Optihybrid: a modified firebug swarm optimization algorithm for optimal sizing of hybrid renewable power system

Hoda Abd El-Sattar, Salah Kamel, Fatma A. Hashim, Sahar F. Sabbeh
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Abstract

In areas where conventional energy sources are unavailable, alternative energy technologies play a crucial role in generating electricity. These technologies offer various benefits, such as reliable energy supply, environmental sustainability, and employment opportunities in rural regions. This study focuses on the development of a novel optimization algorithm called the modified firebug swarm algorithm (mFSO). Its objective is to determine the optimal size of an integrated renewable power system for supplying electricity to a specific remote site in Dehiba town, located in the eastern province of Tataouine, Tunisia. The proposed configuration for the standalone hybrid system involves PV/biomass/battery, and three objective functions are considered: minimizing the total energy cost (COE), reducing the loss of power supply probability (LPSP), and managing excess energy (EXC). The effectiveness of the modified algorithm is evaluated using various tests, including the Wilcoxon test, boxplot analysis, and the ten benchmark functions of the CEC2020 benchmark. Comparative analysis between the mFSO and widely used algorithms like the original Firebug Swarm Optimization (FSO), Slime Mold Algorithm (SMA), and Seagull Optimization Algorithm (SOA) demonstrates that the proposed mFSO technique is efficient and effective in solving the design problem, surpassing other optimization algorithms.

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Optihybrid:用于优化可再生能源混合发电系统规模的改进型火虫群优化算法
在缺乏传统能源的地区,替代能源技术在发电方面发挥着至关重要的作用。这些技术可为农村地区带来各种好处,如可靠的能源供应、环境可持续性和就业机会。本研究的重点是开发一种名为 "改良火虫群算法(mFSO)"的新型优化算法。其目标是确定一个综合可再生能源发电系统的最佳规模,以便为突尼斯东部塔塔瓦内省 Dehiba 镇的一个特定偏远地点供电。建议的独立混合系统配置包括光伏/生物质/电池,并考虑了三个目标函数:最小化总能源成本(COE)、降低供电损失概率(LPSP)和管理过剩能源(EXC)。通过各种测试,包括 Wilcoxon 检验、方框图分析和 CEC2020 基准的十个基准函数,对改进算法的有效性进行了评估。mFSO 与广泛使用的算法(如原始 Firebug Swarm Optimization(FSO)、Slime Mold Algorithm(SMA)和 Seagull Optimization Algorithm(SOA))之间的比较分析表明,所提出的 mFSO 技术在解决设计问题方面效率高、效果好,超过了其他优化算法。
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