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首页> 外文期刊>Emerging and Selected Topics in Power Electronics, IEEE Journal of >Detection and Identification of Global Maximum Power Point Operation in Solar PV Applications Using a Hybrid ELPSO-P&O Tracking Technique
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Detection and Identification of Global Maximum Power Point Operation in Solar PV Applications Using a Hybrid ELPSO-P&O Tracking Technique

机译:使用混合ELPSO-P&O跟踪技术检测和识别太阳能光伏应用中的全局最大功率点操作

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摘要

Nonhomogeneous irradiation conditions due to environmental changes introduce multiple peaks in nonlinear characteristics. Hence, to operate photovoltaic at the global power point, numerous algorithms have been proposed in the literature. However, due to the insufficient exploitation of control variables, all the maximum power point tracking (MPPT) methods presented in the literature fail to guarantee global maximum power point (GMPP) operation. In this paper, a new detection technology to identify GMPP zones using hybrid enhanced leader particle swarm optimization (ELPSO) assisted by a conventional perturb and observe (Px0026;O) algorithm is proposed. With inherent mutations, ELPSO applied to MPPT excels in exploring global regions at initial stages to determine the global best leader, whereas Px0026;O is reverted back soon after global solution space is detected. The transition from ELPSO to Px0026;O is mathematically verified and allowed only when ELPSO finds the global optimal zone. Adapting this hybrid strategy, the proposed method has produced interesting results under partial shaded conditions. For further validation, the results of the proposed hybrid ELPSO-Px0026;O are compared with the conventional ELPSO and the hybrid PSO-Px0026;O methods. The experimental results along with energy evaluations confirmed the superiority of the ELPSO-Px0026;O method in obtaining the maximum available power under all shaded conditions.
机译:由于环境变化引起的非均匀照射条件引入了非线性特性的多个峰。因此,在全球功率点操作光伏,在文献中已经提出了许多算法。然而,由于对控制变量的开发不足,文献中呈现的所有最大功率点跟踪(MPPT)方法无法保证全局最大功率点(GMPP)操作。在本文中,提出了一种新的检测技术,用于识别使用常规扰动和观察(PX0026; o)算法辅助的混合增强的领导粒子群优化(ELPSO)识别GMPP区的新检测技术。具有固有的突变,ELPSO应用于MPPT Excels,在初始阶段探索全球区域以确定全球最佳领导者,而PX0026; o在检测到全局解决方案空间后立即回复。从ELPSO到PX0026的过渡; o在数学上验证,只有在ELPSO找到全局最优区域时才允许。采用这种混合策略,所提出的方法在部分阴影条件下产生了有趣的结果。为了进一步验证,将提出的杂交ELPSO-PX0026的结果与常规ELPSO和混合PSO-PX0026进行比较; o方法。实验结果以及能量评估证实了ELPSO-PX0026的优越性; o在所有阴影条件下获得最大可用功率的方法。

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