205
Views
6
CrossRef citations to date
0
Altmetric
Research Article

Adaptive multivariate EWMA charts for monitoring sparse mean shifts based on parameter optimization design

, &
Pages 2670-2683 | Received 18 Dec 2020, Accepted 13 Mar 2021, Published online: 30 Mar 2021

References

  • Zou CL, Wang ZJ, Zi XM, et al. An efficient online monitoring method for high-dimensional data streams. Technometrics. 2015;57(3):374–387.
  • Das A, Suman S, Sinha AK. Development of multivariate process monitoring strategy for a typical process industry. Int J Product Quality Manag. 2017;22(1):1–21.
  • Vial F, Wei W, Held L. Methodological challenges to multivariate syndromic surveillance: a case study using Swiss animal health data. BMC Vet Res. 2016;12(1):288.
  • Pittavino M. Additive Bayesian networks for multivariate data: parameter learning, model fitting and applications in veterinary epidemiology[PhD thesis]. University of Zurich; 2016.
  • Hotelling H. Multivariate quality control. Techniques of statistical analysis. 1947.
  • Lowry CA, Montgomery DC. A review of multivariate control charts. IIE Trans. 1995;27(6):800–810.
  • Woodall WH, Montgomery DC. Some current directions in the theory and application of statistical process monitoring. J Quality Technol. 2014;46(1):78–94.
  • Wang KB, Jiang W. High-dimensional process monitoring and fault isolation via variable selection. J Quality Technol. 2009;41(3):247–258.
  • Hawkins DM. Multivariate quality control based on regression-adiusted variables. Technometrics. 1991;33(1):61–75.
  • Hawkins DM. Regression adjustment for variables in multivariate quality control. J Quality Technol. 1993;25(3):170–182.
  • Zamba KD, Hawkins DM. A multivariate change-point model for statistical process control. Technometrics. 2006;48(4):539–549.
  • Jiang W, Wang KB, Tsung F. A variable-selection-based multivariate EWMA chart for process monitoring and diagnosis. J Quality Technol. 2012;44(3):209–230.
  • Nishimura K, Matsuura S, Suzuki H. Multivariate EWMA control chart based on a variable selection using AIC for multivariate statistical process monitoring. Stat Probab Lett. 2015;104:7–13.
  • Zou CL, Wang ZJ, Tsung F. A spatial rank-based multivariate EWMA control chart. Naval Res Logistics (NRL). 2012;59(2):91–110.
  • Li WD, Pu XL, Tsung F, et al. A robust self-starting spatial rank multivariate EWMA chart based on forward variable selection. Comput Indust Eng. 2017;103:116–130.
  • Zou CL, Qiu PH. Multivariate statistical process control using LASSO. J Am Stat Assoc. 2009;104(488):1586–1596.
  • Zou CL, Jiang W, Tsung F. A LASSO-based diagnostic framework for multivariate statistical process control. Technometrics. 2011;53(3):297–309.
  • Abdella GM, Al-Khalifa KN, Kim S, et al. Variable selection-based multivariate cumulative sum control chart. Quality Reliab Eng Int. 2017;33(3):565–578.
  • Lucas JM. Combined Shewhart-CUSUM quality control schemes. J Quality Technol. 1982;14(2):51–59.
  • Sparks RS. CUSUM charts for signalling varying location shifts. J Quality Technol. 2000;32(2):157–171.
  • Zhao Y, Tsung F, Wang ZJ. Dual CUSUM control schemes for detecting a range of mean shiftsl. IIE Trans. 2005;37(11):1047–1057.
  • Jiang W, Tsui KL. A theoretical framework and efficiency study of multivariate statistical process control charts. IIE Trans. 2008;40(7):650–663.
  • Zaman B, Riaz M, Abbas N, et al. Mixed cumulative sum–exponentially weighted moving average control charts: an efficient way of monitoring process location. Qual Reliab Eng Int. 2015;31(8):1407–1421.
  • Capizzi G, Masarotto G. An adaptive exponentially weighted moving average control chart. Technometrics. 2003;45(3):199–207.
  • Shu LJ. An adaptive exponentially weighted moving average control chart for monitoring process variances. J Stat Comput Simul. 2008;78(4):367–384.
  • Hu XL, Castagliola P, Zhong JL, et al. On the performance of the adaptive EWMA chart for monitoring time between events. J Stat Comput Simul. 2020;10:1–37.
  • Ryu JH, Wan G, Kim SJ. Optimal design of a CUSUM chart for a mean shift of unknown size. J Quality Technol. 2010;42(3):311–326.
  • Lowry CA, Champ CW, Rigdon SE. A multivariate exponentially weighted moving average control chart. Technometrics. 1992;34(1):46–53.
  • Siegmund D. Sequential analysis: tests and confidence intervals. New York: Springer Science and Business Media; 2013.
  • Prabhu SS, Runger GC. Designing a multivariate EWMA control chart. J Quality Technol. 1997;29(1):8–15.
  • Reynolds Jr MR, Lou JY. An evaluation of a GLR control chart for monitoring the process mean. J Quality Technol. 2010;42(3):287–310.
  • Knoth S. ARL numerics for MEWMA charts. J Quality Technol. 2017;49(1):78–89.

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.