Enhanced Bayesian Based MPPT Controller for PV Systems

F. Keyrouz
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引用次数: 33

Abstract

We tackle the problem of a photovoltaic (PV) controller for maximum power point tracking (MPPT) under varying insolation and shading conditions. A general-purpose adaptive maximum power controller is tailored to maintain operation of the PV system at the maximum power point while constantly avoiding local maxima for changing environmental conditions. While a variety of conventional MPPT algorithms have been designed for ideal operating situations, very few were able to deliver true maximum power under abrupt changes in sun shading. Under these dynamic changes, most MPPT techniques fail to rapidly locate the global maximum power point and are stuck at global maxima, leading therefore to inconsistent power generation and low system efficiency. In this paper, we apply Bayesian fusion, a machine learning technique otherwise used for unsupervised classification, curve detection, and image segmentation, in order to achieve global MPPT in record time. Simulation results validated with real-life experimental studies demonstrated the ameliorations of the proposed technique compared to state-of-the-art methods. Using this algorithm, the total output power of the solar system is maximized while minimizing the steady-state oscillations and the tracking time.
基于增强贝叶斯的光伏系统MPPT控制器
我们解决了光伏(PV)控制器在不同日照和遮阳条件下最大功率点跟踪(MPPT)的问题。针对不断变化的环境条件,设计了一种通用自适应最大功率控制器,使光伏系统保持在最大功率点运行,同时不断避免局部极值。虽然各种传统的MPPT算法都是为理想的操作情况而设计的,但很少有算法能够在遮阳突然变化的情况下提供真正的最大功率。在这种动态变化下,大多数MPPT技术无法快速定位到全局最大功率点,停留在全局最大功率点,导致发电不稳定,系统效率低下。在本文中,我们应用贝叶斯融合,这是一种机器学习技术,用于无监督分类,曲线检测和图像分割,以便在创纪录的时间内实现全局MPPT。仿真结果验证了现实生活中的实验研究表明,与最先进的方法相比,所提出的技术有所改进。该算法使系统的总输出功率最大化,同时使系统的稳态振荡和跟踪时间最小化。
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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