评估扩散模型,实现超声波无损检测数据分析自动化

Algorithms Pub Date : 2024-04-21 DOI:10.3390/a17040167
Nick Torenvliet, John Zelek
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引用次数: 0

摘要

我们为超声波无损评估数据分析任务开发了决策支持和自动化功能。首先,我们为这项任务开发了一个概率模型,然后根据基于条件得分的扩散和去噪扩散概率模型架构,将该模型实施为一系列神经网络。我们使用神经网络对飞行的峰值振幅响应时间进行估计,并根据概率模型对神经网络的行为、容量和特性进行一系列测试。我们在一系列数据集上对神经网络进行了训练,这些数据集是在核电设施检查过程中获取的超声波无损评估数据。我们对数据集中的标称数据和异常数据进行分区分类,观察到概率模型预测了神经网络模型性能的趋势,从而证明了可解释性的原则基础。我们的方法是自监督式的,无需数据注释或预处理,而且我们是按数据集进行训练,这意味着我们不依赖于分布外泛化,因此我们改进了之前的相关工作。概率模型预测神经网络性能趋势的能力以及神经网络采样估计值的质量,为在核应用等安全关键环境中使用该方法提供了技术依据。该方法可为在其他工业环境中扩展到类似的无损评估任务提供基础或模板。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating Diffusion Models for the Automation of Ultrasonic Nondestructive Evaluation Data Analysis
We develop decision support and automation for the task of ultrasonic non-destructive evaluation data analysis. First, we develop a probabilistic model for the task and then implement the model as a series of neural networks based on Conditional Score-Based Diffusion and Denoising Diffusion Probabilistic Model architectures. We use the neural networks to generate estimates for peak amplitude response time of flight and perform a series of tests probing their behavior, capacity, and characteristics in terms of the probabilistic model. We train the neural networks on a series of datasets constructed from ultrasonic non-destructive evaluation data acquired during an inspection at a nuclear power generation facility. We modulate the partition classifying nominal and anomalous data in the dataset and observe that the probabilistic model predicts trends in neural network model performance, thereby demonstrating a principled basis for explainability. We improve on previous related work as our methods are self-supervised and require no data annotation or pre-processing, and we train on a per-dataset basis, meaning we do not rely on out-of-distribution generalization. The capacity of the probabilistic model to predict trends in neural network performance, as well as the quality of the estimates sampled from the neural networks, support the development of a technical justification for usage of the method in safety-critical contexts such as nuclear applications. The method may provide a basis or template for extension into similar non-destructive evaluation tasks in other industrial contexts.
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