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首页> 外文期刊>Journal of Mechanical Science and Technology >Real-time quality monitoring and control system using an integrated cost effective support vector machine
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Real-time quality monitoring and control system using an integrated cost effective support vector machine

机译:使用综合成本效益支持向量机的实时质量监控系统

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摘要

The quality monitoring and control (QMC) has been an essential process in the manufacturing industries. With the advancements in data analytics, machine-learning based QMC has become popular in various manufacturing industries. At the same time, the cost effectiveness (CE) of the QMC is perceived as a main decision criterion that explicitly accounts for inspection efforts and has a direct relationship with the QMC capability. In this paper, the cost-effective support vector machine (CESVM)-based automated QMC system (QMCS) is proposed. Unlike existing models, the proposed CESVM explicitly incorporates inspection-related expenses and error types in the SVM algorithm. The proposed automated QMCS is verified and validated using an automotive door-trim manufacturing process. Next, we perform a design of experiment to assess the sensitivity analysis of the proposed framework. The proposed model is found to be effective and could be viewed as an alternative or complementary tool for the traditional quality inspection system.
机译:质量监测和控制(QMC)是制造业的重要过程。随着数据分析的进步,基于机器学习的QMC在各种制造业中都变得流行。与此同时,QMC的成本效益(CE)被认为是一个主要决策标准,明确地占检查工作的账户,并与QMC能力直接关系。本文提出了成本效益的支持向量机(CESVM)自动QMC系统(QMC)。与现有模型不同,所提出的CESVM在SVM算法中明确地融入了检查相关费用和错误类型。使用汽车门修剪制造过程进行验证和验证所提出的自动QMC。接下来,我们执行实验的设计,以评估所提出的框架的灵敏度分析。发现拟议的模型是有效的,并且可以被视为传统质量检测系统的替代或互补工具。

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