Analytic tools; Automatic procedures; Bearing failures; Effective approaches; Internet of thing (IOT); Manufacturing industries; Smart manufacturing; Statistical process controls (SPC); Safety, Risk, Reliability and Quality
Abstract :
[en] Over the past decades, control charts, one of the essential tools in Statistical Process Control (SPC), have been widely implemented in manufacturing industries as an effective approach for Anomaly Detection (AD). Thanks to the development of technologies like the Internet of Things (IoT) and Artificial Intelligence (AI), Smart Manufacturing (SM) has become an important concept for expressing the end goal of digitization in manufacturing. However, SM requires a more automatic procedure with capabilities to deal with huge data from the continuous and simultaneous process. Hence, traditional control charts of SPC now find difficulties in reality activities including designing, pattern recognition, and interpreting stages. Machine Learning (ML) algorithms have emerged as powerful analytic tools and great assistance that can be integrating to control charts of SPC to solve these issues. Therefore, the purpose of this chapter is first to presents a survey on the applications of ML techniques in the stages of designing, pattern recognition, and interpreting of control charts respectively in SPC especially in the context of SM for AD. Second, difficulties and challenges in these areas are discussed. Third, perspectives of ML techniques-based control charts for AD in SM are proposed. Finally, a case study of an ML-based control chart for bearing failure AD is also provided in this chapter.
Disciplines :
Quantitative methods in economics & management
Author, co-author :
Tran, Phuong Hanh ; Université de Liège - ULiège > HEC Liège Research ; International Research Institute for Artificial Intelligence and Data Science, Dong A University, Danang, Viet Nam
Ahmadi Nadi, Adel; Department of Statistics, Ferdowsi University of Mashhad, Mashhad, Iran ; University of Lille, ENSAIT, GEMTEX, Lille, France
Nguyen, Thi Hien; International Research Institute for Artificial Intelligence and Data Science, Dong A University, Danang, Viet Nam ; Laboratoire AGM, UMR CNRS 8088, CY Cergy Paris Université, Cergy, France
Tran, Kim Duc; International Research Institute for Artificial Intelligence and Data Science, Dong A University, Danang, Viet Nam
Tran, Kim Phuc; University of Lille, ENSAIT, GEMTEX, Lille, France
Language :
English
Title :
Application of Machine Learning in Statistical Process Control Charts: A Survey and Perspective
Publication date :
2022
Main work title :
Springer Series in Reliability Engineering
Publisher :
Springer Science and Business Media Deutschland GmbH
Kadri F, Harrou F, Chaabane S, Sun Y, Tahon C (2016) Seasonal ARMA-based SPC charts for anomaly detection: application to emergency department systems. Neurocomputing 173:2102–2114
Münz G, Carle, G (2008) Application of forecasting techniques and control charts for traffic anomaly detection. In: Proceedings of the 19th ITC specialist seminar on network usage and traffic
Tran PH, Tran KP, Truong TH, Heuchenne C, Tran H, Le TMH (2018) Real time data-driven approaches for credit card fraud detection. In: Proceedings of the 2018 international conference on e-business and applications, pp 6–9
Tran PH, Heuchenne C, Nguyen HD, Marie H (2020, in press) Monitoring coefficient of variation using one-sided run rules control charts in the presence of measurement errors. J Appl Stat 1–27. https://doi.org/10.1080/02664763.2020.1787356
Tran PH, Heuchenne C (2021) Monitoring the coefficient of variation using variable sampling interval CUSUM control charts. J Stat Comput Simul 91(3):501–521
Chandola V, Banerjee A, Kumar V (2009) Anomaly detection: a survey. ACM Comput Surv (CSUR) 41(3):1–58
Edgeworth FY (1887) XLI. on discordant observations. London Edinburgh Dublin Philos Mag J Sci 23(143):364–375
Shewhart WA (1924) Some applications of statistical methods to the analysis of physical and engineering data. Bell Syst Tech J 3(1):43–87
Alwan LC (1992) Effects of autocorrelation on control chart performance. Commun Stat Theory Methods 21(4):1025–1049
Noorossana R, Vaghefi SJM (2006) Effect of autocorrelation on performance of the MCUSUM control chart. Qual Reliab Eng Int 22(2):191–197
Costa AFB, Castagliola P (2011) Effect of measurement error and autocorrelation on the X chart. J Appl Stat 38(4):661–673
Leoni RC, Costa AFB, Machado MAG (2015) The effect of the autocorrelation on the performance of the T2 chart. Eur J Oper Res 247(1):155–165
