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A manufacturing quality prediction model based on AdaBoost-LSTM with rough knowledge

机译:一种基于Adaboost-LSTM的制造质量预测模型,具有粗略知识

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摘要

Manufacturing quality prediction is one of the significant concerns in modern enterprise production management, which provides data support for reliability assessment and parameter optimization, thus improving the intelligent management level of enterprises and helping achieve high-quality products at lower costs. In this paper, an ensemble learning framework using rough knowledge is proposed for manufacturing quality prediction. The proposed model consists of three elements: (1) significant parameters in different production stages are selected based on attribute reduction and decision rule extraction of rough set theory (RS), (2) long short-term memory network (LSTM) is utilized for building the relationship between the significant parameters and manufacturing quality, and (3) the learning performance of the LSTM is reinforced by AdaBoost approach. To estimate the effectiveness of the proposed model, a competition dataset about manufacturing quality control is applied and six models are investigated. The comparison experiments show that the proposed model overwhelms all the comparison models in terms of root-mean-square error, threshold statistics and residuals analysis. In addition, the proposed model has statistically significant difference from all the comparative models. It is recommended from this work that the ensemble learning technique integrating the rough knowledge synchronously improves the sensitivity and regression capacity of the model.
机译:制造质量的预测是现代企业生产管理,它提供了数据支持的可靠性评估和参数优化,从而提高企业的智能化管理水平,有助于以较低的成本实现高品质的产品显著关注的问题之一。在本文中,用粗糙的知识的集成学习框架,提出了生产质量预测。该模型包括三个要素:(1)在不同的生产阶段显著参数基于属性约简和粗集理论(RS)的决策规则提取被选择,(2)长短期记忆网络(LSTM)被用于构建(3)显著参数和制造质量,和之间的关系的LSTM的学习性能由AdaBoost的方法加强。为了估计该模型的有效性,该公司的生产质量控制比赛数据集应用和六个模型进行了研究。对比实验表明,该模型压倒一切的模式比较根均方误差阈值的统计和残留量的分析方面。此外,该模型具有从所有的比较模型统计显著差异。正是从这个工作的集成学习技术整合粗糙知识同步提高了模型的灵敏度和回归容量建议。

著录项

  • 来源
    《Computers & Industrial Engineering》 |2021年第5期|107227.1-107227.10|共10页
  • 作者单位

    School of Management Science and Engineering Chongqing Technology and Business University Chongqing 400067 China Faculty of Science and Technology University of Algarve Faro Portugal;

    Chongqing Academy of Big Data Chongqing 401123 China;

    Chongqing Academy of Big Data Chongqing 401123 China;

    School of Management Science and Engineering Chongqing Technology and Business University Chongqing 400067 China;

    School of Management Science and Engineering Chongqing Technology and Business University Chongqing 400067 China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Manufacturing quality; Prediction; Rough set; Long short-term memory; AdaBoost ensemble learning;

    机译:制造质量;预言;粗糙集;短期内记忆长;Adaboost Ensemble学习;

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