基于电动汽车和电池储能系统的住宅产消户自动化需求响应

A. Tiwari, N. Pindoriya
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引用次数: 4

摘要

在当今的智能主动配电网中,终端用户可以通过自动需求响应(ADR)参与到系统稳定性的增强和系统运行质量的改善中来。本文研究了实时定价(RTP)下柔性能源的优化调度。优化的目标是降低住宅终端消费者的能源成本,其中包括一辆具有车辆到电网设施的电动汽车(EV)和三个额外的电器,在舒适度和能源成本平衡方面做出最小的妥协。RTP价格的变化取决于系统条件,优化调度下终端消费者的消费取决于RTP。因此,消费者间接地参与了系统稳定性和质量的提高,通过减少高价格的负荷,并将其转移到较低的价格。将调度问题表述为非线性优化问题。通过仿真结果,给出了有和无不适指数的优化问题和平准化能量代价的优化问题两种情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Demand Response for Residential Prosumer with Electric Vehicle and Battery Energy Storage System
In today's smart active distribution network, end-consumer can participate in the system stability enhancement and system operating quality improvement through the Automated Demand Response (ADR). This paper presents the optimized scheduling of the flexible energy resources under Real-Time Pricing (RTP). The objective of the optimization is to reduce the energy cost of the residential end-consumer, which includes an Electric Vehicle (EV) with a vehicle-to-grid facility enabled and three extra appliances, with the minimal possibility of compromise in comfort and levelized energy cost. The RTP price variation depends on the system condition, and the consumption of the end consumer under optimized scheduling depends upon the RTP. So indirectly, consumers participate in system stability and quality improvement by curtailing the load at a higher price and shifting it to a lower price. The scheduling problem is formulated as a non-linear optimization problem. The two cases viz optimization problem with and without the discomfort index and levelized cost of energy are presented through the simulation results in this paper.
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