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Seasonal variation in household electricity demand: A comparison of monitored and synthetic daily load profiles

机译:家庭用电需求的季节性变化:监测的和合成的日负荷曲线的比较

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This paper examines seasonal variation in household electricity demand through analysis of two sets of half-hourly electricity demand data: a monitored dataset gathered from 58 English households between July and December 2011; and a synthetic dataset generated using a time-of-use-based load modelling tool. Analysis of variance (ANOVA) tests were used to identify statistically significant between-months differences in four metrics describing the shape of household-level daily load profiles: mean electrical load: peak load; load factor; and timing of peak load. For the monitored dataset, all four metrics exhibited significant monthly variation. With the exception of peak load time, significant between-months differences were also present for all metrics calculated for the synthetic dataset. However, monthly variability was generally under-represented in the synthetic data, and the predicted between-months differences in load factors and peak load timing were inconsistent with those exhibited by the monitored data. The study demonstrates that the shapes of household daily electrical load profiles can vary significantly between months, and that limited treatment of seasonal variation in load modelling can lead to inaccurate predictions of its effects. (C) 2018 The Authors. Published by Elsevier B.V.
机译:本文通过分析两组半小时的用电需求数据来研究家庭用电需求的季节性变化:2011年7月至2011年12月之间,从58个英国家庭收集的监测数据集;以及使用基于使用时间的负载建模工具生成的综合数据集。方差分析(ANOVA)测试用于确定四个指标的月间差异,这些指标在统计​​上具有显着意义,该四个指标描述了家庭水平的日负荷曲线的形状:平均电负荷:峰值负荷;负载系数和峰值负载的时间。对于受监视的数据集,所有四个指标均表现出显着的每月变化。除了高峰加载时间,对于合成数据集计算的所有度量标准也存在明显的月间差异。但是,综合数据通常不足以表示月度变化,并且负荷因子和峰值负荷时间的预测月间差异与监测数据所显示的不一致。该研究表明,家庭日用电负荷曲线的形状在数月之间可能会有很大变化,负荷模型中对季节性变化的有限处理可能会导致对其影响的预测不准确。 (C)2018作者。由Elsevier B.V.发布

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