MODELLING OF DIFFERENT MOTHER WAVELET TRANSFORMS WITH ARTIFICIAL NEURAL NETWORKS FOR ESTIMATION OF SOLAR RADIATION

Kubra Kaysal, F. Hocaoglu
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Abstract

IIn recent years, the interest in renewable energy sources has increased due to environmental damage and, the increasing costs of fossil fuel resources, whose current reserves have decreased. Solar energy, an environmentally friendly, clean and sustainable energy source, is one of the most important renewable energy sources. The amount of electrical energy produced from solar energy largely depends on the intensity of solar radiation. For this reason, it is essential to know and accurately predict the characteristics of the solar radiation intensity of the relevant region for the healthy sustainability of the existing solar energy systems and the systems planned to be installed. For this purpose, a two-stage forecasting model was developed using the hourly solar radiation intensity of 2014 in a region in Turkey. In the first stage of the study, the second month of each season was selected to investigate the seasonal effects of the region and large, medium, and small-scale events in the study area were examined using discrete wavelet transform. The performances of different mother wavelets in the Artificial Neural Network model with Wavelet Transform (W-ANN) are compared in the second stage. July, the most successful estimation result in seasonal solar radiation intensity was obtained. The most successful RMSE values for January, April, July and October were 65,9471W/m^2, 74,3183 W/m^2, 54,3868 W/m^2, 78,4085 W/m^2 respectively, the coiflet mother wavelet measured it.
不同母小波变换在太阳辐射估计中的人工神经网络建模
近年来,由于环境破坏和化石燃料资源成本的增加,人们对可再生能源的兴趣增加,而化石燃料资源的现有储量已经减少。太阳能是一种环保、清洁、可持续的能源,是最重要的可再生能源之一。太阳能产生的电能在很大程度上取决于太阳辐射的强度。因此,了解和准确预测相关区域的太阳辐射强度特征对于现有太阳能系统和计划安装的太阳能系统的健康可持续性至关重要。为此,利用2014年土耳其某地区的每小时太阳辐射强度,建立了一个两阶段的预报模型。在研究的第一阶段,选择每个季节的第二个月来研究区域的季节效应,并使用离散小波变换对研究区域的大、中、小规模事件进行检测。第二阶段比较了小波变换人工神经网络模型中不同母小波的性能。7月,获得了最成功的季节太阳辐射强度估算结果。coiflet母小波测得1月、4月、7月和10月的RMSE值分别为65、9471W/m^2、74、3183 W/m^2、54、3868 W/m^2、78、4085 W/m^2。
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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