基于变压器嵌入的关注机制的神经主题生成用于电子产品制造缺陷的根本原因分析

IF 1.8 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Vutivi Mabasa, Uche A. K. Chude-Okonkwo, Babu S. Paul
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引用次数: 0

摘要

根本原因分析(RCA)是识别和减轻制造缺陷的关键过程,特别是在电子工业中,小问题可能导致重大的操作和财务后果。传统的RCA方法,严重依赖于人工检查或基于规则的系统,经常不能随着缺陷相关数据的复杂性和数量的增长而扩展。本研究引入了一个神经主题生成模型,该模型利用BART和T5中基于变压器的嵌入来自动识别代表缺陷模式的潜在主题,并提供对其根本原因的可操作见解。通过将这些模型与注意机制和VAE集成,该模型有效地处理非结构化文本数据,生成可解释和连贯的主题。将所提模型的性能与传统的NTM模型进行了比较,如基于Word2Vec的NTM和基于vae的NTM。实验结果表明,NTM-BART的相干性得分最高(0.468),困惑性得分最低(124),而NTM-T5的困惑性得分最低(119),相干性得分为0.434。相比之下,传统的NTM模型表现出较低的一致性得分(使用Word2Vec的NTM为0.296)和较高的困惑度(基于vae的NTM为207),凸显了其局限性。这些发现突出了BART和T5产生连贯和可解释主题的能力,使它们成为复杂制造环境中RCA的高效工具。该研究强调了先进NLP技术在工业应用中的变革潜力,为更智能、更高效的制造系统铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Topic Generation Utilizing Attention Mechanisms With Transformer-Based Embeddings for Root-Cause Analysis of Manufacturing Defects in Electronic Products

Root-cause analysis (RCA) is a critical process for identifying and mitigating manufacturing defects, particularly in the electronics industry, where minor issues can lead to significant operational and financial consequences. Traditional approaches to RCA, relying heavily on manual inspections or rule-based systems, often fail to scale with the growing complexity and volume of defect-related data. This study introduces a neural topic generation model that leverages transformer-based embeddings from BART and T5 to automatically identify latent topics representing defect patterns, providing actionable insights into their root causes. By integrating these models with attention mechanisms and a VAE, the model effectively handles unstructured textual data, generating interpretable and coherent topics. The performance of the proposed models is compared with traditional NTM models, such as NTM with Word2Vec and VAE-based NTM. Experimental results show that NTM-BART achieved the highest coherence score (0.468) and a low perplexity score (124), while NTM-T5 achieved the lowest perplexity score (119) and a coherence score of 0.434. In contrast, traditional NTM models exhibited significantly lower coherence scores (0.296 for NTM with Word2Vec) and higher perplexity (207 for VAE-based NTM), underscoring their limitations. These findings highlight the ability of BART and T5 to generate coherent and interpretable topics, making them highly effective tools for RCA in complex manufacturing environments. The study emphasizes the transformative potential of advanced NLP techniques in industrial applications, paving the way for smarter, more efficient manufacturing systems.

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CiteScore
5.10
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