应用机器学习揭示纳米流体作为冷却剂的微观传热机理

IF 3.1 2区 化学 Q2 CHEMISTRY, ANALYTICAL
Gaoyang Li , Haiyi Sun , Dan Han , Shukai Cheng , Guoqi Zhao , Yuting Guo
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引用次数: 0

摘要

纳米流体被认为是优化电子设备热管理的绝佳冷却剂,纳米粒子的形态和表面活性剂的添加会影响纳米流体的热传输性能。由于以往的实验和数值模拟方法存在经济和计算成本高的局限性,因此纳米流体的设计需要更高效的方法。在这项工作中,我们提出了一种新颖的机器学习框架,并结合分子动力学方法对多组分混合纳米流体系统进行建模,探索其深层传热机制。多输入属性点云数据集、双通道采样网络和多纳米尺度优化方案被用来提高机器学习的预测性能。与模拟方法相比,机器学习方法的计算成本缩短了 36000 倍。此外,我们的工作还能使表面活性剂吸附特性的预测准确率达到 90%。此外,算法优化策略可将纳米流体传热性能的预测精度提高 40%。所提出的框架有望缩短纳米流体设计的开发周期。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying machine learning to reveal the microscopic heat transfer mechanism of nanofluids as coolants

Nanofluids are considered as excellent coolants to optimize thermal management of electronic devices, where the nanoparticle morphology and the addition of surfactants can affect the thermal transport performance of nanofluids. Due to the limitations of high economic and computational cost in previous experimental and numerical simulation methods, the design of nanofluids urges for more efficient approaches. In this work, a novel machine learning framework coupled with molecular dynamics methods was proposed to model the multi-component mixing nanofluidic systems and explore the deep heat transfer mechanisms. Multi-input attribute point cloud dataset, dual channel sampling network and multi-nanoscale optimization scheme were used to improve the prediction performance of machine learning. The computational cost of the machine learning method is shortened by 36000 times compared with simulation methods. Moreover, our work can achieve up to 90 % prediction accuracy for surfactant adsorption properties. Furthermore, algorithm optimization strategy can improve the prediction accuracy of nanofluidic heat transfer performance by 40 %. The proposed framework has the potential to shorten the development cycle of nanofluidic design.

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来源期刊
Thermochimica Acta
Thermochimica Acta 化学-分析化学
CiteScore
6.50
自引率
8.60%
发文量
210
审稿时长
40 days
期刊介绍: Thermochimica Acta publishes original research contributions covering all aspects of thermoanalytical and calorimetric methods and their application to experimental chemistry, physics, biology and engineering. The journal aims to span the whole range from fundamental research to practical application. The journal focuses on the research that advances physical and analytical science of thermal phenomena. Therefore, the manuscripts are expected to provide important insights into the thermal phenomena studied or to propose significant improvements of analytical or computational techniques employed in thermal studies. Manuscripts that report the results of routine thermal measurements are not suitable for publication in Thermochimica Acta. The journal particularly welcomes papers from newly emerging areas as well as from the traditional strength areas: - New and improved instrumentation and methods - Thermal properties and behavior of materials - Kinetics of thermally stimulated processes
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