2022
DOI: 10.48550/arxiv.2207.10992
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Taguchi based Design of Sequential Convolution Neural Network for Classification of Defective Fasteners

Abstract: Fasteners play a critical role in securing various parts of machinery. Deformations such as dents, cracks, and scratches on the surface of fasteners are caused by material properties and incorrect handling of equipment during production processes. As a result, quality control is required to ensure safe and reliable operations. The existing defect inspection method relies on manual examination, which consumes a significant amount of time, money, and other resources; also, accuracy cannot be guaranteed due to hu… Show more

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