Vanhatalo E, Kulahci M (2015) The effect of autocorrelation on the hotelling T2 control chart. Qual Reliab Eng Int 31(8):1779–1796
Guh RS, Hsieh YC (1999) A neural network based model for abnormal pattern recognition of control charts. Comput Ind Eng 36(1):97–108
Swift JA, Mize JH (1995) Out-of-control pattern recognition and analysis for quality control charts using lisp-based systems. Comput Ind Eng 28(1):81–91
Guo Y, Dooley KJ (1992) Identification of change structure in statistical process control. Int J Prod Res 30(7):1655–1669
Miao Z, Yang M (2019) Control chart pattern recognition based on convolution neural network. In: Smart innovations in communication and computational sciences. Springer, pp 97–104
Zan T, Liu Z, Wang H, Wang M, Gao X (2020) Control chart pattern recognition using the convolutional neural network. J Intell Manuf 31(3):703–716
Wang TY, Chen LH (2002) Mean shifts detection and classification in multivariate process: a neural-fuzzy approach. J Intell Manuf 13(3):211–221
Low C, Hsu CM, Yu FJ (2003) Analysis of variations in a multi-variate process using neural networks. Int J Adv Manuf Technol 22(11):911–921
Niaki STA, Abbasi B (2005) Fault diagnosis in multivariate control charts using artificial neural networks. Qual Reliab Eng Int 21(8):825–840
Western E (1956) Statistical quality control handbook. Western Electric Co
Swift JA (1987) Development of a knowledge based expert system for control chart pattern recognition and analysis. PhD thesis, Oklahoma State University
Shewhart M (1992) Interpreting statistical process control (SPC) charts using machine learning and expert system techniques. In: Proceedings of the IEEE 1992 national aerospace and electronics conference@ m_NAECON 1992. IEEE, pp 1001–1006
Hotelling H (1947) Multivariate quality control. Techniques of statistical analysis
Lowry CA, Woodall WH, Champ CW, Rigdon SE (1992) A multivariate exponentially weighted moving average control chart. Technometrics 34(1):46–53
Demircioglu Diren D, Boran S, Cil I (2020) Integration of machine learning techniques and control charts in multivariate processes. Scientia Iranica 27(6):3233–3241
Guh RS, Tannock JDT (1999) Recognition of control chart concurrent patterns using a neural network approach. Int J Prod Res 37(8):1743–1765
Wu KL, Yang MS (2003) A fuzzy-soft learning vector quantization. Neurocomputing 55(3– 4):681–697
Cheng CS, Lee HT (2016) Diagnosing the variance shifts signal in multivariate process control using ensemble classifiers. J Chin Inst Eng 39(1):64–73
Kang Z, Catal C, Tekinerdogan B (2020) Machine learning applications in production lines: a systematic literature review. Comput Ind Eng 149:106773
Qiu P, Xie X (2021, in press) Transparent sequential learning for statistical process control of serially correlated data. Technometrics 1–29. https://doi.org/10.1080/00401706.2021. 1929493
Weese M, Martinez W, Megahed FM, Jones-Farmer LA (2016) Statistical learning methods applied to process monitoring: an overview and perspective. J Qual Technol 48(1):4–24
Apsemidis A, Psarakis S, Moguerza JM (2020) A review of machine learning kernel methods in statistical process monitoring. Comput Ind Eng 142:106376
Mashuri M, Haryono H, Ahsan M, Aksioma DF, Wibawati W, Khusna H (2019) Tr r2 control charts based on kernel density estimation for monitoring multivariate variability process. Cogent Eng 6(1):1665949
Chinnam RB (2002) Support vector machines for recognizing shifts in correlated and other manufacturing processes. Int J Prod Res 40(17):4449–4466
Byvatov E, Sadowski J, Fechner U, Schneider G (2003) Comparison of support vector machine and artificial neural network systems for drug/nondrug classification. J Chem Inf Comput Sci 43(6):1882–1889
Li L, Jia H (2013) On fault identification of MEWMA control charts using support vector machine models. In: International Asia conference on industrial engineering and management innovation (IEMI2012) proceedings. Springer, pp 723–730
Camci F, Chinnam RB (2008) General support vector representation machine for one-class classification of non-stationary classes. Pattern Recogn 41(10):3021–3034
Sun R, Tsung F (2003) A kernel-distance-based multivariate control chart using support vector methods. Int J Prod Res 41(13):2975–2989
Ning X, Tsung F (2013) Improved design of kernel distance-based charts using support vector methods. IIE Trans 45(4):464–476
Sukchotrat T, Kim SB, Tsung F (2009) One-class classification-based control charts for multivariate process monitoring. IIE Trans 42(2):107–120
