Uncertainty Quantification of a Machine Learning Model for Identification of Isolated Nonlinearities with Conformal Prediction

IF 0.5 Q4 ENGINEERING, MECHANICAL Journal of Verification, Validation and Uncertainty Quantification Pub Date : 2024-02-19 DOI:10.1115/1.4064777
David A. Najera-Flores, Justin Jacobs, D. Quinn, Anthony Garland, Michael D. Todd
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Abstract

Structural nonlinearities are often spatially localized, such joints and interfaces, localized damage, or isolated connections, in an otherwise linearly behaving system. Quinn and Brink [12] modeled this localized nonlinearity as a deviatoric force component. In other previous work [13], the authors proposed a physics-informed machine learning framework to determine the deviatoric force from measurements obtained only at the boundary of the nonlinear region, assuming a noise-free environment. However, in real experimental applications, the data are expected to contain noise from a variety of sources. In the present work, we explore the sensitivity of the trained network by comparing the network responses when trained on deterministic (“noise-free”) model data and model data with additive noise (“noisy”). As the neural network does not yield a closed-form transformation from the input distribution to the response distribution, we leverage the use of conformal sets to build an illustration of sensitivity. Through the conformal set assumption of exchangeability, we may build a distribution-free prediction interval for both network responses of the clean and noisy training sets. This work will explore the application of conformal sets for uncertainty quantification of a deterministic structure-preserving neural network and its deployment in a structural health monitoring framework to detect deviations from a baseline state based on noisy measurements.
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利用共形预测识别孤立非线性的机器学习模型的不确定性量化
结构非线性通常在空间上是局部的,例如在一个线性行为系统中的接头和界面、局部损伤或孤立连接。Quinn 和 Brink [12] 将这种局部非线性建模为偏离力分量。在之前的其他研究中 [13],作者提出了一个物理信息机器学习框架,以在无噪声环境下,通过仅在非线性区域边界获得的测量值来确定偏离力。然而,在实际实验应用中,预计数据会包含各种来源的噪声。在本研究中,我们通过比较在确定性("无噪声")模型数据和带有加性噪声("噪声")的模型数据上训练的网络响应,来探索训练网络的灵敏度。由于神经网络不会产生从输入分布到响应分布的闭式转换,因此我们利用共形集来建立灵敏度说明。通过保角集的可交换性假设,我们可以为干净训练集和噪声训练集的网络响应建立一个无分布的预测区间。这项工作将探索保角集在确定性结构保持神经网络不确定性量化中的应用,并将其应用于结构健康监测框架,以检测基于噪声测量的基线状态偏差。
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来源期刊
CiteScore
1.60
自引率
16.70%
发文量
12
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