Energy-based PINNs for solving coupled field problems: Concepts and application to the multi-objective optimal design of an induction heater

IF 1.4 4区 工程技术 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC Iet Science Measurement & Technology Pub Date : 2024-07-07 DOI:10.1049/smt2.12212
Marco Baldan, Paolo Di Barba
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Abstract

Physics-informed neural networks (PINNs) are neural networks (NNs) that directly encode model equations, like Partial Differential Equations (PDEs), in the network itself. While most of the PINN algorithms in the literature minimize the local residual of the governing equations, there are energy-based approaches that take a different path by minimizing the variational energy of the model. It is shown that in the case of the steady thermal equation weakly coupled to magnetic equation, the energy-based approach displays multiple advantages compared to the standard residual-based PINN: it is more computationally efficient, it requires a lower order of derivatives to compute, and it involves less hyperparameters. The analyzed benchmark problems are the single- and multi-objective optimal design of an inductor for the controlled heating of a graphite plate. The optimized device is designed by involving a multi-physics problem: a time-harmonic magnetic problem and a steady thermal problem. For the former, a deep neural network solving the direct problem is supervisedly trained on Finite Element Analysis (FEA) data. In turn, the solution of the latter relies on a hypernetwork that takes as input the inductor geometry parameters and outputs the model weights of an energy-based PINN (or ePINN). Eventually, the ePINN predicts the temperature field within the graphite plate.

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基于能量的 PINNs 用于解决耦合场问题:感应加热器多目标优化设计的概念与应用
物理信息神经网络(PINN)是一种直接将模型方程(如偏微分方程)编码到网络本身的神经网络(NN)。虽然文献中的大多数 PINN 算法都是最小化治理方程的局部残差,但也有一些基于能量的方法,它们通过最小化模型的变异能量来另辟蹊径。研究表明,在稳定热方程与磁方程弱耦合的情况下,与标准的基于残差的 PINN 相比,基于能量的方法具有多种优势:计算效率更高、计算所需的导数阶数更低、涉及的超参数更少。所分析的基准问题是用于控制石墨板加热的感应器的单目标和多目标优化设计。优化设备的设计涉及多物理问题:时谐磁问题和稳定热问题。对于前者,解决直接问题的深度神经网络在有限元分析(FEA)数据的监督下进行训练。反过来,后者的求解依赖于超网络,超网络将电感器的几何参数作为输入,并输出基于能量的 PINN(或 ePINN)的模型权重。最终,ePINN 预测出石墨板内的温度场。
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来源期刊
Iet Science Measurement & Technology
Iet Science Measurement & Technology 工程技术-工程:电子与电气
CiteScore
4.30
自引率
7.10%
发文量
41
审稿时长
7.5 months
期刊介绍: IET Science, Measurement & Technology publishes papers in science, engineering and technology underpinning electronic and electrical engineering, nanotechnology and medical instrumentation.The emphasis of the journal is on theory, simulation methodologies and measurement techniques. The major themes of the journal are: - electromagnetism including electromagnetic theory, computational electromagnetics and EMC - properties and applications of dielectric, magnetic, magneto-optic, piezoelectric materials down to the nanometre scale - measurement and instrumentation including sensors, actuators, medical instrumentation, fundamentals of measurement including measurement standards, uncertainty, dissemination and calibration Applications are welcome for illustrative purposes but the novelty and originality should focus on the proposed new methods.
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