717
Views
9
CrossRef citations to date
0
Altmetric
Original Articles

The application of multivariate statistical process monitoring in non-industrial processes

, &
Pages 526-549 | Accepted 18 Aug 2016, Published online: 14 Sep 2016

References

  • Abdollahian, M., Ahmad, S., & Huda, S. (2011). Multivariate control charts for surgical procedures. In Proceedings of the 4th International Symposium on Applied Sciences in Biomedical and Communication Technologies (p. 18). Barcelona: ACM.
  • Abduvaliyev, A., Pathan, A.-S. K., Zhou, J., Roman, R., & Wong, W.-C. (2013). On the vital areas of intrusion detection systems in wireless sensor networks. IEEE Communications Surveys & Tutorials, 15(3), 1223–1237.
  • Abouzakhar, N., & Bakar, A. (2010). A chi-square testing-based intrusion detection model. Proceedings of the 4th International Conference on Cybercrime Forensics Education & Training, Canterbury, UK.
  • Aebtarm, S., & Bouguila, N. (2010). An optimal bivariate Poisson field chart for controlling high-quality manufacturing processes. Expert Systems with Applications, 37(7), 5498–5506.
  • Aghaie, A., Samimi, Y., & Asadzadeh, S. (2010). Monitoring and diagnosing a two-stage production process with attribute characteristics. Iranian Journal of Operations Research, 2(1), 1–16.
  • Alt, F. B., & Smith, N. D. (1988). Multivariate process control. Handbook of Statistics, 7, 333–351.
  • Anderson, M. J., & Thompson, A. A. (2004). Multivariate control charts for ecological and environmental monitoring. Ecological Applications, 14(6), 1921–1935.
  • Aparisi, F., García-Bustos, S., & Epprecht, E. K. (2014). Optimum multiple and multivariate Poisson statistical control charts. Quality and Reliability Engineering International, 30(2), 221–234.
  • Balakrishnan, N., Bersimis, S., & Koutras, M. V. (2009). Run and frequency quota rules in process monitoring and acceptance sampling. Journal of Quality Technology, 41(1), 66–81.
  • Bersimis, S., Psarakis, S., & Panaretos, J. (2007). Multivariate statistical process control charts: An overview. Quality and Reliability Engineering International, 23(5), 517–543.
  • Bersimis, S., & Triantafyllopoulos, K. (2015). Dynamic non-parametric monitoring of air-pollution, under review.
  • Bodnar, O. (2009). Application of the generalized likelihood ratio test for detecting changes in the mean of multivariate GARCH processes. Communications in Statistics-Simulation and Computation, 38(5), 919–938.
  • Bodnar, O., & Schmid, W. (2011). CUSUM charts for monitoring the mean of a multivariate Gaussian process. Journal of Statistical Planning and Inference, 141(6), 2055–2070.
  • Burgas, L., Melendez, J., Colomer, J., Massana, J., & Pous, C. (2015). Multivariate statistical monitoring of buildings. case study: Energy monitoring of a social housing building. Energy and Buildings, 103, 338–351.
  • Burggraeve, A., Van Den Kerkhof, T., Hellings, M., Remon, J. P., Vervaet, C., & De Beer, T. (2011). Understanding fluidized-bed granulation. Pharmaceutical Technology, 35(8), 63–67.
  • Capizzi, G. (2015). Recent advances in process monitoring: Nonparametric and variable-selection methods for phase I and phase II. Quality Engineering, 27(1), 44–67.
  • Capizzi, G., & Masarotto, G. (2009). An enhanced residual MEWMA control chart for monitoring autocorrelated data. In Proceedings of the IEEE International Conference on Industrial Engineering and Engineering Management (pp. 453–457). Beijing: IEEE.
  • Chakraborti, S., Van der Laan, P., & Bakir, S. T. (2001). Nonparametric control charts: an overview and some results. Journal of Quality Technology, 33(3), 304.
  • Chen, Y., & Durango-Cohen, P. L. (2015). Development and field application of a multivariate statistical process control framework for health-monitoring of transportation infrastructure. Transportation Research Part B: Methodological, 81, 78–102.
