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Residential Customer Baseline Load Estimation Using Stacked Autoencoder With Pseudo-Load Selection

机译:使用堆叠自动控制器的住宅客户基准负载估计,具有伪负载选择

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摘要

Accurate estimation of customer baseline load (CBL) is a key factor in the successful implementation of demand response (DR). CBL technologies implemented at utilities currently are primarily designed for large industrial and commercial customers. The U.S. Federal Energy Regulatory Commission (FERC) order 745 states that DR owners, including residential customers, can sell their load reduction in the wholesale market. However, since residential load is random and un-schedulable, this tends to inherently degrade the effectiveness of existing CBL technologies. In this paper, a novel SAE based CBL method for residential customers that uses the data reconstruction capability of a stacked autoencoder (SAE) is described. In the model, two SAEs are synchronously trained-one SAE generates a pseudo-load pool and the second one is used to select a pseudo-load to reconstruct a residential CBL. A support vector machine (SVM) classifier is self-trained to conduct the pseudo-load selection. The proposed strategy is validated using a real data set consisting of 328 residential customers' smart meter readings. Benchmarks from other machine learning techniques and existing CBL methods are compared with the proposed method. Test results show that the accuracy of the residential CBL reconstruction significantly improves when compared with existing methods, such as HighXofY and exponential moving average.
机译:准确估计客户基线负载(CBL)是成功实施需求响应(DR)的关键因素。在公用事业中实施的CBL技术目前主要为大型工业和商业客户设计。美国联邦能源监管委员会(FERC)订单745令代称,包括住宅客户,包括住宅客户,可以在批发市场出售其负荷减少。然而,由于住宅负载是随机和不可定期的,这倾向于固有地降低了现有CBL技术的有效性。本文描述了一种基于SAE的基于SAE的CBL方法,其用于使用堆叠的AutoEncoder(SAE)的数据重建能力(SAE)的住宅客户。在该模型中,两个SAE是同步训练的-ONE SAE产生伪负载池,第二个SAE用于选择伪负载以重建住宅CBL。支持向量机(SVM)分类器是自培训的,以进行伪负载选择。使用由328个住宅客户的智能仪表读数组成的真实数据集来验证所提出的策略。与所提出的方法进行比较来自其他机器学习技术和现有CBL方法的基准。测试结果表明,与现有方法相比,住宅CBL重建的准确性显着提高,例如高辛和指数移动平均线。

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