Improving load forecast accuracy by clustering consumers using smart meter data

Abbas Shahzadeh, A. Khosravi, S. Nahavandi
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引用次数: 57

Abstract

Utility companies provide electricity to a large number of consumers. These companies need to have an accurate forecast of the next day electricity demand. Any forecast errors will result in either reliability issues or increased costs for the company. Because of the widespread roll-out of smart meters, a large amount of high resolution consumption data is now accessible which was not available in the past. This new data can be used to improve the load forecast and as a result increase the reliability and decrease the expenses of electricity providers. In this paper, a number of methods for improving load forecast using smart meter data are discussed. In these methods, consumers are first divided into a number of clusters. Then a neural network is trained for each cluster and forecasts of these networks are added together in order to form the prediction for the aggregated load. In this paper, it is demonstrated that clustering increases the forecast accuracy significantly. Criteria used for grouping consumers play an important role in this process. In this work, three different feature selection methods for clustering consumers are explained and the effect of feature extraction methods on forecast error is investigated.
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通过使用智能电表数据对用户进行聚类,提高负荷预测的准确性
公用事业公司为大量消费者提供电力。这些公司需要对第二天的电力需求有一个准确的预测。任何预测错误都会导致可靠性问题或增加公司的成本。由于智能电表的广泛推广,大量高分辨率的用电数据现在可以访问,这在过去是不可用的。这些新数据可用于改进负荷预测,从而提高可靠性并降低电力供应商的费用。本文讨论了利用智能电表数据改进负荷预测的几种方法。在这些方法中,首先将消费者划分为多个集群。然后对每个聚类训练一个神经网络,并将这些网络的预测结果加在一起,形成对聚合负载的预测。本文证明了聚类可以显著提高预测精度。用于对消费者进行分组的标准在此过程中起着重要作用。本文解释了三种不同的消费者聚类特征选择方法,并研究了特征提取方法对预测误差的影响。
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