  • Chiu, J.-E., & Kuo, T.-I. (2007). Attribute control chart for multivariate Poisson distribution. Communications in Statistics-Theory and Methods, 37(1), 146–158.
  • Chiu, J.-E., & Kuo, T.-I. (2010). Control charts for fraction nonconforming in a bivariate binomial process. Journal of Applied Statistics, 37(10), 1717–1728.
  • Chou, Y.-M., Mason, R. L., & Young, J. C. (2001). The control chart for individual observations from a multivariate non-normal distribution. Communications in Statistics-Theory and Methods, 30(8–9), 1937–1949.
  • Clavaud, M., Roggo, Y., Von Daeniken, R., Liebler, A., & Schwabe, J.-O. (2013). Chemometrics and in-line near infrared spectroscopic monitoring of a biopharmaceutical Chinese hamster ovary cell culture: Prediction of multiple cultivation variables. Talanta, 111, 28–38.
  • Coleman, J. L., & Nickerson, J. (2005). A multivariate exponentially weighted moving average control chart for photovoltaic processes. In Photovoltaic Specialists Conference, 2005. Conference Record of the Thirty-first IEEE (pp. 1281–1284). IEEE.
  • Correia, F., Nêveda, R., & Oliveira, P. (2011). Chronic respiratory patient control by multivariate charts. International journal of health care quality assurance, 24(8), 621–643.
  • Costa, F. S. L., Pedroza, R. H. P., Porto, D. L., Amorim, M. V. P., & Lima, K. M. G. (2015). Multivariate control charts for simultaneous quality monitoring of isoniazid and rifampicin in a pharmaceutical formulation using a portable near infrared spectrometer. Journal of the Brazilian Chemical Society, 26(1), 64–73.
  • Cozzucoli, P. C. (2009). Process monitoring with multivariate p-control chart. International Journal of Quality, Statistics, and Reliability, 2009, Article ID 707583 (11 pages). doi:10.1155/2009/707583
  • Crosier, R. B. (1988). Multivariate generalizations of cumulative sum quality-control schemes. Technometrics, 30(3), 291–303.
  • de Carvalho Rocha, W. F., & Poppi, R. J. (2010). Multivariate control charts based on net analyte signal (nas) for characterization of the polymorphic composition of piroxicam using near infrared spectroscopy. Microchemical Journal, 96(1), 21–26.
  • de Carvalho Rocha, W. F., Martins, J. A., & Poppi, R. J. (2010). Multivariate control charts based on net analyte signal and near infrared spectroscopy for quality monitoring of nimesulide in pharmaceutical formulations. Journal of Molecular Structure, 982(1), 73–78.
  • de Lima, S. M., Silva, B. F. A., Pontes, D. V., Pereira, C. F., Stragevitch, L., & Pimentel, M. F. (2014). In-line monitoring of the transesterification reactions for biodiesel production using nir spectroscopy. Fuel, 115, 46–53.
  • Dechert, J., & Case, K. E. (1998). Multivariate approach to quality control in clinical chemistry. Clinical Chemistry, 44(9), 1959–1963.
  • Deraemaeker, A., Reynders, E., De Roeck, G., & Kullaa, J. (2008). Vibration-based structural health monitoring using output-only measurements under changing environment. Mechanical Systems and Signal Processing, 22(1), 34–56.
  • Dokouhaki, P., & Noorossana, R. (2013). A Copula Markov CUSUM chart for monitoring the bivariate auto-correlated binary observations. Quality and Reliability Engineering International, 29(6), 911–919.
  • Duran, R. I., & Albin, S. L. (2009). Monitoring and accurately interpreting service processes with transactions that are classified in multiple categories. IIE Transactions, 42(2), 136–145.
  • Dvorkin, V. (2001). Intralaboratory quality control of chemical analysis with reference materials at disposal. Journal of Analytical Chemistry, 56(7), 613–625.
  • Ennis, D. M., & Bi, J. (2000). Multivariate quality control with applications to sensory data. Journal of Food Quality, 23(6), 541–552.
  • Eppe, G., & De Pauw, E. (2009). Advances in quality control for dioxins monitoring and evaluation of measurement uncertainty from quality control data. Journal of Chromatography B, 877(23), 2380–2387.
