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Journal of Quality Technology
A Quarterly Journal of Methods, Applications and Related Topics
Volume 33, 2001 - Issue 3
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Articles

Cusum Charts for Monitoring an Autocorrelated Process

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Pages 316-334 | Published online: 20 Feb 2018

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Binhui Wang, Zhifeng He & Lianjie Shu. (2023) A generalized exponentially weighted moving average control chart for monitoring autocorrelated vectors. Communications in Statistics - Simulation and Computation 52:6, pages 2559-2577.
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Ridwan A. Sanusi, Nasir Abbas & Muhammad Riaz. (2018) On efficient CUSUM-type location control charts using auxiliary information. Quality Technology & Quantitative Management 15:1, pages 87-105.
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Wenjuan Liang, Zhongyu Liu, Lingzhu Jin & Hongjian Wang. (2017) Case study: statistical monitoring for the moisture content of the cut tobacco. Journal of Industrial and Production Engineering 34:8, pages 551-557.
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Richard Osei-Aning, Saddam Akber Abbasi & Muhammad Riaz. (2017) Mixed EWMA-CUSUM and mixed CUSUM-EWMA modified control charts for monitoring first order autoregressive processes. Quality Technology & Quantitative Management 14:4, pages 429-453.
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Hanwool Kim & Sangyeol Lee. (2017) On first-order integer-valued autoregressive process with Katz family innovations. Journal of Statistical Computation and Simulation 87:3, pages 546-562.
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Bruno Chaves Franco, Giovanni Celano, Philippe Castagliola, Antonio Fernando Branco Costa & Marcela Aparecida Guerreiro Machado. (2015) A new sampling strategy for the Shewhart control chart monitoring a process with wandering mean. International Journal of Production Research 53:14, pages 4231-4248.
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Chih-Ching Yang & Su-Fen Yang. (2013) Optimal variable sample size and sampling interval ‘mean squared error’ chart. The Service Industries Journal 33:6, pages 652-665.
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Christian H. Weiß & Murat Caner Testik. (2009) CUSUM Monitoring of First-Order Integer-Valued Autoregressive Processes of Poisson Counts. Journal of Quality Technology 41:4, pages 389-400.
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Joongsup (Jay) Lee, Christos Alexopoulos, David Goldsman, Seong-Hee Kim, Kwok-Leung Tsui & JamesR. Wilson. (2009) Monitoring autocorrelated processes using a distribution-free tabular CUSUM chart with automated variance estimation. IIE Transactions 41:11, pages 979-994.
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Yu-Chang Lin. (2009) The Variable Parameters Control Charts for Monitoring Autocorrelated Processes. Communications in Statistics - Simulation and Computation 38:4, pages 729-749.
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Daniel W. Apley & Hyun Cheol Lee. (2008) Robustness Comparison of Exponentially Weighted Moving-Average Charts on Autocorrelated Data and on Residuals. Journal of Quality Technology 40:4, pages 428-447.
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Lianjie Shu, Wei Jiang & Kwok-Leung Tsui. (2008) A Weighted CUSUM Chart for Detecting Patterned Mean Shifts. Journal of Quality Technology 40:2, pages 194-213.
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Tzong-Ru Tsai, Shuo-Jye Wu, Jyh-Jiuan Lin & Yi-Ju Chen. (2007) Alternative estimation procedure in SPC when the process data are correlated. Journal of Statistical Computation and Simulation 77:7, pages 575-583.
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Vasyl Golosnoy & Wolfgang Schmid. (2007) EWMA Control Charts for Monitoring Optimal Portfolio Weights. Sequential Analysis 26:2, pages 195-224.
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Willis A. Jensen, L. Allison Jones-Farmer, Charles W. Champ & William H. Woodall. (2006) Effects of Parameter Estimation on Control Chart Properties: A Literature Review. Journal of Quality Technology 38:4, pages 349-364.
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F. K. Wang. (2005) A simple data transformation of auto-correlated data for SPC. International Journal of Production Research 43:5, pages 981-989.
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ABDELMONEM SNOUSSI, MOHAMED EL GHOURABI & MOHAMED LIMAM. (2005) On SPC for Short Run Autocorrelated Data. Communications in Statistics - Simulation and Computation 34:1, pages 219-234.
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John N. Dyer, Benjamin M. Adams & Michael D. Conerly. (2003) The Reverse Moving Average Control Chart for Monitoring Autocorrelated Processes. Journal of Quality Technology 35:2, pages 139-152.
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Orlando O. Atienza, L. C. Tang & B. W. Ang. (2002) A CUSUM Scheme for Autocorrelated Observations. Journal of Quality Technology 34:2, pages 187-199.
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George C. Runger. (2002) Assignable Causes and Autocorrelation: Control Charts for Observations or Residuals?. Journal of Quality Technology 34:2, pages 165-170.
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Daniel W. Apley & Fugee Tsung. (2002) The Autoregressive T2 Chart for Monitoring Univariate Autocorrelated Processes. Journal of Quality Technology 34:1, pages 80-96.
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