Enhancing the output power of solar cell system using artificial intelligence algorithms

Ahmed H. Ali, Raafat A. El-Kammar, Hesham F. A. Hamed, A. Elbaset, Aya Hossam
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Abstract

The main objective of research in the field of solar cell systems is to obtain the maximum output power. In this respect, artificial intelligence (AI) is considered the current icon. Hence, in the present paper perturbation & observation (P&O) and particle swarm optimization (PSO) algorithms were used to achieve the maximum power. Solar irradiance at three different regions of Egypt was measured using a new technique based on Arduino microcontroller. The obtained experimental results of the solar irradiance were inlaid to the MATLAB simulation program to study the performance of the proposed algorithms. Many improvements were carried out in P&O and PSO algorithms to harvest maximum power for long hours daily by a continuous modulation of the duty cycle. The output maximum power and the reaching time of both improved P&O and PSO are better than the traditional one and PV array, which indicates their efficiency in harvesting the maximum power and enhancing the performance of solar cell systems. The reinforcing of the PV system by P&O improved its efficiency by 98.733%, while PSO improved its efficiency by 99.968%.
利用人工智能算法提高太阳能电池系统的输出功率
太阳能电池系统领域研究的主要目标是获得最大输出功率。在这方面,人工智能(AI)被认为是当前的偶像。因此,本文采用了扰动与观测(P&O)和粒子群优化(PSO)算法来获得最大功率。使用基于 Arduino 微控制器的新技术测量了埃及三个不同地区的太阳辐照度。获得的太阳辐照度实验结果被嵌入到 MATLAB 仿真程序中,以研究建议算法的性能。对 P&O 和 PSO 算法进行了许多改进,以便通过持续调节占空比,每天长时间获取最大功率。改进后的 P&O 算法和 PSO 算法的输出最大功率和到达时间均优于传统算法和光伏阵列,这表明它们能有效收集最大功率并提高太阳能电池系统的性能。P&O 对光伏系统的强化提高了 98.733% 的效率,而 PSO 则提高了 99.968% 的效率。
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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