  • Faraz, A., Heuchenne, C., Saniga, E., & Foster, E. (2013). Monitoring delivery chains using multivariate control charts. European Journal of Operational Research, 228(1), 282–289.
  • Fricker Jr, R. D. (2007). Directionally sensitive multivariate statistical process control methods with application to syndromic surveillance. Advances in Disease Surveillance, 3(1), 1–17.
  • Frisén, M. (2008). Financial surveillance (Vol. 71). Chichester: John Wiley & Sons.
  • Frisén, M., Andersson, E., & Schiöler, L. (2010). Evaluation of multivariate surveillance. Journal of Applied Statistics, 37(12), 2089–2100.
  • Gad, S. C. (1989). Statistical analysis of screening studies in toxicology with special emphasis on neurotoxicology. International Journal of Toxicology, 8(1), 171–183.
  • Garcia-Teodoro, P., Diaz-Verdejo, J., Maciá-Fernández, G., & Vázquez, E. (2009). Anomaly-based network intrusion detection: Techniques, systems and challenges. Computers & Security, 28(1), 18–28.
  • George, J. P., Chen, Z., & Shaw, P. (2009). Fault detection of drinking water treatment process using PCA and hotelling’s T2 chart. World Academy of Science. Engineering and Technology, 50, 970–975.
  • Ghobadi, S., Noghondarian, K., Rassoul Noorossana, S. M., & Mirhosseini, S. (2014). Developing a multivariate approach to monitor fuzzy quality profiles. Quality & Quantity, 48(2), 817–836.
  • Golosnoy, Vasyl, Okhrin, Iryna, & Schmid, Wolfgang (2010). New characteristics for portfolio surveillance. Statistics, 44(3), 303–321.
  • Golosnoy, Vasyl, Ragulin, Sergiy, & Schmid, Wolfgang (2011). CUSUM control charts for monitoring optimal portfolio weights. Computational Statistics & Data Analysis, 55(11),2991–3009.
  • Gonzalez-de la Parra, M., & Rodriguez-Loaiza, P. (2003). Application of the multivariate T2 control chart and the Mason-Tracy-Young decomposition procedure to the study of the consistency of impurity profiles of drug substances. Quality Engineering, 16(1), 127–142.
  • Guardiola, I. G., Leon, T., & Mallor, F. (2014). A functional approach to monitor and recognize patterns of daily traffic profiles. Transportation Research Part B: Methodological, 65, 119–136.
  • Harrou, F., Kadri, F., Chaabane, S., Tahon, C., & Sun, Y. (2015). Improved principal component analysis for anomaly detection: Application to an emergency department. Computers & Industrial Engineering, 88, 63–77.
  • Hart, M. K., Lee, K. Y., Hart, R. F., & Robertson, J. W. (2003). Application of attribute control charts to risk-adjusted data for monitoring and improving health care performance. Quality Management in Healthcare, 12(1), 5–19.
  • Hernandez-Garcia, M. R., & Masri, S. F. (2013). Application of statistical monitoring using latent-variable techniques for detection of faults in sensor networks. Journal of Intelligent Material Systems and Structures, 25, 121–136.
  • Hotelling, H. (1947). Multivariate quality control illustrated by the air testing of sample bomb sights, Techniques of Statistical Analysis, Ch. II. New York, NY: McGraw-Hill.
  • Hou, C.-D., Shao, Y. E., & Huang, S. (2013). A combined MLE and generalized P chart approach to estimate the change point of a multinomial process. Appl. Math, 7(4), 1487–1493.
  • Jackson, J. E. (1991). A user’s guide to principal components (Vol. 587). New York, NY: John Wiley & Sons.
  • Jiang, W., Han, S. W., Tsui, K.-L., & Woodall, W. H. (2011). Spatiotemporal surveillance methods in the presence of spatial correlation. Statistics in Medicine, 30(5), 569–583.
  • Joner Jr, M. D., Woodall, W. H., Reynolds, M. R., & Fricker Jr, R. D. (2008). A one-sided MEWMA chart for health surveillance. Quality and Reliability Engineering International, 24(5), 503–518.
