Spatiotemporal Optimization of Grid-Connected Energy Storage to Maximize Economic Benefits

Atri Bera, Saleh S Almasabi, J. Mitra, B. Chalamala, R. Byrne
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引用次数: 2

Abstract

This paper proposes a spatiotemporal optimization strategy for an energy storage system (ESS) connected to the power grid, with an objective of maximizing its economic benefits. This optimization framework includes both spatial and temporal aspects by optimizing the location of the ESS in the network and the annual dispatch strategy, respectively. Energy arbitrage and frequency regulation are chosen to be the revenue streams as they have proved to be the most profitable applications for grid-connected storage systems. A lithium-ion battery is used for this study due to its widespread popularity, which arises from its high energy density, high efficiency, and decreasing costs. The degradation cost of the battery is taken into account while calculating the revenue to generate a more realistic estimate. Mixed-integer nonlinear programming is utilized in solving the spatiotemporal optimization problem. Results for the proposed method are validated using the IEEE Reliability Test System along with PJM Interconnection historical data.
并网储能经济效益最大化的时空优化研究
以经济效益最大化为目标,提出了一种并网储能系统的时空优化策略。该优化框架包括空间和时间两个方面,分别通过优化ESS在网络中的位置和年度调度策略。选择能源套利和频率调节作为收入流,因为它们已被证明是并网存储系统最有利可图的应用。由于锂离子电池能量密度高、效率高、成本低,因此被广泛使用。在计算收益时考虑了电池的退化成本,以产生更现实的估计。混合整数非线性规划用于求解时空优化问题。采用IEEE可靠性测试系统和PJM互连历史数据验证了该方法的有效性。
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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