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Solar Energy Prediction for Malaysia Using Artificial Neural Networks

机译:马来西亚利用人工神经网络的太阳能预测

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摘要

This paper presents a solar energy prediction method using artificial neural networks (ANNs). An ANN predicts a clearness index that is used to calculate global and diffuse solar irradiations. The ANN model is based on the feed forward multilayer perception model with four inputs and one output. The inputs are latitude, longitude, day number, and sunshine ratio; the output is the clearness index. Data from 28 weather stations were used in this research, and 23 stations were used to train the network, while 5 stations were used to test the network. In addition, the measured solar irradiations from the sites were used to derive an equation to calculate the diffused solar irradiation, a function of the global solar irradiation and the clearness index. The proposed equation has reduced the mean absolute percentage error (MAPE) in estimating the diffused solar irradiation compared with the conventional equation. Based on the results, the average MAPE, mean bias error and root mean square error for the predicted global solar irradiation are 5.92%, 1.46%, and 7.96%. The MAPE in estimating the diffused solar irradiation is 9.8%. A comparison with previous work was done, and the proposed approach was found to be more efficient and accurate than previous methods.
机译:本文介绍了使用人工神经网络(ANNS)的太阳能预测方法。 ANN预测用于计算全球和漫反射太阳照射的清晰度指数。 ANN模型基于具有四个输入和一个输出的前馈多层感知模型。输入是纬度,经度,日数和阳光比率;输出是透明度索引。在本研究中使用了28个气象站的数据,并使用23个站培训网络,而5站用于测试网络。此外,使用来自位点的测量太阳照射来得出等式以计算扩散太阳照射,全局太阳照射的函数和暗度指数。与常规方程相比,所提出的等式降低了估计扩散太阳辐射的平均绝对百分比误差(MAPE)。基于结果,预测全球太阳能辐照的平均MAPE,平均偏置误差和根均方误差为5.92%,1.46%和7.96%。估计扩散太阳辐射的MAPE为9.8%。与以前的工作进行了比较,发现所提出的方法比以前的方法更有效和准确。

著录项

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  • 作者单位

    Department of Electrical Electronic &

    System Engineering Faculty of Engineering &

    Built Environment National University of Malaysia 43600 Bangi Selangor Malaysia;

    Department of Electrical Electronic &

    System Engineering Faculty of Engineering &

    Built Environment National University of Malaysia 43600 Bangi Selangor Malaysia;

    Solar Energy Research Institute University Kebangsaan Malaysia 43600 Bangi Selangor Malaysia;

    Department of Electrical Engineering Engineering Faculty An-Najah National University Nablus 97300 Palestine;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 物理化学计量;
  • 关键词

  • 入库时间 2022-08-20 02:21:19

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