An Effective Control Approach of Hybrid Energy Storage System Based on FLC/Grey Wolf Optimisation

V. Prasanna, G. Ravi
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Abstract

In the modern era, the integration of renewable energy sources (RES) has bolstered the autonomy of urban energy infrastructures, reducing reliance on distant sources and grids. Batteries serve as a vital bridge between power supply and fluctuating load demands within RES systems. However, the unpredictable nature of RES behavior and varying load requirements often subject batteries to repeated deep cycles and irregular charging patterns. These cycles diminish the battery’s lifespan and escalate replacement costs. This study presents an innovative control strategy for a Solar-Wind model featuring a Battery-Supercapacitor Hybrid Energy Storage System. The objective is to prolong the battery’s operational lifespan by mitigating intermittent strain and high current demands. In contrast to conventional methods, the proposed control approach incorporates a Low-Pass Filter (LPF) and a Fuzzy Logic Controller (FLC). Firstly, the LPF minimizes the oscillations in battery consumption. Simultaneously, the FLC optimizes the high current demand on the battery while vigilantly monitoring the supercapacitor’s charge levels. Moreover, Grey Wolf Optimization (GWO) is employed to fine-tune the FLC’s membership functions, ensuring optimal peak current attenuation in batteries. The effectiveness of the proposed model is benchmarked against standard control techniques, namely Rule- Based Controller and Filtration-Based Controller. Comparative analysis reveals that the proposed method substantially reduces peak current and high power requirements of the battery. Consequently, this enhances the utilization of the supercapacitor, significantly augmenting the battery’s operational life. The results demonstrate a remarkable improvement over conventional systems, emphasizing the potential of this approach in optimizing energy storage systems for sustainable, long-term performance.
基于 FLC/Grey Wolf 优化的混合储能系统有效控制方法
在现代社会,可再生能源(RES)的整合增强了城市能源基础设施的自主性,减少了对遥远能源和电网的依赖。电池是可再生能源系统中电力供应与波动负载需求之间的重要桥梁。然而,可再生能源行为的不可预测性和不同的负载需求往往会使电池承受反复的深度循环和不规则的充电模式。这些循环会缩短电池的使用寿命并增加更换成本。本研究针对采用电池-超级电容器混合储能系统的太阳能-风能模型提出了一种创新控制策略。其目的是通过缓解间歇性应变和高电流需求来延长电池的使用寿命。与传统方法相比,所提出的控制方法结合了低通滤波器(LPF)和模糊逻辑控制器(FLC)。首先,低通滤波器将电池消耗的振荡降至最低。同时,FLC 在监控超级电容器充电水平的同时,还能优化电池的高电流需求。此外,还采用灰狼优化(GWO)技术对 FLC 的成员函数进行微调,确保电池中的峰值电流衰减达到最佳状态。根据标准控制技术,即基于规则的控制器和基于过滤的控制器,对所提出模型的有效性进行了基准测试。对比分析表明,所提出的方法大大降低了电池的峰值电流和高功率要求。因此,这提高了超级电容器的利用率,大大延长了电池的使用寿命。结果表明,与传统系统相比,超级电容器的性能有了明显改善,突出了这种方法在优化储能系统以实现可持续的长期性能方面的潜力。
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