  • Karvounidis, T., Chimos, K., Bersimis, S., & Douligeris, C. (2014). Evaluating web 2.0 technologies in higher education using students’ perceptions and performance. Journal of Computer Assisted Learning, 30(6), 577–596.
  • Khoo, M. B., Wu, Z., Castagliola, P., & Lee, H. (2013). A multivariate synthetic double sampling T2 control chart. Computers & industrial Engineering, 64(1), 179–189.
  • Kim, H., Smith, J., & Shin, K. G. (2008). Detecting energy-greedy anomalies and mobile malware variants. In Proceedings of the 6th international conference on mobile systems, applications, and services (pp. 239-252). Breckenridge, CO: ACM.
  • Kirdar, A. O., Conner, J. S., Baclaski, J., & Rathore, A. S. (2007). Application of multivariate analysis toward biotech processes: Case study of a cell-culture unit operation. Biotechnology Progress, 23(1), 61–67.
  • Kona, R., Qu, H., Mattes, R., Jancsik, B., Fahmy, R. M., & Hoag, S. W. (2013). Application of in-line near infrared spectroscopy and multivariate batch modeling for process monitoring in fluid bed granulation. International Journal of Pharmaceutics, 452(1), 63–72.
  • Kullaa, J. (2003). Damage detection of the z24 bridge using control charts. Mechanical Systems and Signal Processing, 17(1), 163–170.
  • Kusiak, A., & Verma, A. (2013). Monitoring wind farms with performance curves. IEEE Transactions on Sustainable Energy, 4(1), 192–199.
  • Laungrungrong, B., Borror, C. M., & Montgomery, D. C. (2011). EWMA control charts for multivariate Poisson-distributed data. International Journal of Quality. Engineering and Technology, 2(3), 185–211.
  • Laungrungrong, B., Borror, C. M., & Montgomery, D. C. (2014). A one-sided MEWMA control chart for Poisson-distributed data. International Journal of Data Analysis Techniques and Strategies, 6(1), 15–42.
  • Laursen, K., Rasmussen, M. A., & Bro, R. (2011). Comprehensive control charting applied to chromatography. Chemometrics and Intelligent Laboratory Systems, 107(1), 215–225.
  • Lee, M. L., Goldsman, D., & Kim, S.-H. (2015). Robust distribution-free multivariate CUSUM charts for spatiotemporal biosurveillance in the presence of spatial correlation. IIE Transactions on Healthcare Systems Engineering, 5(2), 74–88.
  • Lee, M. H., Khoo, M. B. C., & Xie, M. (2014). An optimal control procedure based on multivariate synthetic cumulative sum. Quality and Reliability Engineering International, 30(7), 1049–1058.
  • Lee, S. L., & Djauhari, M. A. (2013). Quality control in cocoa powder production process: A robust MSPC approach. Jurnal Teknologi, 63(2), 41–44.
  • Li, J. (2015). Nonparametric multivariate statistical process control charts: A hypothesis testing-based approach. Journal of Nonparametric Statistics, 27(3), 384–400.
  • Li, J., Tsung, F., & Zou, C. (2013). Directional change-point detection for process control with multivariate categorical data. Naval Research Logistics (NRL), 60(2), 160–173.
  • Li, J., Tsung, F., & Zou, C. (2014). Multivariate binomial/multinomial control chart. IIE Transactions, 46(5), 526–542.
  • Li, Y., & Tsung, F. (2012). Multiple attribute control charts with false discovery rate control. Quality and Reliability Engineering International, 28(8), 857–871.
  • Li, Y., & Xi, L. (2010). Statistical process control of over-dispersed multivariate count data. In: Proceedings of the 17th IEEE International Conference on Industrial Engineering and Engineering Management (IE &EM) (pp. 888–892). Xiamen: IEEE.
  • Liao, H.-J., Lin, C.-H. R., Lin, Y.-C., & Tung, K.-Y. (2013). Intrusion detection system: A comprehensive review. Journal of Network and Computer Applications, 36(1), 16–24.
  • Liu, R. Y. (1995). Control charts for multivariate processes. Journal of the American Statistical Association, 90(432), 1380–1387.
