A genetic algorithm based power consumption scheduling in smart grid buildings

Eunji Lee, H. Bahn
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引用次数: 13

Abstract

With the recent advances in smart grid technologies as well as the increasing dissemination of smart meters, the electricity usage of every moment can be detected in modern smart building environments. Thus, the utility company adopts different price of electricity at each time slot considering the peak time. This paper presents a new power consumption scheduling algorithm for smart buildings that adopts smart meters and real-time pricing of electricity. The proposed algorithm dynamically changes the power mode of each electric device according to the change of electricity prices. Specifically, we formulate the electricity usage scheduling problem as a real-time task scheduling problem, and show that it is a complex search problem that has an exponential time complexity. The proposed scheme uses an efficient heuristic based on genetic algorithms to cut down the huge searching space and finds a reasonable schedule within a feasible time budget. Experimental results with various building conditions show that the proposed algorithm reduces the electricity charge of a smart building by 25.6% on average and up to 33.4%.
基于遗传算法的智能电网建筑用电调度
随着智能电网技术的进步和智能电表的日益普及,在现代智能建筑环境中,每一刻的用电量都可以被检测到。因此,考虑到高峰时段,电力公司在每个时段采用不同的电价。本文提出了一种基于智能电表和实时电价的智能建筑用电调度算法。该算法根据电价的变化动态改变各用电设备的供电模式。具体来说,我们将用电调度问题表述为一个实时任务调度问题,并表明它是一个具有指数时间复杂度的复杂搜索问题。该方案利用基于遗传算法的高效启发式算法,减少了巨大的搜索空间,在可行的时间预算内找到了合理的调度方案。在不同建筑条件下的实验结果表明,该算法可使智能建筑的电费平均降低25.6%,最高可降低33.4%。
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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