负载分布驱动下电池储能系统的优化规模

P. De Falco, F. Mottola, D. Proto
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引用次数: 1

摘要

电能的最佳开发和管理通过存储能量的可能性。电池储能系统为优化电能管理和利用微电网中的可再生能源提供了新的、重要的潜力。然而,电池储能系统的规模是一个关键点,因为它们的总成本仍然昂贵。由于影响电池尺寸的随机性来源很多,研究人员已经在确定性和概率框架中解决了这个问题。原则上,概率分级是计算密集型的,因为它需要运行多个场景,以使留给决策者的大小范围个性化。本文提供了一种考虑配电网负荷分布随机性的电池储能系统分级方法,该方法基于集群负荷分布来考虑各种场景,从而减少了分级过程的计算强度。特别是,负载概况通过基于k-means算法的专用方法聚类,旨在重现具有相似特征的天数组。集群负载概况用作分级方法的输入。基于实际数据的数值实验表明了该方法的有效性。
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Optimal Sizing of Battery Energy Storage Systems Driven by Clustered Load Profiles
The optimal exploitation and management of electrical energy passes through the possibility to store energy. Battery energy storage systems offer new, important potentialities to optimally manage electrical energy and to exploit renewables in a microgrid. Sizing the battery energy storage systems is however a critical point, as their total costs are still expensive. Researchers have tackled this aspect in deterministic and probabilistic frameworks due to the many sources of randomness that influence the battery sizing. Probabilistic sizing is, in principle, computationally intensive, as it requires several scenarios to be run to individuate the size ranges left to the decision maker. This paper provides a methodology for sizing battery energy storage systems, considering the randomness of load profiles in distribution networks, where scenarios are considered based on clustered load profiles which make the sizing procedure less computationally intensive. Particularly, load profiles are clustered through a dedicated methodology based on k-means algorithm, aiming at reproducing groups of days that share similar features. The clustered load profiles are used as inputs of the sizing methodology. Numerical experiments based on actual data show the effectiveness of the proposal.
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