利用模糊逻辑和人工神经网络预测太阳能发电量

Z. P. Ncane, A. Saha
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引用次数: 8

摘要

本文采用模糊逻辑和人工神经网络方法对太阳能光伏电站输出功率进行了预测研究。在高性能计算机处理器的辅助下,模糊逻辑能够对太阳能发电厂的输出进行可接受的准确预测,并使系统能够灵活地考虑自然环境。人工神经网络(ANN)技术具有机器学习和模式识别能力;并且被广泛用于预测目的。本文研究的主要目的是对太阳能光伏电站进行生产预测,这将有助于有效的负荷管理和研究向配电网供电的系统的可靠性。应用模糊逻辑方法成功地模拟了太阳能光伏电站,得到的平均百分比误差为1.9%。同样,对于人工神经网络方法,得到的平均误差为2.6%。本研究采用MATLAB进行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting Solar Power Generation Using Fuzzy Logic and Artificial Neural Network
This paper presents the study done on forecasting solar photovoltaic (PV) plant output power using fuzzy logic and artificial neural network methods. Fuzzy logic aided by high performance computer processors enables acceptable accuracy predictions of solar plants outputs and enables system flexibility to consider natural circumstances. Artificial neural network (ANN) technique has capabilities of machine learning and pattern recognition; and is widely used for forecasting purposes. The main objective of the study presented in this paper is to conduct production forecasting of a solar PV plant which will be useful in effective load management and in studying the reliability of the system supplying electrical power to a distribution network. The fuzzy logic method used to mimic the solar PV plant was successfully developed as the average percentage error obtained is 1.9 %. Similarly for ANN method the obtained average error was 2.6 %. The study has been conducted using MATLAB.
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