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Process improvement methodology based on multivariate statistical analysis methods

机译:基于多元统计分析方法的过程改进方法

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A systematic procedure for process improvement methodology is proposed based on multivariate statistical process control methods. To take advantage of a large amount of historical data, the procedure employs a combination of hierarchical clustering method and statistical process control methods to detect and analyze the key factors that significantly affect the performance of processes. This methodology consists of four sequential steps: (1) Data collection and multivariate statistical analysis; (2) hierarchical clustering and operation mode detection; (3) selection of dominant variables; (4) a new operational guideline and its validation. The proposed procedure was applied to improve the heat efficiency of an industrial hot stove system located at Pohang Iron & Steel Co. (POSCO) in Korea. The implementation results show that the proposed methodology helps us systematically improve the operating conditions of the hot stove system.
机译:提出了一种基于多元统计过程控制方法的过程改进方法的系统程序。为了利用大量的历史数据,该过程采用了层次聚类方法和统计过程控制方法的组合,以检测和分析对过程性能有重大影响的关键因素。该方法包括四个连续步骤:(1)数据收集和多元统计分析; (2)层次聚类和运行模式检测; (3)选择主导变量; (4)新的操作指南及其验证。拟议的程序用于提高位于韩国浦项钢铁公司(POSCO)的工业热风炉系统的热效率。实施结果表明,所提出的方法可以帮助我们系统地改善热风炉系统的运行条件。

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