Incremental Learning-Based Algorithm for Anomaly Detection Using Computed Tomography Data

Hossam A. Gabbar, O. Adegboro, Abderrazak Chahid, Jing Ren
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引用次数: 1

Abstract

In a nuclear power plant (NPP), the used tools are visually inspected to ensure their integrity before and after their use in the nuclear reactor. The manual inspection is usually performed by qualified technicians and takes a large amount of time (weeks up to months). In this work, we propose an automated tool inspection that uses a classification model for anomaly detection. The deep learning model classifies the computed tomography (CT) images as defective (with missing components) or defect-free. Moreover, the proposed algorithm enables incremental learning (IL) using a proposed thresholding technique to ensure a high prediction confidence by continuous online training of the deployed online anomaly detection model. The proposed algorithm is tested with existing state-of-the-art IL methods showing that it helps the model quickly learn the anomaly patterns. In addition, it enhances the classification model confidence while preserving a desired minimal performance.
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基于计算机断层扫描数据的增量学习异常检测算法
在核电站(NPP)中,使用过的工具在核反应堆中使用前后都要进行目视检查,以确保其完整性。人工检查通常由合格的技术人员执行,需要花费大量时间(几周到几个月)。在这项工作中,我们提出了一种使用分类模型进行异常检测的自动化工具检查。深度学习模型将计算机断层扫描(CT)图像分类为有缺陷(缺少组件)或无缺陷。此外,该算法利用所提出的阈值技术实现增量学习(IL),通过对已部署的在线异常检测模型进行持续在线训练,确保预测置信度高。该算法与现有的最先进的IL方法进行了测试,表明它有助于模型快速学习异常模式。此外,它在保持期望的最小性能的同时增强了分类模型的置信度。
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