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基于SVR与扰动观察法的光伏阵列多峰值MPPT研究
引用本文:万晓凤,戴雅晨,刘琦,杜利平,胡伟. 基于SVR与扰动观察法的光伏阵列多峰值MPPT研究[J]. 电源技术, 2017, 41(5). DOI: 10.3969/j.issn.1002-087X.2017.05.033
作者姓名:万晓凤  戴雅晨  刘琦  杜利平  胡伟
作者单位:南昌大学信息工程学院自动化系,江西南昌,330031
基金项目:国家国际科技合作专项,国家科技支撑计划,江西省科技支撑计划,江西省科技落地计划
摘    要:当光伏组件出现局部阴影遮挡或光照不均匀时,光伏阵列的输出特性将发生改变,此时的P-U特性曲线将呈现多峰值现象,传统的基于单峰P-U特性曲线的MPPT算法将失效,很难准确地跟踪到全局的最大功率点。为解决该问题,提出了一种基于支持向量机回归与扰动观察法的MPPT融合算法。利用支持向量机的全局优化、泛化性能高的特点,结合扰动观察法的控制简单、容易实现的优点来实现最大功率点的跟踪。仿真结果表明,在真实的光照、温度及光照突变等外界条件下,该新型融合算法与传统的扰动观察法相比,光伏阵列在局部阴影下不会陷于局部峰值,能迅速准确地搜寻到全局最大功率点。

关 键 词:光伏阵列  局部阴影  最大功率点跟踪  支持向量机回归

MPPT study of PV array with multi-peak based on combination of perturbation method and SVR
WAN Xiao-feng,DAI Ya-chen,LIU Qi,DU Li-ping,HU Wei. MPPT study of PV array with multi-peak based on combination of perturbation method and SVR[J]. Chinese Journal of Power Sources, 2017, 41(5). DOI: 10.3969/j.issn.1002-087X.2017.05.033
Authors:WAN Xiao-feng  DAI Ya-chen  LIU Qi  DU Li-ping  HU Wei
Abstract:When PV module is under local shadow or non-uniform illumination conditions,the output characteristics of PV arrays will change.P-U characteristic curve presents multiple peaks;traditional MPPT algorithm based on single peak P-U curve may fail;it is difficult to accurately track the global maximum power point.To address this drawback,a MPPT fusion algorithm based on combination of perturbation method and SVM was put forward.The global optimization and high generalization performance characteristics of support vector machine combining with easy control and realization of perturbation method were used to achieve maximum power point tracking.The simulation results show that in real external conditions,such as light,temperature and illumination mutation,compared with traditional perturbation method,the new fusion algorithm can not be trapped in local peak,and the system can quickly and accurately track the global maximum power point.
Keywords:photovoltaic (PV) array  partial shadow  maximum power point tracking (MPPT)  support vector machine regression (SVR)
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