论文标题

借用锂离子电池的健康状况有限的最佳功率流的框架

A Framework for Health-informed RUL-constrained Optimal Power Flow with Li-ion Batteries

论文作者

Xie, Jiahang, Weng, Yu, Nguyen, Hung D.

论文摘要

电池储能系统在网格连接的应用中被广泛采用,以减轻间歇性可再生代人的影响并增强电力系统的弹性。电池在服务时间内的降解是部署的主要关注点之一,严重影响了长期的一生。除了环境因素之外,电池的内在特性取决于日常工作条件。因此,为了满足所需的剩余使用寿命,可以最佳地根据电池的当前状态参与日常运行,成为一种实用且苛刻的需求。为了解决这个问题,本文提出了一个具有健康的规则受限的最佳功率流框架,以表征相应的最佳可行操作空间。如果电池的工作条件局限在此可行域内,则可以实现目标的服务寿命。然后构建等效框约束,以提高计算效率,以解决优化问题。在此框架中,引入了基于蒙特卡洛的数据驱动方法和代表电池当前状态的健康指标(HI)。 IEEE 39-BUS系统说明了所提出的方法的性能。

Battery energy storage systems are widely adopted in grid-connected applications to mitigate the impact of intermittent renewable generations and enhance power system resiliency. Degradation of the battery during its service time is one of the major concerns in the deployment that strongly affects the long-term lifetime. Apart from environmental factors, this intrinsic property of a battery depends on the daily operating conditions. Thus, optimally engaging the daily operation of the battery based on its current status in order to meet the required remaining useful life becomes a practical and demanding need. To address this issue, this paper proposes a health-informed RUL-constrained optimal power flow framework to characterize the corresponding optimal feasible operation space. The targeted service lifespan is achieved if the battery's working condition is confined within this feasible domain. Equivalent box constraints are then constructed for better computational efficiency in solving the optimization problem. In this framework, a Monte Carlo-based data-driven approach and a health indicator (HI) representing the battery's current states are introduced. The performance of the proposed method is illustrated with the IEEE 39-bus system.

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