Performance Characterization of a Solar Cavity Collector Using Artificial Neural Network

IF 0.8 Q3 ENGINEERING, MULTIDISCIPLINARY Modelling and Simulation in Engineering Pub Date : 2022-03-23 DOI:10.1155/2022/7129833
L. Balakrishnan, S. Kolappapillai, S. Muthusamy, K. Abdul, C. E. S. Sreedharan, Sivaraj Murugan
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引用次数: 1

Abstract

It is mandatory to improve the design of the flat plate collector (FPC) used for solar thermal applications to perform well. One way to improve the performance characteristics of FPC is to retain the heat energy available inside the collector. That is, a collector should be capable to give more heat energy to working fluid for a longer duration. It has been implemented in such a way in an entertained and improved model which is known as solar cavity collector (SCC). It consists of 5 numbers of cavities equipped with inlet and outlet tubes. The same having with an enclosure has been constructed and investigated to find the optimal performance. In general, the physical dimensions of the collector influence more the functioning behaviors of SCC. The performance variables that are considered for the present study are the comparison between 5 and 7 numbers of cavities and the effect of aperture entry. Collector angle of tilt, two types of flow mode, and water mass flow rates are the other performance variables that are also considered. The data from the experimentations are trained, tested, and validated with the help of the artificial neural network (ANN). The accuracy of the model is 96%, and the end results revealed the same trend followed by both experimental and ANN simulation results. Also, the variations that occur between ANN and experimented results are ±4%.
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基于人工神经网络的太阳能空腔集热器性能表征
为了提高太阳能热应用的性能,必须改进平板集热器的设计。改善FPC性能特性的一种方法是保留集热器内可用的热能。也就是说,集热器应该能够在更长的时间内为工作流体提供更多的热能。它以这种方式在一个娱乐和改进的模型中被称为太阳能腔集热器(SCC)。它由5个装有进出口管的空腔组成。为了找到最优的性能,我们已经构造并研究了带有外壳的相同结构。总的来说,收集器的物理尺寸对SCC的功能行为影响更大。本研究考虑的性能变量是5和7个空腔数的比较以及孔径进入的影响。集热器倾斜角度、两种流动方式和水质量流量是其他性能变量也被考虑。在人工神经网络(ANN)的帮助下,对实验数据进行训练、测试和验证。模型的准确率为96%,最终结果与实验结果和人工神经网络模拟结果基本一致。此外,人工神经网络与实验结果之间的差异为±4%。
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来源期刊
Modelling and Simulation in Engineering
Modelling and Simulation in Engineering ENGINEERING, MULTIDISCIPLINARY-
CiteScore
2.70
自引率
3.10%
发文量
42
审稿时长
18 weeks
期刊介绍: Modelling and Simulation in Engineering aims at providing a forum for the discussion of formalisms, methodologies and simulation tools that are intended to support the new, broader interpretation of Engineering. Competitive pressures of Global Economy have had a profound effect on the manufacturing in Europe, Japan and the USA with much of the production being outsourced. In this context the traditional interpretation of engineering profession linked to the actual manufacturing needs to be broadened to include the integration of outsourced components and the consideration of logistic, economical and human factors in the design of engineering products and services.
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