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Maximum Power Point Tracking Using Neural Networks for Grid-Connected Photovoltaic System

机译:使用神经网络的并网光伏系统最大功率点跟踪

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This paper proposes a method of maximum power point tracking (MPPT) using neural networks for grid-connected photovoltaic systems. The system is composed of a boost converter and a single-phase inverter connected to a utility grid. The maximum power point tracking control is based on output from neural networks to control a switch of a boost converter. Back-propagation neural networks is utilized as pattern classifier. Back-propagation neural networks is an example of nonlinear layered feed-forward networks. The single phase inverter uses hysteresis current control which provides current with sinusoidal waveform. Therefore, the system is able to deliver energy with low harmonics and high power factor. MPPT using neural networks are simulated and implemented to evaluate performance. Simulation and experimental results are provided for neural networks and fixed duty ratio under the same atmospheric condition. From the simulation and experimental results, neural networks can deliver more power than the conventional controller.
机译:本文提出了一种利用神经网络进行网格连接的光伏系统的最大功率点跟踪(MPPT)的方法。该系统由升压转换器和连接到实用电网的单相逆变器组成。最大功率点跟踪控制基于来自神经网络的输出来控制升压转换器的开关。后传播神经网络用作图案分类器。背传播神经网络是非线性分层前馈网络的示例。单相逆变器使用滞后电流控制,该电流控制提供具有正弦波形的电流。因此,该系统能够以低谐波和高功率因数提供能量。模拟和实现使用神经网络的MPPT来评估性能。在相同的大气条件下提供了用于神经网络和固定占空比的模拟和实验结果。从仿真和实验结果来看,神经网络可以提供比传统控制器更多的功率。

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