Prediction of supercritical CO2 heat transfer behaviors by combining transfer learning and deep learning based on multi-fidelity data

IF 5 2区 工程技术 Q1 ENGINEERING, MECHANICAL
Xinhuan Shi , Yongji Liu , Longxian Xue , Wei Chen , Minking K. Chyu
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引用次数: 0

Abstract

The flow and heat transfer characteristics of supercritical CO2 are important for heat exchanger design and the safe operation of supercritical CO2 power cycles. However, it is difficult to predict the supercritical heat transfer behaviors due to the non-monotonic temperature distribution in the case of the heat transfer deterioration (HTD) phenomenon. For low-cost, fast and accurate prediction of the supercritical heat transfer behavior, this study proposed a transfer learning model based on multi-fidelity data to achieve fast prediction with acceptable accuracy over a wide range of working conditions. This method fully utilized the low fidelity data (empirical correlations) and the medium fidelity data (numerical results) to generate a large amount of data for pretraining, in which the Latin Hypercube Sampling (LHS) method combined with the HTD correlation was used for sampling. For fine-tuning, high fidelity data from experiments was employed. Compared to the deep learning model trained directly with high fidelity dataset, the transfer learning model demonstrated vastly improved predictive performance on both the test and validation datasets. Additionally, the coefficient of determination R2 was discussed to preventing from “physical overfitting”. Instead of excessively pursuing the high R2 (close to 1), the validity of the prediction should be concerned, especially when using the non-smooth experimental data as the dataset for model training. Moreover, the trained models and the relative files are available at Supplementary materials.

基于多保真度数据的迁移学习与深度学习相结合的超临界CO2换热行为预测
超临界CO2的流动和传热特性对换热器的设计和超临界CO2动力循环的安全运行具有重要意义。然而,在传热恶化(HTD)现象下,由于温度分布的非单调性,使得超临界传热行为难以预测。为了低成本、快速、准确地预测超临界传热行为,本研究提出了一种基于多保真度数据的迁移学习模型,以实现在大范围工况下的快速预测和可接受的精度。该方法充分利用低保真度数据(经验相关性)和中保真度数据(数值结果)生成大量数据进行预训练,其中采用拉丁超立方采样(Latin Hypercube Sampling, LHS)方法结合HTD相关性进行采样。为了进行微调,采用了高保真度的实验数据。与直接使用高保真度数据集训练的深度学习模型相比,迁移学习模型在测试和验证数据集上的预测性能都有了极大的提高。此外,还讨论了防止“物理过拟合”的决定系数R2。不应过分追求高R2(接近1),而应关注预测的有效性,特别是当使用非光滑实验数据作为模型训练的数据集时。此外,训练的模型和相关文件可在补充资料中获得。
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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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