Transfer machine learning framework for efficient full-field temperature response reconstruction of thermal protection structures with limited measurement data

IF 5.8 2区 工程技术 Q1 ENGINEERING, MECHANICAL International Journal of Heat and Mass Transfer Pub Date : 2025-06-01 Epub Date: 2025-02-12 DOI:10.1016/j.ijheatmasstransfer.2025.126785
Yuluo Chen , Qiang Chen , Han Ma , Shuailong Chen , Qingguo Fei
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Abstract

Thermal protection structures are key components of reusable launch vehicles. As an important basis for monitoring the health status of the vehicle, it is necessary to timely and accurately predict the full-field temperature response of the thermal protection structure. In this work, a novel model is proposed for solving this problem based on physical information neural network (PINN) and transfer learning techniques, in which both the direct and inverse heat conduction problems are involved. A thermal protection structure (TPS) is taken as the research object. The corresponding simulation model is obtained based on the experimental model, which is used to train the PINN pre-model and to verify the validity and accuracy of the pre-model. Combining pre-model and limited experimental data, three different fine-tuning strategies are utilized for transfer learning. Furthermore, the PINN model obtained based on the optimal fine-tuning strategy is chosen to complete the temperature field reconstruction and thermophysical parameter recognition. Results demonstrate that the proposed method not only solves the complex problem of heat transfer across material layers but also performs well in the face of complex heat flow conditions. The experimental model obtained under the fine-tuning strategy of freezing the first two fully connected layers not only performs better in terms of accuracy and efficiency but also has the best stability during training. The training efficiency of the model is improved by more than 7 times through transfer learning. This suggests the desirability of combining transfer learning and PINN to construct experimental models dealing with direct and inverse heat conduction problems.
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基于有限测量数据的热保护结构的高效全场温度响应重建的传递机器学习框架
热防护结构是可重复使用运载火箭的关键部件。作为监测车辆健康状态的重要依据,及时准确地预测热防护结构的全场温度响应是十分必要的。本文提出了一种基于物理信息神经网络(PINN)和迁移学习技术的求解该问题的新模型,该模型涉及正反热传导问题。以一种热防护结构(TPS)为研究对象。在实验模型的基础上得到相应的仿真模型,用于训练PINN预模型,并验证预模型的有效性和准确性。结合预模型和有限的实验数据,采用三种不同的微调策略进行迁移学习。在此基础上,选择基于最优微调策略得到的PINN模型完成温度场重构和热物性参数识别。结果表明,该方法不仅解决了复杂的材料层间换热问题,而且在复杂的热流条件下也表现良好。在冻结前两层完全连接层的微调策略下得到的实验模型不仅在精度和效率上表现得更好,而且在训练过程中具有最好的稳定性。通过迁移学习,模型的训练效率提高了7倍以上。这表明将迁移学习和PINN结合起来构建处理正反热传导问题的实验模型是可取的。
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来源期刊
CiteScore
10.30
自引率
13.50%
发文量
1319
审稿时长
41 days
期刊介绍: International Journal of Heat and Mass Transfer is the vehicle for the exchange of basic ideas in heat and mass transfer between research workers and engineers throughout the world. It focuses on both analytical and experimental research, with an emphasis on contributions which increase the basic understanding of transfer processes and their application to engineering problems. Topics include: -New methods of measuring and/or correlating transport-property data -Energy engineering -Environmental applications of heat and/or mass transfer
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