A Linear Filtering Method for Statistical Process Control with Autocorrelated Data

자기상관 데이터의 통계적 공정관리를 위한 선형 필터 기법

  • Jin Chang-Ho ;
  • Apley Daniel W. (Department of Industrial Engineering and Management Sciences, Northwestern University)
  • 진창호 (경희대학교 기계.산업시스템공학부) ;
  • Published : 2006.05.01

Abstract

In many common control charting situations, the statistic to be charted can be viewed as the output of a linear filter applied to the sequence of process measurement data. In recent work that has generalized this concept, the charted statistic is the output of a general linear filter in impulse response form, and the filter is designed by selecting its impulse response coefficients in order to optimize its average run length performance. In this work, we restrict attention to the class of all second-order linear filters applied to the residuals of a time series model of the process data. We present an algorithm for optimizing the design of the second-order filter that is more computationally efficient and robust than the algorithm for optimizing the general linear filter. We demonstrate that the optimal second-order filter performs almost as well as the optimal general linear filter in many situations. Both methods share a number of interesting characteristics and are tuned to detect any distinct features of the process mean shift, as it manifests itself in the residuals.

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