  • Lourenço, V., Lochmann, D., Reich, G., Menezes, J. C., Herdling, T., & Schewitz, J. (2012). A quality by design study applied to an industrial pharmaceutical fluid bed granulation. European Journal of Pharmaceutics and Biopharmaceutics, 81(2), 438–447.
  • Lowry, C. A., & Montgomery, D. C. (1995). A review of multivariate control charts. IIE Transactions, 27(6), 800–810.
  • Lu, X. S. (1998). Control chart for multivariate attribute processes. International Journal of Production Research, 36(12), 3477–3489.
  • MacCarthy, B. L., & Wasusri, T. (2002). A review of non-standard applications of statistical process control (spc) charts. International Journal of Quality & Reliability Management, 19(3), 295–320.
  • Maravelakis, P. E., Bersimis, S., Panaretos, J., & Psarakis, S. (2002). Identifying the out of control variable in a multivariate control chart. Communications in Statistics-theory and Methods, 31(12), 2391–2408.
  • Martins, R. C., Oliveira, R., Bento, F., Geraldo, D., Lopes, V. V., Guedes de Pinho, P., Oliveira, C. M., & Silva Ferreira, A. C. (2008). Oxidation management of white wines using cyclic voltammetry and multivariate process monitoring. Journal of Agricultural and Food Chemistry, 56(24),12092–12098.
  • Maruthappu, M., Carty, M. J., Lipsitz, S. R., Wright, J., Orgill, D., & Duclos, A. (2014). Patient-and surgeon-adjusted control charts for monitoring performance. BMJ open, 4(1), e004046.
  • Matias, R., Carvalho, A. M. M., Araujo, L. B. & Maciel, P. R. M. (2011). Comparison analysis of statistical control charts for quality monitoring of network traffic forecasts. In Proceedings of the IEEE International Conference on Systems, Man, and Cybernetics (SMC) (pp. 404–409). Anchorage, AK.
  • McGinty, N., Power, A. M., & Johnson, M. P. (2012). Trophodynamics and stability of regional scale ecosystems in the Northeast Atlantic. ICES Journal of Marine Science: Journal du Conseil, 69, 764–775.
  • Megahed, F. M., & Jones-Farmer, L. A. (2015). A statistical process monitoring perspective on “Big Data”. Frontiers in Statistical Quality Control, 11, 29–48.
  • Megahed, F. M., Woodall, W. H., & Camelio, J. A. (2011). A review and perspective on control charting with image data. Journal of Quality Technology, 43(2), 83–98.
  • Mertens, K., Decuypere, E., De Baerdemaeker, J., & De Ketelaere, B. (2011). Statistical control charts as a support tool for the management of livestock production. The Journal of Agricultural Science, 149(03), 369–384.
  • Miekley, B., Stamer, E., Traulsen, I., & Krieter, J. (2013). Implementation of multivariate cumulative sum control charts in mastitis and lameness monitoring. Journal of Dairy Science, 96(9),5723–5733.
  • Miekley, B., Traulsen, I., & Krieter, J. (2013). Principal component analysis for the early detection of mastitis and lameness in dairy cows. Journal of Dairy Research, 80(03), 335–343.
  • Mitchell, R., & Chen, I.-R. (2014). A survey of intrusion detection techniques for cyber-physical systems. ACM Computing Surveys (CSUR), 46(4), 1–55.
  • Montgomery, D. C., & Woodall, W. H. (1999). Research issues and ideas in statistical process control. Journal of Quality Technology, 31(4), 376–387.
  • Morrison, L. W. (2008). The use of control charts to interpret environmental monitoring data. Natural Areas Journal, 28(1), 66–73.
  • Motoyama, M., Meeder, B., Levchenko, K., Voelker, G. M., & Savage, S. (2010). Measuring online service availability using twitter. In: Proceedings of the 3rd Workshop on Online Social Networks (WONS 2010) (pp. 13–13). Boston, MA.
  • Murgatroyd, H., Jones, J., Kola, S., & George, D. (2012). Cumulative sum scoring for medical students. The Clinical Teacher, 9(4), 233–237.
