An effective control approach of hybrid energy storage system based on moth flame optimization

V. Prasanna, G. Ravi
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Abstract

In modern days, renewable sources increase the independence of urban energy infrastructures from remote sources and grids. In renewable energy systems (RES) systems, batteries are frequently used to close the power gap between the power supply and the load demand. Due to the variable behavior of RES and the fluctuating power requirements of the load, batteries frequently experience repeated deep cycles and uneven charging patterns. The battery's lifespan would be shortened by these actions, and increase the replacement cost. This research provides an effective control method for a solar-wind model with a battery-supercapacitor hybrid energy storage system in order to extend battery’s lives expectancy by lowering intermittent strain and high current need. Unlike traditional techniques, the suggested control scheme includes a low-pass filter (LPF) and a fuzzy logic controller (FLC). To begin, LPF reduces the fluctuating aspects of battery consumption. FLC lowers the battery's high current need while continuously monitoring the supercapacitor's level of charge. The moth flame optimization (MFO) optimizes the FLC's membership functions to get the best peak current attenuation in batteries. The proposed model is compared to standard control procedures namely rule based controller and filtration-based controller. When compared to the conventional system, the suggested method significantly reduces peak current and high power of the battery. Furthermore, when compared to standard control procedures, the suggested solution boosts supercapacitor utilization appreciably.
基于蛾焰优化的混合储能系统有效控制方法
如今,可再生能源提高了城市能源基础设施与远程能源和电网的独立性。在可再生能源系统(RES)中,电池经常被用来弥补电力供应和负载需求之间的功率差距。由于可再生能源的行为多变以及负载对电力的需求波动,电池经常会经历反复的深度循环和不均匀的充电模式。这些行为会缩短电池的使用寿命,并增加更换成本。本研究为带有蓄电池-超级电容器混合储能系统的太阳能-风能模型提供了一种有效的控制方法,以通过降低间歇性应变和大电流需求来延长蓄电池的预期寿命。与传统技术不同,建议的控制方案包括低通滤波器(LPF)和模糊逻辑控制器(FLC)。首先,LPF 可减少电池消耗的波动。FLC 可降低电池的大电流需求,同时持续监控超级电容器的充电水平。蛾焰优化(MFO)对 FLC 的成员函数进行优化,以获得最佳的电池峰值电流衰减效果。所提出的模型与标准控制程序(即基于规则的控制器和基于过滤的控制器)进行了比较。与传统系统相比,建议的方法大大降低了电池的峰值电流和高功率。此外,与标准控制程序相比,建议的解决方案还能显著提高超级电容器的利用率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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