Wasim Muhammad Shahid, Amjad Muhammad, Abbasi Muhammad Abbas, Bhatti Abdul Rauf, Rasool Akhtar, Raheem Abdur, Ali Ahmed, Khan Baseem
Faculty of Engineering, The Islamia University of Bahawalpur, Bahawalpur, Punjab, 63100, Pakistan.
Department of Electrical Engineering and Technology, Government College University, Faisalabad, Punjab, 38000, Pakistan.
Sci Rep. 2024 Feb 17;14(1):3962. doi: 10.1038/s41598-024-53248-0.
This work presents an energy management scheme (EMS) based on a rule-based grasshopper optimization algorithm (RB-GOA) for a solar-powered battery-ultracapacitor hybrid system. The main objective is to efficiently meet pulsed load (PL) demands and extract maximum energy from the photovoltaic (PV) array. The proposed approach establishes a simple IF-THEN set of rules to define the search space, including PV, battery bank (BB), and ultracapacitor (UC) constraints. GOA then dynamically allocates power shares among PV, BB, and UC to meet PL demand based on these rules and search space. A comprehensive study is conducted to evaluate and compare the performance of the proposed technique with other well-known swarm intelligence techniques (SITs) such as the cuckoo search algorithm (CSA), gray wolf optimization (GWO), and salp swarm algorithm (SSA). Evaluation is carried out for various cases, including PV alone without any energy storage device, variable PV with a constant load, variable PV with PL cases, and PV with maximum power point tracking (MPPT). Comparative analysis shows that the proposed technique outperforms the other SITs in terms of reducing power surges caused by PV power or load transition, oscillation mitigation, and MPP tracking. Specifically, for the variable PV with constant load case, it reduces the power surge by 26%, 22%, and 8% compared to CSA, GWO, and SSA, respectively. It also mitigates oscillations twice as fast as CSA and GWO and more than three times as fast as SSA. Moreover, it reduces the power surge by 9 times compared to CSA and GWO and by 6 times compared to SSA in variable PV with the PL case. Furthermore, its MPP tracking speed is approximately 29% to 61% faster than its counterparts, regardless of weather conditions. The results demonstrate that the proposed EMS is superior to other SITs in keeping a stable output across PL demand, reducing power surges, and minimizing oscillations while maximizing the usage of PV energy.
本文提出了一种基于基于规则的蚱蜢优化算法(RB-GOA)的能量管理方案(EMS),用于太阳能电池-超级电容器混合系统。主要目标是有效满足脉冲负载(PL)需求,并从光伏(PV)阵列中提取最大能量。所提出的方法建立了一组简单的IF-THEN规则来定义搜索空间,包括PV、电池组(BB)和超级电容器(UC)的约束条件。然后,蚱蜢优化算法根据这些规则和搜索空间在PV、BB和UC之间动态分配功率份额,以满足PL需求。进行了一项全面研究,以评估和比较所提出技术与其他著名的群体智能技术(SITs)的性能,如布谷鸟搜索算法(CSA)、灰狼优化算法(GWO)和沙丁鱼群算法(SSA)。针对各种情况进行了评估,包括无任何储能装置的单独PV、恒定负载下的可变PV、PL情况下的可变PV以及具有最大功率点跟踪(MPPT)的PV。对比分析表明,所提出的技术在减少由PV功率或负载转换引起的功率浪涌、减轻振荡和MPP跟踪方面优于其他SITs。具体而言,对于恒定负载下的可变PV情况,与CSA、GWO和SSA相比,它分别将功率浪涌降低了26%、22%和8%。它减轻振荡的速度比CSA和GWO快两倍,比SSA快三倍多。此外,在PL情况下的可变PV中,与CSA和GWO相比,它将功率浪涌降低了9倍,与SSA相比降低了6倍。此外,无论天气条件如何,其MPP跟踪速度比其他同类算法快约29%至61%。结果表明,所提出的EMS在满足PL需求时保持稳定输出、减少功率浪涌、最小化振荡并最大化PV能量利用方面优于其他SITs。