rd Exeter EX4 4QF Devon England|Stanford Univ Dept Biomed Data Sci Dept Pediat Dept Anesthesiol Perioperat & Pain Med Stanford CA 94305 USA;

    Wessex Water Claverton Down Rd Bath BA2 7WW Avon England;

    Univ Bath Water Innovat & Res Ctr Dept Chem Engn Claverton Down Rd Bath BA2 7AY Avon England|KWR Water Res Inst POB 1072 NL-3430 BB Nieuwegein Netherlands;

    Univ Exeter Ctr Water Syst North Pk Rd Exeter EX4 4QF Devon England|Delft Univ Technol Dept Water Management Stevinweg 1 NL-2628 CN Delft Netherlands;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Water demand forecasting; Smart demand metering; Random forest;

    机译:水需求预测;智能需求计量;随机森林;

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