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Application of Artificial Neural Networks to Strip Steel Surface Defect Diagnosis

机译:人工神经网络在带钢表面缺陷诊断中的应用

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摘要

Based on the analysis of strip steel surface quality examination carried at home and abroad, the paper analyzes flaws and corresponding factors beginning with the design of examination system. It studies deeply the related theories and key techniques of strip steel surface quality examination system, applied neural networks for strip steel surface defect recognizing successfully. It is applied successfully to whole flow quality control technique and equipment composite diagnosis system (TQC-DS) in a steel company.
机译:在对国内外带钢表面质量检测进行分析的基础上,从检测系统的设计入手,分析了缺陷及其影响因素。深入研究了带钢表面质量检测系统的相关理论和关键技术,成功地将神经网络应用于带钢表面缺陷的识别。它已成功应用于钢铁公司的全流质量控制技术和设备综合诊断系统(TQC-DS)。

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