  • Nezhad, M. S. F., & Niaki, S. T. A. (2013). A Max-EWMA approach to monitor and diagnose faults of multivariate quality control processes. The International Journal of Advanced Manufacturing Technology, 68(9–12), 2283–2294.
  • Niaki, S. T. A., & Abbasi, B. (2007). Skewness reduction approach in multi-attribute process monitoring. Communications in Statistics-theory and Methods, 36(12), 2313–2325.
  • Niaki, S. T. A., & Khedmati, M. (2012). Detecting and estimating the time of a step-change in multivariate Poisson processes. Scientia Iranica, 19(3), 862–871.
  • Ning, X., Shang, Y., & Tsung, F. (2009). Statistical process control techniques for service processes: A review. In Proceedings of the 6th International Conference on Service Systems and Service Management (pp. 927–931).
  • Noorossana, R., Saghaei, A., & Amiri, A. (2011). Statistical analysis of profile monitoring. John Wiley & Sons.
  • Ortiz-Estarelles, O., Martın-Biosca, Y., Medina-Hernández, M. J., Sagrado, S., & Bonet-Domingo, E. (2001). On the internal multivariate quality control of analytical laboratories. a case study: The quality of drinking water. Chemometrics and Intelligent Laboratory Systems, 56(2), 93–103.
  • Palau, C. V., Arregui, F. J., & Carlos, M. (2011). Burst detection in water networks using principal component analysis. Journal of Water Resources Planning and Management, 138(1), 47–54.
  • Palau, C. V., Arregui, F., & Ferrer, A. (2004). Using multivariate principal component analysis of injected water flows to detect anomalous behaviors in a water supply system – a case study. Water Science & Technology: Water Supply, 4(3), 169–181.
  • Patcha, A., & Park, Jung-Min (2007). An overview of anomaly detection techniques: Existing solutions and latest technological trends. Computer Networks, 51(12), 3448–3470.
  • Patel, A., Taghavi, M., Bakhtiyari, K., & Júnior, J. C. (2013). An intrusion detection and prevention system in cloud computing: A systematic review. Journal of Network and Computer Applications, 36(1), 25–41.
  • Patel, H. I. (1973). Quality control methods for multivariate binomial and Poisson distributions. Technometrics, 15(1), 103–112.
  • Peter, W. T., Hu, J., Shrivastava, A. K., & Tsui, K. L. A multivariate control chart for detecting a possible outbreak of disease. In Proceedings of the 7th World Congress on Engineering Asset Management (WCEAM 2012) (pp. 593–603). Daejeon City: Springer.
  • Pignatiello, J. J., & Runger, G. C. (1990). Comparisons of multivariate CUSUM charts. Journal of Quality Technology, 22(3), 173–186.
  • Psarakis, S., & Papaleonida, G. E. A. (2007). SPC procedures for monitoring autocorrelated processes. Quality Technology and Quantitative Management, 4(4), 501–540.
  • Rogerson, P. A., & Yamada, I. (2004). Monitoring change in spatial patterns of disease: Comparing univariate and multivariate cumulative sum approaches. Statistics in Medicine, 23(14), 2195–2214.
  • Rolka, H., Burkom, H., Cooper, G. F., Kulldorff, M., Madigan, D., & Wong, W.-K. (2007). Issues in applied statistics for public health bioterrorism surveillance using multiple data streams: research needs. Statistics in Medicine, 26(8), 1834.
  • Rosas, J. G., Blanco, M., González, J. M., & Alcalá, M. (2011). Quality by design approach of a pharmaceutical gel manufacturing process, part 2: Near infrared monitoring of composition and physical parameters. Journal of Pharmaceutical Sciences, 100(10), 4442–4451.
  • Ryan, T. P. (2011). Statistical methods for quality improvement. John Wiley & Sons.
  • Saghir, A., & Lin, Z. (2014). Control chart for monitoring multivariate COM-Poisson attributes. Journal of Applied Statistics, 41(1), 200–214.
  • Samimi, Y., & Aghaie, A. (2008). Monitoring usage behavior in subscription-based services using control charts for multivariate attribute characteristics. In Proceedings of the IEEE International Conference on Industrial Engineering and Engineering Management (pp. 1469–1474). Singapore.
