Peak Reduction in a Residential Community Through Bayesian Optimization of Transactive Control Signals

Ian Schomer, F. Li, B. Ollis
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引用次数: 0

Abstract

Daily residential power consumption in aggregate tends to have a large peak that places stress on the distribution system and induces high operational costs. This work shows that coordinated transactive control of noncritical loads within a residential community or microgrid can help to alleviate peak-time stress on the distribution system by flattening the aggregate load curve. Treating the load forecaster as a high-fidelity, expensive black-box function, a new algorithm utilizing Bayesian optimization (BO) is proposed to achieve the best solution under uncertainty with minimal computing effort. The proposed BO algorithm manipulates the shape of the load based on transactive signals sent to each home. The thermostatically controlled loads (TCLs) act out of self-interest in response to the given price while maintaining comfort, and the optimizer exploits the thermal energy retention of the homes for the benefit of the community. Simulations confirm consistent neighborhood-level peak power reduction and energy cost savings.
基于交互控制信号贝叶斯优化的住宅小区降峰
居民日常用电总量往往有一个高峰,这给配电系统带来压力,并导致高运营成本。这项工作表明,在住宅社区或微电网内协调非关键负荷的交互控制可以通过使总负荷曲线平坦化来帮助缓解配电系统的高峰时段压力。将负荷预测器视为一个高保真、昂贵的黑盒函数,提出了一种利用贝叶斯优化(BO)的新算法,以最小的计算量获得不确定情况下的最优解。提出的BO算法根据发送到每个家庭的交互信号来操纵负载的形状。恒温控制负荷(tcl)在保持舒适性的同时,根据自身利益对给定价格做出反应,优化者利用房屋的热能保留来造福社区。模拟证实了社区水平的峰值功率降低和能源成本节约的一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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