利用光伏系统实际数据,设计了一种基于人工神经网络的智能MPPT

Sadeq D. Al-Majidi, M. Abbod, H. Al-Raweshidy
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引用次数: 16

摘要

最大功率点跟踪(MPPT)方法是提高光伏阵列发电功率的基本方法。人工神经网络(ANN)具有振荡小、响应快等优点,是一种具有较好应用前景的方法。然而,准确的训练数据是设计优化的ANN-MPPT技术的一大挑战。本文提出了一种基于大量实验训练数据的ANN-MPPT技术,避免了系统训练误差大的问题。这些数据是在一年内从安装在英国伦敦布鲁内尔大学的光伏系统的实验测试中收集的。选取天气条件下的辐照度和温度作为输入,光伏系统在MPP处的可用功率作为输出。为了评估性能,使用MATLAB/Simulink模型对光伏系统进行了扰动和观察(P&O)和提出的ANN-MPPT方法进行了仿真。结果表明,该方法能够准确地跟踪最优最大功率点,避免了漂移现象,同时与P&O-MPPT方法相比,获得了更高的输出功率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design of an intelligent MPPT based on ANN using a real photovoltaic system data
Maximum power point tracking (MPPT) methods are a fundamental part in photovoltaic (PV) system design for increasing the generated power of a PV array. Whilst several methods have been introduced, the artificial neural network (ANN) is an attractive method for MPPT due to its less oscillation and fast response. However, accurate training data is a big challenge to design an optimized ANN-MPPT technique. In this paper, an ANN-MPPT technique based on a large experimental training data is proposed to avoid the system from having a high training error. Those data are collected during one year from experimental tests of a PV system installed at Brunel University, London, United Kingdom. The irradiation and temperature of weather conditions are selected as the input, and the available power at MPP from the PV system as the output of the ANN model. To assess the performance, the Perturb and Observe (P&O) and the proposed ANN-MPPT methods are simulated using a MATLAB/Simulink model for the PV system. The results show that the proposed ANN method accurately tracks the optimal maximum power point and avoids the phenomenon of drift problem, whilst achieving a higher output power when compared with P&O-MPPT method.
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