  • Schiöler, L., & Frisén, M. (2012). Multivariate outbreak detection. Journal of Applied Statistics, 39(2), 223–242.
  • Shaban, M. (2014). Drainage water reuse: State of control and process capability evaluation. Water, Air, & Soil Pollution, 225(11), 1–15.
  • Shabtai, A., Kanonov, U., Elovici, Y., Glezer, C., & Weiss, Y. (2012). Andromaly: A behavioral malware detection framework for android devices. Journal of Intelligent Information Systems, 38(1), 161–190.
  • Shaukat, K., Montgomery, D. C., & Syrotiuk, V. R. (2011). Adaptive overhead reduction via MEWMA control charts. In Proceedings of the 14th ACM International Conference on Modeling, Analysis and Simulation of Wireless and Mobile Systems (pp. 205–212). Miami Beach, FL: ACM.
  • Shaukat, K., & Syrotiuk, V. R. (2008). Using monitoring to control a proactive routing protocol. Ad Hoc & Sensor. Wireless Networks, 6(3–4), 299–319.
  • Shaukat, K., & Syrotiuk, V. R. (2013). Using local conditions to reduce control overhead. Ad Hoc Networks, 11(6), 1782–1795.
  • Shmueli, G., & Burkom, H. (2010). Statistical challenges facing early outbreak detection in biosurveillance. Technometrics, 52(1), 39–51.
  • Shmueli, G., & Fienberg, S. E. (2006). Current and potential statistical methods for monitoring multiple data streams for biosurveillance. In A. G. Wilson, G. D. Wilson, & D. H. Olwell. (Eds.), Statistical Methods in Counterterrorism (pp. 109–140). New York, NY: Springer.
  • Shojaei, S. N., & Niaki, S. T. A. (2013). A risk-adjusted multi-attribute cumulative sum control scheme in health-care systems. In Proceedings of the 2013 IEEE International Conference on Industrial Engineering and Engineering Management (IEEM) (pp. 1102–1106). Bangkok.
  • Skibsted, E. T. S., Boelens, H. F. M., Westerhuis, J. A., Smilde, A. K., Broad, N. W., Rees, D. R., & Witte, D. T. (2005). Net analyte signal based statistical quality control. Analytical Chemistry, 77(22), 7103–7114.
  • \’{S}liwa, P., & Schmid, W. (2005a). Monitoring the cross- s of a multivariate time series. Metrika, 61(1), 89–115.
  • \’{S}liwa, P., & Schmid, W. (2005b). Surveillance of the covariance matrix of multivariate nonlinear time series. Statistics, 39(3), 221–246.
  • Steiner, S. H., Cook, R. J., Farewell, V. T., & Treasure, T. (1999). Monitoring paired binary surgical outcomes using cumulative sum charts. Statistics in Medicine, 18(1), 69–86.
  • Stoumbos, Z. G., & Reynolds Jr, M. R. (2000). Robustness to non-normality and autocorrelation of individuals control charts. Journal of Statistical Computation and Simulation, 66(2), 145–187.
  • Stringell, T. B., Bamber, R. N., Burton, M., Lindenbaum, C., Skates, L. R., & Sanderson, W. G. (2013). A tool for protected area management: multivariate control charts cope with rare variable communities. Ecology and Evolution, 3(6), 1667–1676.
  • Taleb, H. (2009). Control charts applications for multivariate attribute processes. Computers & Industrial Engineering, 56(1), 399–410.
  • Tan, W., Sun, Y., Li, L., & Tang, A. (2014). Multivariate quality control chart for monitoring SLA of workflow applications. In Proceedings of the 2014 IEEE 18th International Conference on Computer Supported Cooperative Work in Design (CSCWD) (pp. 667–671). Hsinchu.
  • Tavallaee, M., Iqbal, S. A., & Ghorbani, A. (2008). A novel covariance matrix based approach for detecting network anomalies. In Proceedings of the 6th Annual Communication Networks and Services Research Conference (CNSR 2008) (pp. 75–81). Halifax.
  • Topalidou, E., & Psarakis, S. (2009). Review of multinomial and multiattribute quality control charts. Quality and Reliability Engineering International, 25(7), 773–804.