Kim SB, Jitpitaklert W, Sukchotrat T: One-class classification-based control charts for monitoring autocorrelated multivariate processes. Commun Stat-Simul Comput® 39(3):461–474 (2010)
Gani W, Limam M (2013) Performance evaluation of one-class classification-based control charts through an industrial application. Qual Reliab Eng Int 29(6):841–854
Gani W, Limam M (2014) A one-class classification-based control chart using the-means data description algorithm. J Qual Reliab Eng 2014. https://www.hindawi.com/journals/jqre/2014/239861/
Maboudou-Tchao EM, Silva IR, Diawara N (2018) Monitoring the mean vector with Mahalanobis kernels. Qual Technol Quant Manag 15(4):459–474
Zhang J, Li Z, Chen B, Wang Z (2014) A new exponentially weighted moving average control chart for monitoring the coefficient of variation. Comput Ind Eng 78:205–212
Wang FK, Bizuneh B, Cheng XB (2019) One-sided control chart based on support vector machines with differential evolution algorithm. Qual Reliab Eng Int 35(6):1634–1645
He S, Jiang W, Deng H (2018) A distance-based control chart for monitoring multivariate processes using support vector machines. Ann Oper Res 263(1):191–207
Maboudou-Tchao EM (2020) Change detection using least squares one-class classification control chart. Qual Technol Quant Manag 17(5):609–626
Salehi M, Bahreininejad A, Nakhai I (2011) On-line analysis of out-of-control signals in multivariate manufacturing processes using a hybrid learning-based model. Neurocomputing 74(12):2083–2095. ISSN 0925-2312
Hu S, Zhao L (2015) A support vector machine based multi-kernel method for change point estimation on control chart. In: 2015 IEEE international conference on systems, man, and cybernetics, pp 492–496
Gani W, Taleb H, Limam M (2010) Support vector regression based residual control charts. J Appl Stat 37(2):309–324
Kakde D, Peredriy S, Chaudhuri A (2017) A non-parametric control chart for high frequency multivariate data. In: 2017 annual reliability and maintainability symposium (RAMS). IEEE, pp 1–6
Jang S, Park SH, Baek JG (2017) Real-time contrasts control chart using random forests with weighted voting. Expert Syst Appl 71:358–369. ISSN 0957-4174
Issam BK, Mohamed L (2008) Support vector regression based residual MCUSUM control chart for autocorrelated process. Appl Math Comput 201(1):565–574. ISSN 0096-3003
Du S, Huang D, Lv J (2013) Recognition of concurrent control chart patterns using wavelet transform decomposition and multiclass support vector machines. Comput Ind Eng 66(4):683– 695. ISSN 0360-8352
Silva J, Lezama OBP, Varela N, Otero MS, Guiliany JG, Sanabria ES, Rojas VA (2019) U-control chart based differential evolution clustering for determining the number of cluster in k-means. In: International conference on green, pervasive, and cloud computing. Springer, pp 31–41
Thirumalai C, SaiSharan GV, Krishna KV, Senapathi KJ (2017) Prediction of diabetes disease using control chart and cost optimization-based decision. In: 2017 International conference on trends in electronics and informatics (ICEI), pp 996–999
Stefatos G, Hamza AB (2007) Statistical process control using kernel PCA. In: 2007 Mediterranean conference on control & automation. IEEE, pp 1–6
Phaladiganon P, Kim SB, Chen VCP, Jiang W (2013) Principal component analysis-based control charts for multivariate nonnormal distributions. Expert Syst Appl 40(8):3044–3054. ISSN 0957-4174
Kullaa J (2003) Damage detection of the z24 bridge using control charts. Mech Syst Signal Process 17(1):163–170. ISSN 0888-3270
Lee JM, Yoo CK, Choi SW, Vanrolleghem PA, Lee IB (2004) Nonlinear process monitoring using kernel principal component analysis. Chem Eng Sci 59(1):223–234. ISSN 0009-2509
Ahsan M, Khusna H, Mashuri M, Lee MH (2020) Multivariate control chart based on kernel PCA for monitoring mixed variable and attribute quality characteristics. Symmetry 12(11):1838
Ahsan M, Prastyo DD, Mashuri M, Kuswanto H, Khusna H (2018) Multivariate control chart based on PCA mix for variable and attribute quality characteristics. Prod Manuf Res 6(1):364–384
Mashuri M, Ahsan M, Prastyo DD, Kuswanto H, Khusna H (2021) Comparing the performance of t2 chart based on PCA mix, kernel PCA mix, and mixed kernel PCA for network anomaly detection. J Phys Conf Ser 1752:012008
Lee WJ, Triebe MJ, Mendis GP, Sutherland JW (2020) Monitoring of a machining process using kernel principal component analysis and kernel density estimation. J Intell Manuf 31(5):1175–1189
