Physics-informed machine learning for enhanced prediction of condensation heat transfer

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Haeun Lee , Cheonkyu Lee , Hyoungsoon Lee
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Abstract

Developing a universal model for predicting condensation heat transfer coefficients remains challenging, particularly for steam–non-condensable gas mixtures, owing to the intricate nonlinear interactions between multiphase flow, heat, and mass transfer phenomena. Data-driven machine learning (ML) shows promise in efficiently and accurately predicting condensation heat transfer coefficients. Research has employed various ML methods—multilayer perceptron neural networks, convolutional-neural-network–based DenseNet, backpropagation neural networks, etc.—to investigate steam condensation with non-condensable gases. However, these exhibit limited extrapolation ability and heavily rely on data quantity owing to their black-box nature. This study proposes a physics-informed ML model that combines physical constraints derived from the modified Nusselt model with conventional data-driven ML techniques. The model's predictive performance is evaluated using a comprehensive database (879 datapoints from 13 studies). A physics-constrained and eight data-driven ML methods are assessed. The results reveal that the physics-constrained approach combined with XGBoost significantly outperforms conventional ML methods on extrapolation datasets (199 datapoints from 3 studies), achieving a mean absolute percentage error of 11.22 %, which is approximately half that of the best-performing fully data-driven model at 21.63 %. The model demonstrates consistent and reliable performance across diverse datasets, making it an effective tool for predicting heat transfer coefficients in steam–non-condensable gas mixtures. By deepening the understanding of the underlying physical processes, the proposed model supports the development of precise and efficient engineering solutions for condensation heat transfer.

Abstract Image

利用物理信息机器学习加强冷凝传热预测
由于多相流、传热和传质现象之间复杂的非线性相互作用,开发一个预测冷凝传热系数的通用模型仍然具有挑战性,特别是对于蒸汽-非冷凝气体混合物。数据驱动的机器学习(ML)在有效和准确地预测冷凝传热系数方面显示出前景。研究人员采用了各种机器学习方法——多层感知器神经网络、基于卷积神经网络的DenseNet、反向传播神经网络等——来研究不可冷凝气体的蒸汽冷凝。然而,由于它们的黑箱性质,它们的外推能力有限,并且严重依赖于数据量。本研究提出了一种基于物理的机器学习模型,该模型将来自改进的Nusselt模型的物理约束与传统的数据驱动机器学习技术相结合。该模型的预测性能使用综合数据库(来自13项研究的879个数据点)进行评估。评估了物理约束和八种数据驱动的机器学习方法。结果表明,物理约束方法结合XGBoost在外推数据集(来自3项研究的199个数据点)上显著优于传统的ML方法,实现了11.22%的平均绝对百分比误差,大约是表现最好的完全数据驱动模型(21.63%)的一半。该模型在不同的数据集上表现出一致和可靠的性能,使其成为预测蒸汽-非冷凝气体混合物传热系数的有效工具。通过加深对潜在物理过程的理解,所提出的模型支持冷凝传热的精确和有效的工程解决方案的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Energy and AI
Energy and AI Engineering-Engineering (miscellaneous)
CiteScore
16.50
自引率
0.00%
发文量
64
审稿时长
56 days
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