基于元启发式算法的光伏太阳能发电鲁棒MPPT跟踪

M. Tebaa, M. Ouassaid, Youssef Ait Ali
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引用次数: 0

摘要

本文的重点是研究和比较MPP跟踪算法的鲁棒性。为了达到最大功率,MPPT控制器通常与光伏板相关联,光伏板控制直流电压和电流。本文采用粒子群优化(PSO)、灰狼优化(GWO)、摄动与观察(P&O)和模糊逻辑控制(FLC)等方法来实现最优功率条件。所研究的光伏系统包含6块244w的光伏板,通过可控DC-DC升压变换器串联馈电电阻负载。为了证明所提出的技术在标准测试条件下以及部分遮光条件下的有效性,在MATLAB/Simulink环境下进行了仿真。仿真结果表明,PSO算法和P&O算法在定位有效MPP时效率更高。此外,当在部分遮阳下工作时,传统的P&O和FLC无法定位真实的MPP。事实上,这些MPPT技术达到了局部功率峰值,而PSO和GWO分别在92 ms和69 ms内成功达到了99%和95%的有效MPP。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust MPPT Tracking for PV Solar Power using Metaheuristic Algorithms
The emphasis of this paper is a study and compare robust of MPP tracking algorithms. In order to achieve the maximum power, a MPPT controller is often associated with photovoltaic panels which controls the DC voltage and current. In this work, Particle Swarm Optimization (PSO), Grey Wolf Optimization (GWO), Perturb and Observe (P&O), and Fuzzy Logic Control (FLC) are used in order to achieve the optimum power conditions. The studied PV system contains six 244 W PV panel implemented in series feeding a resistive load through a controllable DC-DC boost converter. To demonstrate the effectiveness of the proposed techniques under standard test conditions, as well as partial shading conditions, simulations are performed under the MATLAB/Simulink environment. It is revealed in simulation results that the PSO and P&O algorithms are more efficient in locating the effective MPP. Furthermore, when working under partial shading, the traditional P&O and FLC are failing to locate the real MPP. Indeed, those MPPT techniques reach the local power peak, while PSO and GWO reach successfully the effective MPP with an efficiency of 99% and 95% in only 92 ms and 69 ms, respectively.
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