部分遮阳条件下基于差分平板和粒子群算法的光伏最大功率点跟踪控制

Duo Li, Xu Wang, Juanjuan Wang, Zhenxiong Zhou
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引用次数: 0

摘要

最大功率点跟踪(MPPT)技术的应用大大提高了光伏组件的转换效率。然而,光伏阵列中部分阴影的存在可能导致多峰输出曲线,传统的MPPT方法由于落入局部最大功率点而难以跟踪。提出了一种基于差分平面控制(DFBC)和自适应粒子群优化(APSO)算法相结合的MPPT控制算法。将PSO输出值作为差分平面的前馈反馈输入,利用二阶控制器跟踪参考平面轨迹,通过差分平面控制实现全局MPPT。该算法克服了粒子群算法初始化粒子位置的随机性和存在的控制滞后误判所引起的系统振荡。仿真和实验结果表明,该算法既解决了传统MPPT算法无法找到全局最大功率点的问题,又解决了传统粒子群算法随机性大、收敛速度慢、易产生大振荡的问题。该算法大大提高了跟踪精度、跟踪速度和响应速度,实现了对外界变化的快速准确响应,减少了能量损失,提高了系统的动态跟踪性能。
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Differential flat & PSO based photovoltaic maximum power point tracking control under partial shading condition
The use of maximum power point tracking (MPPT) technology has significantly increased the conversion efficiency of PV modules. However, the presence of partial shading in PV arrays can lead to multi-peaked output curves, which traditional MPPT methods struggle to track due to falling into local maximum power points. The paper proposes a MPPT control algorithm based on the combination of differential flat control (DFBC) and adaptive particle swarm optimization (APSO) algorithm. The PSO output value is used as the feed-forward feedback input of differential flat, and a second-order controller is used to track the reference flat trajectory, achieving global MPPT through differential flat control. The algorithm can overcome the system oscillation caused by the randomness of the PSO algorithm with the initialized particle position and the existence of control lag misjudgment. Simulation and experimental results show that the algorithm not only solves the problem that the traditional MPPT algorithm cannot find the global maximum power point, but also solves the problems that the traditional particle swarm algorithm has large randomness, slow convergence speed, and easy to produce large oscillations. The algorithm has greatly improved the tracking accuracy, tracking speed and response speed, realizing fast and accurate response to external changes, reducing energy loss, and improving the dynamic tracking performance of the system.
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