Physics-Informed Machine Learning For Surrogate Modeling Of Heat Transfer Phenomena

IF 1.9 4区 工程技术 Q3 ENGINEERING, MECHANICAL
Tomoyuki Suzuki, K. Hirohata, Yasutaka Ito, Takehiro Hato, A. Kano
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引用次数: 0

Abstract

In this paper, we propose a sparse modeling method for automatically creating a surrogate model for nonlinear time-variant systems from a very small number of time series data with nonconstant time steps. We developed three machine learning methods–namely, (1) a data preprocessing method for considering the correlation between errors, (2) a sequential thresholded non-negative least-squares method based on term size criteria, and (3) a solution space search method involving similarity model classification–to apply sparse identification of nonlinear dynamical systems, as first proposed in 2016, to temperature prediction simulations. The proposed method has the potential for wide application to fields where the concept of equivalent circuits can be applied. The effectiveness of the proposed method was verified using time series data obtained by thermo-fluid analysis of a power module. Two types of cooling systems were verified: forced air cooling and natural air cooling. The model created from the thermo-fluid analysis results with fewer than the number of input parameters, predicted multiple test data, including extrapolation, with a mean error of less than 1 K. Because the proposed method can be applied using a very small number of data, has a high extrapolation accuracy, and is easy to interpret, it is expected not only that design parameters can be fine-tuned and actual loads can be taken into account, but also that condition-based maintenance can be realized through real-time simulation.
热传递现象的代理模型的物理信息机器学习
在本文中,我们提出了一种稀疏建模方法,用于从非常少量具有非恒定时间步长的时间序列数据中自动创建非线性时变系统的代理模型。我们开发了三种机器学习方法,即:(1)考虑误差之间相关性的数据预处理方法,(2)基于项大小标准的顺序阈值非负最小二乘法,以及(3)涉及相似模型分类的解空间搜索方法,将非线性动力系统的稀疏识别应用于温度预测模拟,该方法于2016年首次提出。所提出的方法在等效电路概念可以应用的领域具有广泛的应用潜力。利用功率模块热流体分析获得的时间序列数据验证了该方法的有效性。验证了两种冷却系统:强制空气冷却和自然空气冷却。该模型基于输入参数较少的热流体分析结果,预测了包括外推在内的多个测试数据,平均误差小于1 K。由于所提出的方法可以使用非常少的数据,外推精度高,易于解释,因此不仅可以微调设计参数并考虑实际负载,而且可以通过实时仿真实现基于状态的维护。
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来源期刊
CiteScore
4.00
自引率
10.00%
发文量
72
审稿时长
6-12 weeks
期刊介绍: The purpose of the Journal of Computational and Nonlinear Dynamics is to provide a medium for rapid dissemination of original research results in theoretical as well as applied computational and nonlinear dynamics. The journal serves as a forum for the exchange of new ideas and applications in computational, rigid and flexible multi-body system dynamics and all aspects (analytical, numerical, and experimental) of dynamics associated with nonlinear systems. The broad scope of the journal encompasses all computational and nonlinear problems occurring in aeronautical, biological, electrical, mechanical, physical, and structural systems.
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