首页> 外文会议>International Conference on Evolutionary Computation Theory and Applications >Design of an Autonomous Intelligent Demand-Side Management System by using Electric Vehicles as Mobile Energy Storage Units by Means of Evolutionary Algorithms
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Design of an Autonomous Intelligent Demand-Side Management System by using Electric Vehicles as Mobile Energy Storage Units by Means of Evolutionary Algorithms

机译:通过进化算法使用电动车辆作为移动能量存储单元的自主智能需求侧管理系统设计

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Evolutionary Algorithms (EAs), or Evolutionary Computation, are powerful algorithms that have been used in a range of challenging real-world problems. In this paper, we are interested in their applicability on a dynamic and complex problem borrowed from Demand-Side Management (DSM) systems, which is a highly popular research area within smart grids. DSM systems aim to help both end-use consumer and utility companies to reduce, for instance, peak loads by means of programs normally implemented by utility companies. In this work, we propose a novel mechanism to design an autonomous intelligent DSM by using (EV) electric vehicles' batteries as mobile energy storage units to partially fulfill the energy demand of dozens of household units. This mechanism uses EAs to automatically search for optimal plans, representing the energy drawn from the EVs' batteries. To test our approach, we used a dynamic scenario where we simulated the consumption of 40 and 80 household units over a period of 30 working days. The results obtained by our proposed approach are highly encouraging: it is able to use the maximum allowed energy that can be taken from each EV for each of the simulated days. Additionally, it uses the most amount of energy whenever it is needed the most (i.e., high-peak periods) resulting into reduction of peak loads.
机译:进化算法(EAS)或进化计算是强大的算法,这些算法已被用于一系列挑战性的现实问题。在本文中,我们对他们对从需求侧管理(DSM)系统借入的动态和复杂问题的适用性,这是智能电网内的一个高度受欢迎的研究区域。 DSM系统旨在帮助最终利用消费者和公用事业公司减少,例如,通过公用事业公司通常实施的程序来减少峰值负荷。在这项工作中,我们提出了一种通过使用(EV)电动汽车电池作为移动能量存储单元设计自主智能DSM的新机制,以部分地满足数十家家用单元的能源需求。这种机制使用EAS自动搜索最佳计划,代表从EVS电池汲取的能量。为了测试我们的方法,我们使用了一个动态场景,在其中我们在30个工作日内模拟了40和80家家庭单位的消费。通过我们提出的方法获得的结果非常令人鼓舞:它能够使用可以从每个EV的最大允许的能量为每个模拟天。另外,每当需要最多(即,高峰期)时,它使用最多的能量,从而导致峰值载荷的减少。

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