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Application of artificial neural network for performance prediction of a nanofluid-based direct absorption solar collector

机译:人工神经网络在基于纳米流体的直接吸收式太阳能集热器性能预测中的应用

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Recently, artificial neural network techniques have been widely used for the performance prediction of the renewable energy systems, in which solar collectors are one of the most used mechanical equipment. In this paper, the thermal performance of a nanofluid-based direct absorption solar collector is predicted using an artificial neural network based Multi-Layer Perceptron system. In the experimental part of study, nine collector prototypes with different geometries were tested at different conditions to investigate the effect of the collector depth and length on the collector thermal performance and also, to provide the required data for the network evaluation. The collector depth and length, the working fluid flowrate and concentration and the reduced temperature difference are selected as input parameters of the network to estimate the collector efficiency and Nusselt number. The proposed artificial neural network approach proved that the variation of the collector depth of 5-15mm increases the collector efficiency about 9%, while the collector length has an insignificant effect on the collector efficiency. The Nusselt number of the collector increases considerably by the collector depth and nanofluid flowrate. The proposed network has the best performance for predicting the collector efficiency with nanofluid concentration of 1000 ppm as the input parameter by achieving the MAPE of 1.470%. In the case of predicting Nusselt number, the best performance with MAPE of 2.576% is obtained with collector length of 300 mm. Using the forward stepwise regression selection method, the best combination of input parameters for predicting the Nusselt number is obtained using all input parameters. The consistency of the experimental and predicted results confirms the great ability of artificial neural network to predicting the thermal performance of direct absorption solar collectors.
机译:近年来,人工神经网络技术已广泛用于可再生能源系统的性能预测,其中太阳能收集器是最常用的机械设备之一。在本文中,使用基于人工神经网络的多层感知器系统预测了基于纳米流体的直接吸收式太阳能收集器的热性能。在研究的实验部分,在不同条件下测试了九个具有不同几何形状的集热器原型,以研究集热器深度和长度对集热器热性能的影响,并为网络评估提供所需的数据。选择收集器的深度和长度,工作流体的流量和浓度以及降低的温度差作为网络的输入参数,以估算收集器的效率和Nusselt数。所提出的人工神经网络方法证明,集电极深度的5-15mm的变化使集电极效率提高了约9%,而集电极长度对集电极效率的影响不明显。收集器的努塞尔数随收集器深度和纳米流体流速而显着增加。拟议的网络具有最佳性能,可通过实现1.470%的MAPE来预测以1000 ppm的纳米流体浓度作为输入参数的收集器效率。在预测努塞尔数的情况下,收集器长度为300 mm时,MAPE为2.576%时可获得最佳性能。使用前向逐步回归选择方法,可以使用所有输入参数获得用于预测Nusselt数的最佳输入参数组合。实验和预测结果的一致性证实了人工神经网络预测直接吸收式太阳能集热器的热性能的强大能力。

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