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Condensed representation and individual prediction of consumer demand

机译:消费者需求的简明表示和个人预测

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Consumer Demand Response (DR) is an important research and industry problem, which seeks to solve three problems. First, grouping consumers into useful categories, second, predicting a given consumer's energy consumption, and third, estimating for that consumer if and when a specific device will be used. Unfortunately, measured consumer energy consumption patterns (24-hour load curves) show great variability even for an individual consumer, making it difficult to classify consumers into stable representative groups and to predict individual energy consumption. Traditional clustering methods have resulted in many hundreds of clusters, with a given consumer often associated with several clusters. In this paper, we present a new method that better classifies and predicts fine grain consumer energy consumption behavior. The method is based on Dynamic Time Warping. DTW seeks an optimal alignment between energy consumption patterns reflecting the effect of hidden patterns of regular consumer behavior. Using actual consumer 24-hour load curves from Opower Corporation, this method results in a 50% reduction in the number of representative groups and an improvement of 20% in prediction accuracy. We extend the approach to predict which electrical devices will be used and at what times for a given day, based on partial day data.
机译:消费者需求响应(DR)是一个重要的研究和行业问题,旨在解决三个问题。首先,将消费者分为有用的类别,其次,预测给定消费者的能源消耗,其次,为该消费者估算是否以及何时使用特定设备。不幸的是,即使对于单个消费者,所测得的消费者能源消耗模式(24小时负荷曲线)也显示出很大的可变性,这使得难以将消费者分类为稳定的代表组并难以预测个体能源消耗。传统的聚类方法产生了数百个聚类,而给定的消费者通常与多个聚类相关联。在本文中,我们提出了一种新方法,可以更好地分类和预测细粮消费者的能耗行为。该方法基于动态时间规整。 DTW寻求能源消耗模式之间的最佳匹配,以反映常规消费者行为的隐藏模式的影响。使用Opower Corporation的实际消费者24小时负载曲线,此方法可将代表组的数量减少50%,并将预测准确性提高20%。我们扩展了该方法,以基于不完整的一天数据预测在一天中将使用哪些电气设备以及在什么时间使用。

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