Abstract

The employment of maximum power point tracking techniques in the photovoltaic power systems is well known and even of immense importance. There are various techniques to track the maximum power point reported in several literatures. In such context, there is an increasing interest in developing a more appropriate and effective maximum power point tracking control methodology to ensure that the photovoltaic arrays guarantee as much of their available output power as possible to the load for any temperature and solar radiation levels. In this paper, theoretical details of the work, carried out to develop and implement a maximum power point tracking controller using neural networks for a stand-alone photovoltaic system, are presented. Attention has been also paid to the command of the power converter to achieve maximum power point tracking. Simulations results, using Matlab/Simulink software, presented for this approach under rapid variation of insolation and temperature conditions, confirm the effectiveness of the proposed method both in terms of efficiency and fast response time. Negligible oscillations around the maximum power point and easy implementation are the main advantages of the proposed maximum power point tracking (MPPT) control method.

Highlights

  • In the last few decades, harnessing solar energy found its high usefulness as a way to solve the problems of theHow to cite this paper: Mahjoub Essefi, R., Souissi, M. and Abdallah, H.H. (2014) Maximum Power Point Tracking Control Using Neural Networks for Stand-Alone Photovoltaic Systems

  • The Maximum Power Point Tracking (MPPT) is a controlled DC/DC converter inserted between the PV source and the load that monitors the photovoltaic array to operate at its maximum power point (MPP) depending on the load state, PV array generation, PV cell temperature and solar radiation variations [5]

  • Intelligent methods as fuzzy logic and artificial neural networks are being adopted for photovoltaic applications, mainly because of their flexibility, symbolic reasoning and explanation capabilities that are useful to deal with strong nonlinearities and complex systems [6]

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Summary

Introduction

In the last few decades, harnessing solar energy found its high usefulness as a way to solve the problems of theHow to cite this paper: Mahjoub Essefi, R., Souissi, M. and Abdallah, H.H. (2014) Maximum Power Point Tracking Control Using Neural Networks for Stand-Alone Photovoltaic Systems. The MPPT is a controlled DC/DC converter inserted between the PV source and the load that monitors the photovoltaic array to operate at its maximum power point (MPP) depending on the load state, PV array generation, PV cell temperature and solar radiation variations [5]. In such a direction, previous researches have focused on different MPPT techniques and algorithms.

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