Wei Xiao, Jun Jia, Weidong Zhong, Wenxue Liu, Zhuoyan Wu, Cheng Jiang, Binke Li
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Additionally, it incorporates the multi-colony particle swarm optimization (Mc-PSO) algorithm into the optimization model to minimize aging costs. The aging cost prediction model consists of three functions: predicting health features (HFs) based on the cumulative charge/discharge throughput quantity and operating boundaries, characterizing HFs as comprehensive scores, and calculating aging costs using both comprehensive scores and residual equipment value. Further, we elaborated on the engineering application process for the proposed control strategy. In the simulation scenarios, this strategy prolonged the service life by 14.62%, reduced the overall aging cost by 6.61%, and improved module consistency by 21.98%, compared with the traditional equalized distribution strategy. 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引用次数: 0
摘要
在大容量储能系统中,通常采用均衡功率分配策略对指令进行分解,使群集/模块以相同的功率和持续时间运行。当调度从稳定的单一工况转向复杂的耦合工况时,这种分配策略不可避免地会导致不一致性增加,加速系统老化。本文提出了一种新颖的差异化功率分配策略,包括三个控制变量:旋转状态、控制期内放电深度(DOD)和 C 率(C)的运行边界。建议的策略整合了一个老化成本预测模型,该模型是为了表达这些控制变量与老化成本之间的映射关系而开发的。此外,它还将多群落粒子群优化(Mc-PSO)算法纳入优化模型,以最小化老化成本。老化成本预测模型由三个功能组成:基于累积充放电吞吐量和运行边界预测健康特征(HFs),将健康特征表征为综合分数,以及使用综合分数和设备残值计算老化成本。此外,我们还详细介绍了拟议控制策略的工程应用过程。在模拟场景中,与传统的均衡分配策略相比,该策略延长了 14.62% 的使用寿命,降低了 6.61% 的总体老化成本,并提高了 21.98% 的模块一致性。总之,在特定的应用场景中,所提出的策略在延长使用寿命、降低总体老化成本和提高储能系统效益方面证明是有效的。
A Novel Differentiated Control Strategy for an Energy Storage System That Minimizes Battery Aging Cost Based on Multiple Health Features
In large-capacity energy storage systems, instructions are decomposed typically using an equalized power distribution strategy, where clusters/modules operate at the same power and durations. When dispatching shifts from stable single conditions to intricate coupled conditions, this distribution strategy inevitably results in increased inconsistency and hastened system aging. This paper presents a novel differentiated power distribution strategy comprising three control variables: the rotation status, and the operating boundaries for both depth of discharge (DOD) and C-rates (C) within a control period. The proposed strategy integrates an aging cost prediction model developed to express the mapping relationship between these control variables and aging costs. Additionally, it incorporates the multi-colony particle swarm optimization (Mc-PSO) algorithm into the optimization model to minimize aging costs. The aging cost prediction model consists of three functions: predicting health features (HFs) based on the cumulative charge/discharge throughput quantity and operating boundaries, characterizing HFs as comprehensive scores, and calculating aging costs using both comprehensive scores and residual equipment value. Further, we elaborated on the engineering application process for the proposed control strategy. In the simulation scenarios, this strategy prolonged the service life by 14.62%, reduced the overall aging cost by 6.61%, and improved module consistency by 21.98%, compared with the traditional equalized distribution strategy. In summary, the proposed strategy proves effective in elongating service life, reducing overall aging costs, and increasing the benefit of energy storage systems in particular application scenarios.