单机光伏系统MPPT改进混合智能控制器设计

Ö. F. Keçecioglu, A. Gani, M. Sekkeli
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引用次数: 3

摘要

光伏(PV)系统提供低功率转换效率。光伏系统受益于最大功率点跟踪(MPPT)控制方法,以最大限度地利用光伏板的可用功率和效率。本文提出了一种改进的混合智能控制器设计方案,用于单机光伏系统的MPPT控制。混合智能控制结构集成了增量电导角(AIC)方法和区间Type-2 Takagi Sugeno Kang模糊控制器(IT2-TSKFLC)。所提出的混合智能控制器在处理不同环境条件下突然变化的不确定性方面具有优越的性能。在Matlab/Simulink中利用实际太阳能光伏电站的日常数据建立了仿真模型,以评估所提出的混合智能控制器的性能。仿真结果表明,与传统的AIC MPPT方法相比,所提出的混合智能控制器在跟踪最大功率点方面具有高度稳定和鲁棒的性能,可以抵抗来自太阳辐照度和面板温度变化等干扰输入的各种不确定性。
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IMPROVED HYBRID INTELLIGENT CONTROLLER DESIGN FOR MPPT OF STAND-ALONE PV SYSTEM
The photovoltaic (PV) systems provide a low power conversion efficiency. PV systems benefit from maximum power point tracking (MPPT) control methods to maximize available power from PV panels and efficiency. The present study proposes an improved hybrid intelligent controller design for the MPPT of stand-alone PV system. The hybrid intelligent control structure is integrated into Angle of Incremental Conductance (AIC) method and Interval Type-2 Takagi Sugeno Kang Fuzzy Logic Controller (IT2-TSKFLC). The proposed hybrid intelligent controller offers a superior performance in terms of dealing with uncertainties of sudden changes under different environment conditions. A simulation model is created in Matlab/Simulink using daily data from a real solar PV plant to evaluate the performance of the proposed hybrid intelligent controller. The simulation findings demonstrated that the proposed hybrid intelligent controller displays a highly stable and robust performance in terms of tracking maximum power point compared to a conventional AIC MPPT method against various uncertainties stemming from disturbance inputs such as solar irradiance and panel temperature variations.
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