  • Tôrres, A. R., Grangeiro, S., & Fragoso, W. D. (2015). Multivariate control charts for monitoring captopril stability. Microchemical Journal, 118, 259–265.
  • Triantafyllopoulos, K. (2006). Multivariate control charts based on Bayesian state space models. Quality and Reliability Engineering International, 22(6), 693–707.
  • Tsui, K.-L., Chiu, W., Gierlich, P., Goldsman, D., Liu, X., & Maschek, T. (2008). A review of healthcare, public health, and syndromic surveillance. Quality Engineering, 20(4), 435–450.
  • Tsung, F., Li, Y., & Jin, M. (2008). Statistical process control for multistage manufacturing and service operations: A review and some extensions. International Journal of Services Operations and Informatics, 3(2), 191–204.
  • Vigni, M. L., Durante, C., Foca, G., Marchetti, A., Ulrici, A., & Cocchi, M. (2009). Near infrared spectroscopy and multivariate analysis methods for monitoring flour performance in an industrial bread-making process. Analytica Chimica Acta, 642(1), 69–76.
  • Vigni, M. L., Baschieri, C., Foca, G., Marchetti, A., Ulrici, A., & Cocchi, M. (2011). Flour and breads and their fortification in health and disease prevention. In V. Preedy, R. Watson, & V. Patel (Eds.), Monitoring flour performance in bread making (pp. 15–25). London: Academic Press.
  • Waterhouse, M., Smith, I., Assareh, H., & Mengersen, K. (2010). Implementation of multivariate control charts in a clinical setting. International Journal for Quality in Health Care.
  • Wold, S., Kettaneh, N., Fridén, H., & Holmberg, A. (1998). Modelling and diagnostics of batch processes and analogous kinetic experiments. Chemometrics and Intelligent Laboratory Systems, 44(1), 331–340.
  • Woodall, W. H. (2006). The use of control charts in health-care and public-health surveillance. Journal of Quality Technology, 38(2), 89–104.
  • Woodall, W. H. (2007). Current research on profile monitoring. Production, 17(3), 420–425.
  • Woodall, W. H., Marshall, J. B., Joner Jr, M. D., Fraker, S. E., & Abdel-Salam, A.-S. G. (2008). On the use and evaluation of prospective scan methods for health-related surveillance. Journal of the Royal Statistical Society: Series A (Statistics in Society), 171(1), 223–237.
  • Woodall, W. H., & Montgomery, D. C. (2014). Some current directions in the theory and application of statistical process monitoring. Journal of Quality Technology, 46(1), 78–94.
  • Xiong, H., Qi, X., & Haibin, Q. (2013). Multivariate analysis based on chromatographic fingerprinting for the evaluation of batch-to-batch reproducibility in traditional Chinese medicinal production. Analytical Methods, 5(2), 465–473.
  • Yahav, I., & Shmueli, G. (2014). Directionally sensitive multivariate control charts in practice: Application to biosurveillance. Quality and Reliability Engineering International, 30(2), 159–179.
  • Yan, H., Paynabar, K., & Shi, J. (2015). Image-based process monitoring using low-rank tensor decomposition. IEEE Transactions on Automation Science and Engineering, 12(1), 216–227.
  • Ye, N., & Chen, Q. (2001). An anomaly detection technique based on a chi-square statistic for detecting intrusions into information systems. Quality and Reliability Engineering International, 17(2), 105–112.
  • Ye, N., Emran, S. M., Chen, Q., & Vilbert, S. (2002). Multivariate statistical analysis of audit trails for host-based intrusion detection. IEEE Transactions on Computers, 51(7), 810–820.
  • Zeng, S., Chen, T., Wang, L., & Qu, H. (2013). Monitoring batch-to-batch reproducibility using direct analysis in real time mass spectrometry and multivariate analysis: A case study on precipitation. Journal of Pharmaceutical and Biomedical Analysis, 76, 87–95.
  • Zhang, J., Li, Z., & Wang, Z. (2010). A multivariate control chart for simultaneously monitoring process mean and variability. Computational Statistics & Data Analysis, 54(10), 2244–2252.

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.