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A PSO-Optimized Fuzzy Logic Control-Based Charging Method for Individual Household Battery Storage Systems within a Community

机译:基于PSO优化的模糊逻辑控制的社区内单个家用电池存储系统充电方法

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Self-consumption of household photovoltaic (PV) storage systems has become profitable for residential owners under the trends of limited feed-in power and decreasing PV feed-in tariffs. For individual PV-storage systems, the challenge mainly lies in managing surplus generation of battery and grid power flow, ideally without relying on error-prone forecasts for both generation and consumption. Considering the large variation in power profiles of different houses in a neighborhood, the strategy is also supposed to be beneficial and applicable for the entire community. In this study, an adaptable battery charging control strategy is designed in order to obtain minimum costs for houses without any meteorological or load forecasts. Based on fuzzy logic control (FLC), battery state-of-charge (SOC) and the variation of SOC (?SOC) are taken as input variables to dynamically determine output charging power with minimum costs. The proposed FLC-based algorithm benefits from the charging battery as much as possible during the daytime, and meanwhile properly preserves the capacity at midday when there is high possibility of curtailment loss. In addition, due to distinct power profiles in each individual house, input membership functions of FLC are improved by particle swarm optimization (PSO) to achieve better overall performance. A neighborhood with 74 houses in Germany is set up as a scenario for comparison to prior studies. Without forecasts of generation and consumption power, the proposed method leads to minimum costs in 98.6% of houses in the community, and attains the lowest average expenses for a single house each year.
机译:在馈电功率有限和光伏上网电价降低的趋势下,家用光伏(PV)储能系统的自耗已为住宅业主带来了利润。对于单个的光伏存储系统,挑战主要在于管理电池和电网功率流的过剩发电,理想情况下不依赖于容易出错的发电和消耗预测。考虑到附近不同房屋的电力配置差异很大,该策略也应被认为是有益的,并且适用于整个社区。在这项研究中,设计了一种适应性强的电池充电控制策略,以便在没有任何气象或负荷预测的情况下获得房屋的最低成本。基于模糊逻辑控制(FLC),将电池充电状态(SOC)和SOC的变化量(?SOC)作为输入变量,以最小的成本动态确定输出充电功率。所提出的基于FLC的算法在白天尽可能多地从充电电池中受益,同时在出现减少损耗的可能性很高的午间时适当地保留了容量。此外,由于每个单独房屋中的功率分布不同,因此通过粒子群优化(PSO)改进了FLC的输入隶属函数,以实现更好的整体性能。在德国建立了一个拥有74栋房屋的社区,作为与先前研究进行比较的方案。在没有发电量和消费能力的预测的情况下,所提出的方法导致社区中98.6%的房屋的最低成本,并且每年单幢房屋的平均支出最低。

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