Empirical loss weight optimization for PINN modeling laser bio-effects on human skin for the 1D heat equation

Jenny Farmer , Chad A. Oian , Brett A. Bowman , Taufiquar Khan
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Abstract

The application of deep neural networks towards solving problems in science and engineering has demonstrated encouraging results with the recent formulation of physics-informed neural networks (PINNs). Through the development of refined machine learning techniques, the high computational cost of obtaining numerical solutions for partial differential equations governing complicated physical systems can be mitigated. However, solutions are not guaranteed to be unique, and are subject to uncertainty caused by the choice of network model parameters. For critical systems with significant consequences for errors, assessing and quantifying this model uncertainty is essential. In this paper, an application of PINN for laser bio-effects with limited training data is provided for uncertainty quantification analysis. Additionally, an efficacy study is performed to investigate the impact of the relative weights of the loss components of the PINN and how the uncertainty in the predictions depends on these weights. Network ensembles are constructed to empirically investigate the diversity of solutions across an extensive sweep of hyper-parameters to determine the model that consistently reproduces a high-fidelity numerical simulation.

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针对一维热方程的 PINN 模型激光对人体皮肤的生物效应进行经验损失权重优化
深度神经网络在解决科学和工程问题方面的应用,在最近提出的物理信息神经网络(PINNs)中取得了令人鼓舞的成果。通过开发精炼的机器学习技术,可以降低获取管理复杂物理系统的偏微分方程数值解的高计算成本。然而,解法并不能保证是唯一的,而且会受到网络模型参数选择造成的不确定性的影响。对于误差后果严重的关键系统,评估和量化模型的不确定性至关重要。本文提供了一个针对激光生物效应的 PINN 应用,在训练数据有限的情况下进行不确定性量化分析。此外,还进行了一项功效研究,以探讨 PINN 损失分量相对权重的影响,以及预测的不确定性如何取决于这些权重。通过构建网络集合,对各种超参数的解决方案的多样性进行了实证研究,以确定能够始终如一地再现高保真数值模拟的模型。
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来源期刊
Machine learning with applications
Machine learning with applications Management Science and Operations Research, Artificial Intelligence, Computer Science Applications
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98 days
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