Enhancing the efficiency of polytetrafluoroethylene-modified silica hydrosols coated solar panels by using artificial neural network and response surface methodology

IF 1.6 4区 材料科学 Q4 MATERIALS SCIENCE, MULTIDISCIPLINARY
Kirthika Ramasamy, C. Murugesan, Senthilkumar Thamilkolunthu
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Abstract

Abstract In this article, an attempt was made to improve the efficiency of coated solar panels by using artificial neural networks (ANNs) and response surface methodology (RSM). Using the spray coating technique, the glass surface of the photovoltaic solar panel was coated with silicon dioxide nanoparticles incorporated with polytetrafluoroethylene-modified silica sols. Multilayer perceptron with feed-forward back-propagation algorithm was used to develop ANN models for improving the efficiency of the coated solar panels. Out of the 200 sets of data collected, 75% were used for training and 25% were used for testing. On evaluating the models using performance indicators, a four-input technological parameter model (silicon dioxide nanoparticle quantity, coating thickness, surface temperature and solar insolation) with eight neurons in a single hidden layer combination was observed to be the best. The prediction accuracy indicator values of the ANN model were 0.9612 for the coefficient of determination, 0.1971 for the mean absolute percentage error, 0.2317 for the relative root mean square error and 0.00741 for the mean bias error. Using a central composite design model, empirical relationships were developed between input and output responses. The significance of the developed model was ascertained by using analysis of variance, up to a 95% confidence level. For optimization, the RSM was used, and a high efficiency of 17.1% was predicted for the coated solar panel with optimized factors; it was validated to a very high level of predictability. Using interaction and perturbation plots, a ranking of the parameters was done.
利用人工神经网络和响应面方法提高聚四氟乙烯改性硅溶胶涂层太阳能电池板的效率
摘要本文试图利用人工神经网络和响应面方法来提高涂层太阳能电池板的效率。采用喷涂技术,在光伏太阳能电池板的玻璃表面涂上掺有聚四氟乙烯改性硅溶胶的二氧化硅纳米颗粒。采用多层感知器和前馈-反向传播算法建立了提高涂层太阳能电池板效率的神经网络模型。在收集的200组数据中,75%用于训练,25%用于测试。在使用性能指标评估模型时,观察到在单个隐藏层组合中有八个神经元的四输入技术参数模型(二氧化硅纳米颗粒数量、涂层厚度、表面温度和太阳辐射)是最好的。ANN模型的预测精度指标值为决定系数0.9612,平均绝对百分比误差0.1971,相对均方根误差0.2317,平均偏差误差0.00741。使用中心复合设计模型,在输入和输出响应之间建立了经验关系。通过方差分析确定了所开发模型的显著性,置信度高达95%。对于优化,使用RSM,并且在优化因子下预测涂层太阳能电池板的高效率为17.1%;它被证实具有很高的可预测性。使用相互作用图和扰动图,对参数进行了排序。
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来源期刊
High Temperature Materials and Processes
High Temperature Materials and Processes 工程技术-材料科学:综合
CiteScore
2.50
自引率
0.00%
发文量
42
审稿时长
3.9 months
期刊介绍: High Temperature Materials and Processes offers an international publication forum for new ideas, insights and results related to high-temperature materials and processes in science and technology. The journal publishes original research papers and short communications addressing topics at the forefront of high-temperature materials research including processing of various materials at high temperatures. Occasionally, reviews of a specific topic are included. The journal also publishes special issues featuring ongoing research programs as well as symposia of high-temperature materials and processes, and other related research activities. Emphasis is placed on the multi-disciplinary nature of high-temperature materials and processes for various materials in a variety of states. Such a nature of the journal will help readers who wish to become acquainted with related subjects by obtaining information of various aspects of high-temperature materials research. The increasing spread of information on these subjects will also help to shed light on relevant topics of high-temperature materials and processes outside of readers’ own core specialties.
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