基于人工神经网络的光伏系统控制器

Ali Hameed Elaal, Assist Prof. Sadiq Muhsin Ihmood
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摘要

在本研究中,系统的研究理论包括利用重要的可再生能源(太阳能),并利用人工智能将该系统与典型的电力负荷(家庭)联系起来。从上世纪末到现在,全球化石燃料价格一直在大幅上涨,这种上涨伴随着库存的日益减少而加剧。因此,将研究人员的注意力转向了非常规能源(新能源和可再生能源)的发电领域。新能源和可再生能源是取之不尽,用之不竭的能源,因为它们依赖于可再生的自然资源。因此在本研究中找到了光伏电池系统与太阳能电池类型的详细说明。数学模型是光伏系统详细研究的重要组成部分。以及通过MATLAB/Simulink研究光伏系统的模型,是一个包含许多可再生系统模型的编程环境,旨在进行仿真和分析。太阳能电池系统由于太阳辐射、温度等外部环境的不稳定性,需要应用(MPPT)算法。因此,将神经网络技术应用到太阳能电池数据的训练中,旨在进行优化过程,获得最大的电力价值。在本研究的最后,研究人员对光伏系统进行了24小时处理负荷适宜电量的运行。凡对系统进行模拟并在24小时内分析结果。仿真结果表明,神经网络MPPT算法的响应速度比经典的P&O算法快。此外,神经网络算法的平均跟踪效率高于经典的P&O算法。
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A Controller for PV System Using Artificial Neural Network
In this research, study theory of system includes the use of important source of renewable energy sources (solar source) and linking this system with an electrical load typical (home) using artificial intelligence. The world is witnessing significant rise in fossil fuel prices since the end of the last century until now, this rise in price increases with the decrease in inventory day after day. Therefore, turned the attention of researchers in the field of power generation to expand in non-conventional energy sources (new and renewable energy sources). New and renewable energy is inexhaustible energy in use because they rely on renewable natural resources. So in this study find detailed explanation about the system of photovoltaic cells system with solar cell types. The mathematical model is an important part of the detailed study for PV systems. As well as study models for photovoltaic systems via the MATLAB/Simulink, is a programming environment contains many models for renewable systems intended to perform simulation and analysis. Solar cells system needs to apply the (MPPT) algorithm due to the instability of external circumstances such as solar radiation and temperature. Therefore, a neural network technology applied to train solar cell data is intended to perform the optimization process and get the greatest value for electric power. At the end of this research, study conducted the operation of PV system for processing load appropriate electricity around the clock. Where the system simulation with the analysis of the results within 24 hours. Simulation results showed that the response of the Neural MPPT algorithm was faster than the classical P&O algorithm. Moreover, the average tracking efficiency of the neural network algorithm was higher than the classical P&O algorithm.
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