Development of a Photovoltaic MPPT Control based on Neural Network

Elhor Abderrahmane, Kerboua Abdelfettah, Boukli Hacen Fouad, O.F. Soares
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引用次数: 2

Abstract

The Maximum Power Point Tracking (MPPT) is an important factor to increase the efficiency of the solar photovoltaic (PV) system. This paper presents a solar PV system containing a solar PV array, a DC/DC boost converter and a load. Different MPPT algorithms have been established with their features. The conventional algorithms (Perturb and Observe, Incremental Conductance and Open Circuit Voltage) show a lot of drawbacks. The major issue is the tracking of the Maximum Power Point (MPP) when environmental conditions change faster. So, a MPPT technique based on Neural Network (NN) was developed and which can enhance the efficiency and gathers the advantages of a lot of techniques. A multi layer neural network with back-propagation algorithm is used in order to have a small Mean Squared Error (MSE). The inputs of NN are irradiance, temperature and the output is the duty cycle that controls the boost converter. Finally, it is discussed the results and made comparison in terms of performance of the different algorithms, covering the overshoot, time response, oscillation and stability.
基于神经网络的光伏MPPT控制系统的研制
最大功率点跟踪(MPPT)是提高太阳能光伏发电系统效率的重要因素。本文介绍了一种太阳能光伏系统,该系统包含太阳能光伏阵列、DC/DC升压变换器和负载。不同的MPPT算法建立了各自的特点。传统的算法(摄动和观察,增量电导和开路电压)显示出许多缺点。主要问题是在环境条件变化较快时跟踪最大功率点(MPP)。因此,一种基于神经网络(NN)的MPPT技术被开发出来,它可以提高效率,并集合了许多技术的优点。为了获得较小的均方误差(MSE),采用了一种带反向传播算法的多层神经网络。神经网络的输入是辐照度、温度,输出是控制升压变换器的占空比。最后对结果进行了讨论,并对不同算法的性能进行了比较,包括超调量、时间响应、振荡和稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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