Novel Scheduling Methodology for Battery Wear Function Considering DoD-SoC Level

M. Seo, Jeongju Park, Hyeong-Ki Son, Sekyung Han
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Abstract

Energy storage-based applications including Vehicle-to-grid (V2G) service are highly dependent on an accurate battery degradation model. An appropriate wear model contributes to reducing the capacity loss for energy storage scheduling. In this work, the proposed model fully adopts battery wear according to depth of discharge (DoD) for each state-of-charge (SoC) level as a multi-objective function. This model is formulated with mixed-integer linear programming to derive an optimal solution without sacrificing other objectives. In addition, this model maintains low complexity without being affected by the number of EVs by clustering technique-based EV scheduling. The proposed methodology was verified through a case study that battery degradation was considered as a multi-objective function. In addition, it was possible to reduce the battery capacity decrease by more than 30% in a simulation for one month.
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考虑DoD-SoC水平的新型电池磨损函数调度方法
包括车辆到电网(V2G)服务在内的基于储能的应用高度依赖于精确的电池退化模型。适当的磨损模型有助于减少储能调度中的容量损失。在本工作中,所提出的模型充分采用了每个荷电状态(SoC)水平下根据放电深度(DoD)的电池磨损作为多目标函数。该模型采用混合整数线性规划的方法,在不牺牲其他目标的情况下求出最优解。此外,通过基于聚类技术的电动汽车调度,该模型在不受电动汽车数量影响的情况下保持了较低的复杂度。通过一个案例研究验证了所提出的方法将电池退化视为一个多目标函数。此外,在一个月的模拟中,可以将电池容量减少30%以上。
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