通过连续聚类和分类加强自动缺陷检测:使用正弦余弦算法、可能模糊 c-means 和人工神经网络的工业案例研究

T.P.Q. Nguyen
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摘要

现有的大多数检测模型仅将缺陷分为好或坏,主要侧重于将缺陷与完美缺陷区分开来。在这项工作中,采用了顺序聚类和分类技术(SCC),不仅能识别缺陷并对其进行分类,还能调查缺陷的根本原因。第一阶段采用传统的聚类技术,如 K-均值、模糊 C-均值和自组织图,以发现成品中的缺陷。然后,提出了一种结合正弦余弦算法和正负模糊均值(SCA-PFCM)的新型聚类方法,将检测到的缺陷分为多个组,以确定缺陷类别并分析故障根源。在第二阶段,从聚类技术中提取的基本真实标签被用于利用反向传播神经网络(BPNN)构建自动检测系统。所提出的方法适用于检测和识别制造业中的错误原因。本研究将一个案例应用于钳工制造。SCA-PFCM 算法可检测出 97 % 的缺陷并将其分为四种类型,而 BPNN 的预测准确率高达 96 %。此外,还开发了一种自动检测系统,以减少检测过程的时间和成本。
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Enhancing automated defect detection through sequential clustering and classification: An industrial case study using the Sine-Cosine Algorithm, Possibilistic Fuzzy c-means, and Artificial Neural Network
Most existing inspection models solely classify defects as either good or bad, focusing primarily on separating flaws from perfect ones. The sequential clustering and classification technique (SCC) is used in this work to not only identify and categorize the defects but also investigate their root causes. Conventional clustering techniques like k-means, fuzzy c-means, and self-organizing map are employed in the first stage to find the defects in the finished products. Then, a novel clustering method, that combines a sine-cosine algorithm and possibilistic fuzzy c-means (SCA-PFCM), is proposed to classify the detected defects into multiple groups to identify the defect categories and analyze the root causes of failures. In the second stage, the ground truth labels taken from the clustering technique are used to construct an automated inspection system using back propagation neural networks (BPNN). The proposed approach is applicable for detecting and identifying the causes of errors in manufacturing industry. This study applies a case study in nipper manufacture. The SCA-PFCM algorithm can detect 97 % of defects and classify them into four types while BPNN shows a predicted accuracy of up to 96 %. Additionally, an automated inspection system is developed to reduce the time and cost of the inspection process.
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