基于数据驱动的行业需求响应参与效益评估模型

S. Siddiquee, K. A. Agyeman, K. Bruton, B. Howard, D. O’Sullivan
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引用次数: 1

摘要

需求响应(DR)是公用事业运营商的一项激励计划,旨在为消费者提供机会,通过在高峰时期转移或减少负荷,在电网运行中发挥重要作用。这项工作提出了一种数据驱动的方法,该方法仅使用智能电表数据来识别消费者工业负荷的负载灵活性和参与DR计划的成本节约潜力。该方法的第一步涉及基于K均值算法的历史需求负荷数据的无监督聚类,以确定工业消费者的能源使用行为。然后从识别的集群计算操作需求灵活性边界。这些边界是灵活的区域,可以实现需求负载的上升和下降。设计了基于线性约束优化的两种灾备参与情景(即被动和主动),估计了灾备参与情景下的最优日电力需求轨迹,评估了灾备参与的净效益。某电子厂的案例研究表明,被动参与灾难恢复每月可获得4% - 7%的净效益,主动参与灾难恢复每月可获得14% - 19%的净效益。该方法为工业用户提供了一种非侵入性的电力负载灵活性潜力评估和相关的DR参与效益,而无需经过现场物理审核过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Data-driven Assessment Model for Demand Response Participation Benefit of Industries
Demand Response (DR) is an incentivized program by the utility operator to provide an opportunity for consumers to play a significant role in the electric grid operation by shifting or reducing loads during peak periods. This work proposes a data-driven methodology that only uses smart meter data to identify load flexibility in industrial loads of consumer and cost-saving potential from participating in a DR program. The first step of the methodology involves an unsupervised clustering of historical demand loads data based on $K$ -means algorithm to identify the energy usage behavior of an industrial consumer. An operation demand flexibility boundary is then calculated from the identified clusters. These boundaries are the flexible region where demand load ramp-up and ramp-down can be are achievable. Two DR participation scenarios (i.e., Passive and Active DR participation) based on Linear Constrained Optimization are designed where optimal daily electrical demand trajectory under DR participation scenario is estimated to evaluate the net benefit of DR participation. The case study of an electronics factory indicates that 4% – 7% monthly net benefit can be achieved from passive DR participation, and 14% – 19% monthly net benefit can be achieved from active DR participation. This methodology provides industrial consumers with a non-intrusive assessment of electrical load flexibility potential and associated DR participation benefit without going through the physical onsite audit process.
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