面向工业零件一致性的智能LSTM:基于材料数据的中小企业决策

IF 0.6 Q4 AUTOMATION & CONTROL SYSTEMS
Maha Ben Ayed, Mohamed Sayah, Raouf Ketata, Noureddine Zerhouni
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引用次数: 0

摘要

在工业零件的预测分析中,许多研究已经证明了在监测系统中利用原材料数据进行质量预测的有效性。通过分析和定义原材料的组成、性质和特征,预测模型可以优化系统性能和决策过程。在像SCODER这样的中小型企业(SMEs)中,由于数据可用性有限、产量较小、可追溯性较差等因素,有限的资源限制了决策的数据收集,从而导致数据质量和结构的可变性。本研究利用稀缺及稀疏的资料,探讨物料特性对工业零件一致性的影响。材料杂质严重影响工业加工零件的质量和稳定性。一些机器学习和人工智能技术解决了分析材料数据集的复杂性,以识别导致机械零件缺陷的模式。提出了一种智能长短期记忆(LSTM)模型,用于预测工业加工零件的一致性。本工作的重点是分析原材料数据,研究加工稳定性,全面了解材料数据与零件质量之间的依赖关系。我们的方法可以作为确保生产质量和工业加工稳定性的工具,利用从SCODER(一家专门从事汽车应用超精密冲压的法国中小企业)加工零件收集的数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Smart LSTM for Industrial Part Conformity: SME Material-Data Based Decision-Making

A Smart LSTM for Industrial Part Conformity: SME Material-Data Based Decision-Making

In predictive analysis for industrial parts, numerous studies have demonstrated the effectiveness of utilizing raw material data for quality prediction in monitoring systems. By analyzing and defining the composition, properties, and characteristics of raw materials, predictive models can optimize system performance and decision-making processes. In the context of small and medium enterprises (SMEs) like SCODER, limited resources constrain data collection for decision-making due to factors such as limited data availability, smaller production volumes, and less advanced traceability, leading to variability in data quality and structure. This research explores the impact of material characteristics on industrial part conformity with scarce and sparse data. Material impurities significantly affect the quality and stability of industrial machined parts. Some machine learning and AI techniques address the complexity of analyzing material datasets to identify patterns that lead to deficiencies in machined parts. We propose a smart long short-term memory (LSTM) model for predicting part conformity in industrial machined parts. This work focuses on analyzing raw material data to study machining stability and understand the dependencies between material data and part quality holistically. Our approach serves as a tool for ensuring quality production and industrial processing stability, leveraging data collected from machining parts at SCODER, a French SME specializing in ultraprecise stamping for automotive applications.

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来源期刊
AUTOMATIC CONTROL AND COMPUTER SCIENCES
AUTOMATIC CONTROL AND COMPUTER SCIENCES AUTOMATION & CONTROL SYSTEMS-
CiteScore
1.70
自引率
22.20%
发文量
47
期刊介绍: Automatic Control and Computer Sciences is a peer reviewed journal that publishes articles on• Control systems, cyber-physical system, real-time systems, robotics, smart sensors, embedded intelligence • Network information technologies, information security, statistical methods of data processing, distributed artificial intelligence, complex systems modeling, knowledge representation, processing and management • Signal and image processing, machine learning, machine perception, computer vision
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