基于深度学习的不同热参数复杂温度场计算代理模型

IF 1.6 4区 工程技术 Q3 ENGINEERING, MECHANICAL
Feiding Zhu, Jincheng Chen, Dengfeng Ren, Yuge Han
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引用次数: 0

摘要

由于不需要建立复杂的数学模型,基于深度学习的温度场计算替代模型近年来得到了广泛的应用。然而,现有的模型不能生成不同边界条件或热参数下的温度场。此外,生成复杂温度场的细节也具有挑战性。在本文中,我们提出了一种参数到温度生成对抗网络(PTGAN)来生成具有不同热参数的高质量细节的温度场图像。PTGAN模型主要包括温度场生成模块和热参数编码模块。此外,我们使用联合损失函数来提高生成的温度场图像的质量。采用计算流体力学(CFD)方法对装甲车辆的温度场进行了计算,得到了验证所提出的PTGAN的数据集。结果表明,PTGAN生成的温度场具有较高的精度,平均相对误差仅为0.205%。将热参数集成到温度场图像生成中的尝试是成功的。可以快速准确地生成温度场数据库,这对于深度学习与传热的进一步融合具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Learning-Based Surrogate Model for Complex Temperature Field Calculation with Various Thermal Parameters
Surrogate models of temperature field calculation based on deep learning have gained popularity in recent years because it does not need to establish complex mathematical models. However, the existing models cannot generate the temperature field for different boundary conditions or thermal parameters. In addition, it is also challenging to generate the details of the complex temperature field. In this paper, we propose a Parameters-to-Temperature Generative Adversarial Networks (PTGAN) to generate temperature field images with high-quality details for different thermal parameters. The PTGAN model mainly includes temperature field generation module and thermal parameter encoding module. Additionally, we use a joint loss function to improve the quality of the generated temperature field image. The temperature field of the armored vehicle is calculated by the computational fluid dynamics (CFD) method to obtain data set to verify the proposed PTGAN. The results show that the temperature field generated by PTGAN has high accuracy, and the average relative error is only 0.205%. The attempt to integrate thermal parameters into the temperature field image generation is successful. The temperature field database can be generated quickly and accurately, which is of great significance for the further integration of deep learning and heat transfer.
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来源期刊
Journal of Thermal Science and Engineering Applications
Journal of Thermal Science and Engineering Applications THERMODYNAMICSENGINEERING, MECHANICAL -ENGINEERING, MECHANICAL
CiteScore
3.60
自引率
9.50%
发文量
120
期刊介绍: Applications in: Aerospace systems; Gas turbines; Biotechnology; Defense systems; Electronic and photonic equipment; Energy systems; Manufacturing; Refrigeration and air conditioning; Homeland security systems; Micro- and nanoscale devices; Petrochemical processing; Medical systems; Energy efficiency; Sustainability; Solar systems; Combustion systems
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