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Advanced Image Analysis for Learning Underlying Partial Differential Equations for Anomaly Identification

机译:用于学习底层局部微分方程的高级图像分析

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In this article, the authors adapt and utilize data-driven advanced image processing and machine learning techniques to identify the underlying dynamics and the model parameters for dynamic processes driven by partial differential equations (PDEs). Potential applications include non-destructive inspection for material crack detection using thermal imaging as well as real-time anomaly detection for process monitoring of three-dimensional printing applications. A neural network (NN) architecture is established that offers sufficient flexibility for spatial and temporal derivatives to capture the physical dependencies inherent in the process. Predictive capabilities are then established by propagating the process forward in time using the acquired model structure as well as individual parameter values. Moreover, deviations in the predicted values can be monitored in real time to detect potential process anomalies or perturbations. For concept development and validation, this article utilizes well-understood PDEs such as the homogeneous heat diffusion equation. Time series data governed by the heat equation representing a parabolic PDE is generated using high-fidelity simulations in order to construct the heat profile. Model structure and parameter identification are realized through a shallow residual convolutional NN. The learned model structure and associated parameters resemble a spatial convolution filter, which can be applied to the current heat profile to predict the diffusion behavior forward in time. (C) 2020 Society for Imaging Science and Technology.
机译:在本文中,作者适应并利用数据驱动的高级图像处理和机器学习技术,以识别由部分微分方程(PDE)驱动的动态过程的基础动态和模型参数。潜在应用包括使用热成像的材料裂纹检测的非破坏性检查,以及用于三维印刷应用的过程监测的实时异常检测。建立神经网络(NN)架构,为空间和时间衍生物提供足够的灵活性,以捕获过程中固有的物理依赖性。然后通过使用所获取的模型结构以及单独的参数值在时间上传播过程以及单独的参数值来建立预测性能。此外,可以实时监测预测值中的偏差以检测潜在的过程异常或扰动。对于概念开发和验证,本文利用良好的理解PDE,例如均匀的热扩散方程。通过高保真模拟产生由表示抛物线PDE的热方程来治理的时间序列数据,以构造热谱。模型结构和参数识别通过浅剩余卷积NN实现。学习的模型结构和相关参数类似于空间卷积滤波器,其可以应用于当前热分布以预测及时向前的扩散行为。 (c)2020年影像科技协会。

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  • 来源
    《Journal of Imaging Science and Technology 》 |2020年第2期| 020510.1-020510.10| 共10页
  • 作者单位

    Penn State Univ Dept Aerosp Engn University Pk PA 16802 USA|Penn State Univ Appl Res Lab University Pk PA 16802 USA;

    Penn State Univ Appl Res Lab University Pk PA 16802 USA;

    Penn State Univ Appl Res Lab University Pk PA 16802 USA;

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