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A hybrid approach based on GA and direct search for periodic optimization of finely distributed storage

机译:基于遗传算法和直接搜索的精细分布存储周期性优化混合方法

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High penetration of PV generation is still a challenge predominantly due to the fact that it does not correlate with the normal peak residential demand. In order to address this issue storage is proposed in many cases. Distributed storage also provides an opportunity for customers to control their time of use and energy cost and provides an additional degree of freedom in the optimization of the feeder operation. The rapid expansion of small scale residential PV/storage requires that they become more visible and controllable on the network to avoid any power quality issues and for demand response management. This paper presents an improved algorithm for optimizing the size and cyclic operation of battery storage at a residential level for a grid connected PV/storage system using a hybrid genetic algorithm and pattern search method. The periodic daily or weekly battery state of charge profile is compactly represented by a vector of Fourier coefficients.
机译:光伏发电的高普及率仍然是一个挑战,主要是因为它与正常的高峰住宅需求无关。为了解决这个问题,在许多情况下都建议存储。分布式存储还为客户提供了控制其使用时间和能源成本的机会,并在优化馈线操作方面提供了额外的自由度。小型住宅光伏/存储的快速扩展要求它们在网络上变得更加可见和可控,以避免任何电能质量问题和需求响应管理。本文提出了一种改进的算法,该算法使用混合遗传算法和模式搜索方法优化了并网光伏/存储系统在住宅级别的电池存储的大小和循环运行。每日或每周的定期电池充电状态曲线由傅立叶系数的向量紧凑地表示。

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