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Pareto-Efficient Capacity Planning for Residential Photovoltaic Generation and Energy Storage with Demand-Side Load Management

机译:具有需求侧负荷管理的住宅光伏发电和能量存储的帕累托高效容量规划

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Optimal sizing of residential photovoltaic (PV) generation and energy storage (ES) systems is a timely issue since government polices aggressively promote installing renewable energy sources in many countries, and small-sized PV and ES systems have been recently developed for easy use in residential areas. We in this paper investigate the problem of finding the optimal capacities of PV and ES systems in the context of home load management in smart grids. Unlike existing studies on optimal sizing of PV and ES that have been treated as a part of designing hybrid energy systems or polygeneration systems that are stand-alone or connected to the grid with a fixed energy price, our model explicitly considers the varying electricity price that is a result of individual load management of the customers in the market. The problem we have is formulated by a D -day capacity planning problem, the goal of which is to minimize the overall expense paid by each customer for the planning period. The overall expense is the sum of expenses to buy electricity and to install PV and ES during D days. Since each customer wants to minimize his/her own monetary expense, their objectives look conflicting, and we first regard the problem as a multi-objective optimization problem. Additionally, we secondly formulate the problem as a D -day noncooperative game between customers, which can be solved in a distributed manner and, thus, is better fit to the pricing practice in smart grids. In order to have a converging result of the best-response game, we use the so-called proximal point algorithm. With numerical investigation, we find Pareto-efficient trajectories of the problem, and the converged game-theoretic solution is shown to be mostly worse than the Pareto-efficient solutions.
机译:住宅光伏(PV)发电和能量存储(ES)系统的最佳尺寸设计是一个及时的问题,因为政府政策在许多国家大力推广安装可再生能源,并且最近开发了小型PV和ES系统,以便在住宅中轻松使用地区。我们在本文中研究了在智能电网中的家庭负荷管理的背景下寻找最佳光伏和ES系统容量的问题。现有的关于优化PV和ES规模的研究已被视为设计独立的或以固定能源价格连接到电网的混合能源系统或多联产系统的一部分,我们的模型明确考虑了变化的电价,是市场上客户的单独负载管理的结果。我们所遇到的问题是由D天容量计划问题解决的,其目的是使每个客户在计划期间支付的总费用最小化。总费用是D天期间购电以及安装PV和ES的总费用。由于每个客户都希望最大程度地减少自己的货币支出,因此他们的目标看起来很矛盾,因此我们首先将该问题视为多目标优化问题。此外,我们接下来将问题表述为客户之间的D天非合作博弈,可以通过分布式方式解决该问题,因此更适合智能电网中的定价惯例。为了获得最佳响应博弈的收敛结果,我们使用了所谓的近点算法。通过数值研究,我们发现了问题的帕累托有效轨迹,并且收敛的博弈论解显示出比帕累托有效解更差。

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