基于机器学习的涡流发生器微通道传热特性预测

IF 0.4 4区 工程技术 Q4 NUCLEAR SCIENCE & TECHNOLOGY
Kerntechnik Pub Date : 2023-01-05 DOI:10.1515/kern-2022-0075
Alişan Gönül, A. B. Çolak, Nurullah Kayaci, Abdulkerim Okbaz, A. S. Dalkılıç
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引用次数: 2

摘要

摘要由于微机电系统的迅速发展,热管理的需求已经改变为关注实际电子器件的紧凑性和高能耗。本研究利用了放置在微通道内的δ小波型涡发生器对根据5种不同几何参数和雷诺数变化而得到的625组数值数据。在文献中建立了四种不同的人工神经网络模型来预测具有创新导向涡发生器的微通道内的传热特性。考虑摩擦系数、努塞尔数和性能评价标准来探讨传热特性。利用Levethenberg-Marquardt训练算法作为训练算法,在每个模型的隐层中确定不同的神经元数。根据目标数据和经验相关性对预测值进行了检验。每个机器学习模型计算的决定系数值均大于0.99。结果表明,所设计的人工神经网络对每个数据集都能提供较高的预测性能,并且与经验关联相比具有更高的预测精度。机器学习模型预测的所有数据都在±3%的偏差范围内收集,而大多数经验相关性估计的数据分散在±20%的偏差范围内。因此,对人工神经网络与经验相关数据的估计性能进行全面评估,可以填补文献中的空白,成为不常见的作品之一。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of heat transfer characteristics in a microchannel with vortex generators by machine learning
Abstract Because of the prompt improvements in Micro-Electro-Mechanical Systems, thermal management necessities have altered paying attention to the compactness and high energy consumption of actual electronic devices in industry. In this study, 625 data sets obtained numerically according to the change of five different geometric parameters and Reynolds numbers for delta winglet type vortex generator pairs placed in a microchannel were utilized. Four dissimilar artificial neural network models were established to predict the heat transfer characteristics in a microchannel with innovatively oriented vortex generators in the literature. Friction factor, Nusselt number, and performance evaluation criteria were considered to explore the heat transfer characteristics. Different neuron numbers were determined in the hidden layer of each of the models in which the Levethenberg–Marquardt training algorithm was benefited as the training algorithm. The predicted values were checked against the target data and empirical correlations. The coefficient of determination values calculated for each machine learning model were found to be above 0.99. According to obtained results, the designed artificial neural networks can provide high prediction performance for each data set and have higher prediction accuracy compared to empirical correlations. All data predicted by machine learning models were collected within the range of ±3% deviation bands, whereas the majority of the estimated data by empirical correlations dispersed within ±20% ones. For that reason, a full evaluation of the estimation performance of artificial neural networks versus empirical correlations data is enabled to fill a gap in the literature as one of the uncommon works.
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来源期刊
Kerntechnik
Kerntechnik 工程技术-核科学技术
CiteScore
0.90
自引率
20.00%
发文量
72
审稿时长
6-12 weeks
期刊介绍: Kerntechnik is an independent journal for nuclear engineering (including design, operation, safety and economics of nuclear power stations, research reactors and simulators), energy systems, radiation (ionizing radiation in industry, medicine and research) and radiological protection (biological effects of ionizing radiation, the system of protection for occupational, medical and public exposures, the assessment of doses, operational protection and safety programs, management of radioactive wastes, decommissioning and regulatory requirements).
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