Energy loss minimization through peak shaving using energy storage

Vaiju Kalkhambkar, Rajesh Kumar, Rohit Bhakar
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引用次数: 49

Abstract

This paper presents an optimal placement methodology of energy storage to improve energy loss minimization through peak shaving in the presence of renewable distributed generation. Storage sizing is modelled by considering the load profile and desired peak shaving. This storage is suitably divided into multiple storage units and optimally allocated at multiple sites with suitable charge discharge strategy. Thus the peak shaving for maximum loss reduction is explored here. Renewable distributed generation (RDG) is modelled based on the seasonal variations of renewable resources e.g., solar or wind and these RDGs are placed at suitable locations. A high-performance Grey Wolf Optimization (GWO) algorithm is applied to the proposed methodology. The results are compared with the well-known genetic algorithm. The proposed methodology is illustrated by various case studies on a 34-bus test system. Significant loss minimization is obtained by optimal location of multiple energy storage units through peak shaving.

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通过使用储能调峰使能量损失最小化
本文提出了一种通过可再生分布式发电调峰实现能量损失最小化的储能优化配置方法。通过考虑负载分布和期望的调峰来建模存储规模。该存储被适当地划分为多个存储单元,并以合适的充放电策略在多个站点进行优化分配。因此,本文探讨了最大限度降低损耗的削峰方法。可再生分布式发电(RDG)是根据可再生资源(如太阳能或风能)的季节性变化进行建模的,这些RDG被放置在合适的位置。该方法采用了一种高性能的灰狼优化算法。结果与著名的遗传算法进行了比较。通过对34总线测试系统的各种案例研究说明了所提出的方法。通过调峰使多个储能单元的最优位置达到最大损失。
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