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A Hybrid Maximum Power Point Tracking Approach for Photovoltaic Systems under Partial Shading Conditions Using a Modified Genetic Algorithm and the Firefly Algorithm

机译:改进的遗传算法和萤火虫算法在部分遮蔽条件下的光伏系统混合最大功率点跟踪方法

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This paper proposes a modified maximum power point tracking (MPPT) algorithm for photovoltaic systems under rapidly changing partial shading conditions (PSCs). The proposed algorithm integrates a genetic algorithm (GA) and the firefly algorithm (FA) and further improves its calculation process via a differential evolution (DE) algorithm. The conventional GA is not advisable for MPPT because of its complicated calculations and low accuracy under PSCs. In this study, we simplified the GA calculations with the integration of the DE mutation process and FA attractive process. Results from both the simulation and evaluation verify that the proposed algorithm provides rapid response time and high accuracy due to the simplified processing. For instance, evaluation results demonstrate that when compared to the conventional GA, the execution time and tracking accuracy of the proposed algorithm can be, respectively, improved around 69.4% and 4.16%. In addition, in comparison to FA, the tracking speed and tracking accuracy of the proposed algorithm can be improved around 42.9% and 1.85%, respectively. Consequently, the major improvement of the proposed method when evaluated against the conventional GA and FA is tracking speed. Moreover, this research provides a framework to integrate multiple nature-inspired algorithms for MPPT. Furthermore, the proposed method is adaptable to different types of solar panels and different system formats with specifically designed equations, the advantages of which are rapid tracking speed with high accuracy under PSCs.
机译:针对快速变化的局部阴影条件(PSC),本文提出了一种改进的光伏系统最大功率点跟踪(MPPT)算法。该算法融合了遗传算法(GA)和萤火虫算法(FA),并通过差分进化(DE)算法进一步改进了其计算过程。对于MPPT,不建议使用常规GA,因为它计算复杂且在PSC下精度较低。在这项研究中,我们通过整合DE突变过程和FA吸引过程简化了GA计算。仿真和评估结果均证明,该算法简化了处理过程,具有响应速度快,精度高的优点。例如,评估结果表明,与常规GA相比,该算法的执行时间和跟踪精度可以分别提高约69.4%和4.16%。另外,与FA相比,该算法的跟踪速度和跟踪精度分别提高了42.9%和1.85%。因此,与常规GA和FA相比,该方法的主要改进是跟踪速度。此外,这项研究提供了一个框架,可以将多种自然启发式算法集成到MPPT中。此外,所提出的方法适用于不同类型的太阳能电池板和具有特定设计公式的不同系统格式,其优点是在PSC下具有高精度的快速跟踪速度。

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