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Short-Term Load Forecasting at the local level using smart meter data

机译:使用智能电表数据在本地进行短期负荷预测

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Recent developments in active distribution networks, and the availability of smart meter data has led to much interest in Short-Term Load Forecasting (STLF) of electrical demand at the local level, e.g. estimation of loads at substations, feeders, and individual users. Local demand profiles are volatile and noisy, making STLF difficult as we move towards lower levels of load aggregation. This paper examines in detail the correlations between demand and the variables which influence it, at various levels of load disaggregation. The analysis investigates the forecasting capability of both linear and non-linear STLF approaches for forecasting local demands, and quantifies the forecast uncertainty for each level of load aggregation. The results demonstrate the limitations of several of the most commonly-used STLF approaches in this context. It is shown that, at the local level, standard STLF models may not be effective, and that simple load models created from historical smart meter data can give similar prediction accuracies. The analysis in the paper is carried out using two large smart meter data sets recorded at distribution networks in Denmark and in Ireland.
机译:有源配电网的最新发展以及智能电表数据的可用性引起了人们对本地电力需求的短期负荷预测(STLF)的极大兴趣,例如,估算变电站,馈线和单个用户的负载。本地需求概况易变且嘈杂,随着我们朝着更低的负载聚合水平发展,STLF变得非常困难。本文详细研究了在负载分解的各个级别下需求与影响需求的变量之间的相关性。该分析调查了线性和非线性STLF方法在预测本地需求方面的预测能力,并量化了负载聚合各个级别的预测不确定性。结果证明了在这种情况下几种最常用的STLF方法的局限性。结果表明,在地方一级,标准的STLF模型可能无效,并且从历史智能电表数据创建的简单负荷模型可以提供相似的预测精度。本文中的分析是使用在丹麦和爱尔兰的配电网记录的两个大型智能电表数据集进行的。

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