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Automated detection of corrosion in used nuclear fuel dry storage canisters using residual neural networks

机译:使用剩余神经网络自动检测二手核燃料干储罐中的腐蚀

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摘要

Nondestructive evaluation methods play an important role in ensuring component integrity and safety in many industries. Operator fatigue can play a critical role in the reliability of such methods. This is important for inspecting high value assets or assets with a high consequence of failure, such as aerospace and nuclear components. Recent advances in convolution neural networks can support and automate these inspection efforts. This paper proposes using residual neural networks (ResNets) for real-time detection of corrosion, including iron oxide discoloration, pitting and stress corrosion cracking, in dry storage stainless steel canisters housing used nuclear fuel. The proposed approach crops nuclear canister images into smaller tiles, trains a ResNet on these tiles, and classifies images as corroded or intact using the per-image count of tiles predicted as corroded by the ResNet. The results demonstrate that such a deep learning approach allows to detect the locus of corrosion via smaller tiles, and at the same time to infer with high accuracy whether an image comes from a corroded canister. Thereby, the proposed approach holds promise to automate and speed up nuclear fuel canister inspections, to minimize inspection costs, and to partially replace human-conducted onsite inspections, thus reducing radiation doses to personnel.
机译:非破坏性评估方法在确保在许多行业的组件完整性和安全方面发挥着重要作用。操作员疲劳可以在这些方法的可靠性中起着关键作用。这对于检查高价值资产或资产具有很高的失败后果,例如航空航天和核心组件。卷积神经网络的最新进展可以支持和自动化这些检查工作。本文建议采用残留的神经网络(Resnet)进行实时检测腐蚀,包括氧化铁变色,蚀蚀和应力腐蚀裂缝,在干燥储存不锈钢罐外壳使用核燃料中。将拟议的方法核对核罐图像中的较小的瓷砖培训,在这些瓷砖上培训RESET,并使用预测由RESET腐蚀的销钉的每个图像计数将图像分类为腐蚀或完好。结果表明,这种深度学习方法允许通过较小的瓦片检测腐蚀的基因座,同时以高精度地推断图像是否来自腐蚀的罐。由此,该方法承担了承诺自动化和加速核燃料罐的检查,以最大限度地减少检查成本,并部分取代人对现场检查,从而减少辐射剂量给人员。

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