An ANN-INC MPPT Strategy for Photovoltaic System

Jiasheng Hu, M. Dong, M. Shehu
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引用次数: 1

Abstract

Maximum power point tracking (MPPT) technology is widely used to achieve high-efficiency output of photovoltaic system under the changing irradiation and temperature conditions. To improve the efficiency of the photovoltaic system, a MPPT control strategy based on neural network and incremental conductance (ANN-INC) is proposed in this paper. In ANN-INC, the output of the trained neural network is transferred to the INC part as the initial duty cycle, which makes the initial duty cycle have a small gap with the duty cycle when the photovoltaic system works at MPP, then the INC part can select a small step size to make the output of the photovoltaic system closer to expected output. The strategy has simple structure, fast dynamic response speed, small steady-state power oscillations and high efficiency. The strategy also performs well when the irradiation changes rapidly. The superiority of the strategy is verified in Matlab / Simulink.
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光伏系统的ANN-INC MPPT策略
最大功率点跟踪(MPPT)技术被广泛应用于光伏系统在不断变化的辐照和温度条件下实现高效输出。为了提高光伏发电系统的效率,提出了一种基于神经网络和增量电导(ANN-INC)的MPPT控制策略。在ANN-INC中,将训练好的神经网络的输出作为初始占空比传递给INC部分,使得光伏系统工作在MPP时,初始占空比与占空比的间隙较小,INC部分可以选择较小的步长,使光伏系统的输出更接近预期输出。该策略结构简单,动态响应速度快,稳态功率振荡小,效率高。该策略在辐照量快速变化时也有良好的效果。在Matlab / Simulink中验证了该策略的优越性。
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