Arkat J, Niaki STA, Abbasi B (2007) Artificial neural networks in applying MCUSUM residuals charts for AR(1) processes. Appl Math Comput 189(2):1889–1901 ISSN 0096-3003
Lee S, Kwak M, Tsui KL, Kim SB (2019) Process monitoring using variational autoencoder for high-dimensional nonlinear processes. Eng Appl Artif Intell 83:13–27
Chen S, Yu J (2019) Deep recurrent neural network-based residual control chart for autocorrelated processes. Qual Reliab Eng Int 35(8):2687–2708
Niaki STA, Abbasi B (2005) Fault diagnosis in multivariate control charts using artificial neural networks. Qual Reliab Eng Int 21(8):825–840
Chen P, Li Y, Wang K, Zuo MJ, Heyns PS, Baggerohr S (2021) A threshold self-setting condition monitoring scheme for wind turbine generator bearings based on deep convolutional generative adversarial networks. Measurement 167:108234 ISSN 0263-2241
Pugh GA (1989) Synthetic neural networks for process control. Comput Ind Eng 17(1):24–26 ISSN 0360-8352
Li TF, Hu S, Wei ZY, Liao ZQ (2013) A framework for diagnosing the out-of-control signals in multivariate process using optimized support vector machines. Math Probl Eng 2013. https://www.hindawi.com/journals/mpe/2013/494626/
Guh RS (2008) Real-time recognition of control chart patterns in autocorrelated processes using a learning vector quantization network-based approach. Int J Prod Res 46(14):3959– 3991
Zaman M, Hassan A (2021) Fuzzy heuristics and decision tree for classification of statistical feature-based control chart patterns. Symmetry 13(1):110 ISSN 2073-8994
Hachicha W, Ghorbel A (2012) A survey of control-chart pattern-recognition literature (1991– 2010) based on a new conceptual classification scheme. Comput Ind Eng 63(1):204–222 ISSN 0360-8352
Pham DT, Oztemel E (1993) Control chart pattern recognition using combinations of multi-layer perceptrons and learning-vector-quantization neural networks. Proc Inst Mech Eng Part I J Syst Control Eng 207(2):113–118
Cheng CS (1997) A neural network approach for the analysis of control chart patterns. Int J Prod Res 35(3):667–697
Addeh A, Khormali A, Golilarz NA (2018) Control chart pattern recognition using RBF neural network with new training algorithm and practical features. ISA Trans 79:202–216
Yu J, Zheng X, Wang S (2019) A deep autoencoder feature learning method for process pattern recognition. J Process Control 79:1–15
Xu J, Lv H, Zhuang Z, Lu Z, Zou D, Qin W (2019) Control chart pattern recognition method based on improved one-dimensional convolutional neural network. IFAC-PapersOnLine 52(13):1537–1542
Yang WA, Zhou W (2015) Autoregressive coefficient-invariant control chart pattern recognition in autocorrelated manufacturing processes using neural network ensemble. J Intell Manuf 26:1161–1180
Fuqua D, Razzaghi T (2020) A cost-sensitive convolution neural network learning for control chart pattern recognition. Expert Syst Appl 150:113275
Pham DT, Wani MA (1997) Feature-based control chart pattern recognition. Int J Prod Res 35(7):1875–1890
Ranaee V, Ebrahimzadeh A, Ghaderi R (2010) Application of the PSO-SVM model for recognition of control chart patterns. ISA Trans 49(4):577–586
Lu CJ, Shao YE, Li, PH (2011) Mixture control chart patterns recognition using independent component analysis and support vector machine. Neurocomputing 74(11):1908–1914. ISSN 0925–2312. Adaptive Incremental Learning in Neural Networks Learning Algorithm and Mathematic Modelling Selected papers from the International Conference on Neural Information Processing 2009 (ICONIP 2009)
Lin SY, Guh RS, Shiue YR (2011) Effective recognition of control chart patterns in autocorrelated data using a support vector machine based approach. Comput Ind Eng 61(4):1123–1134
Xanthopoulos P, Razzaghi T (2014) A weighted support vector machine method for control chart pattern recognition. Comput Ind Eng 70:134–149 ISSN 0360-8352
Wang X (2008) Hybrid abnormal patterns recognition of control chart using support vector machining. In: 2008 international conference on computational intelligence and security, vol 2, pp 238–241
Ranaee V, Ebrahimzadeh A (2011) Control chart pattern recognition using a novel hybrid intelligent method. Appl Soft Comput 11(2):2676–2686. ISSN 1568-4946. The Impact of Soft Computing for the Progress of Artificial Intelligence
Zhou X, Jiang P, Wang X (2018) Recognition of control chart patterns using fuzzy SVM with a hybrid kernel function. J Intell Manuf 29(1):51–67
De la Torre Gutierrez H, Pham DT (2016) Estimation and generation of training patterns for control chart pattern recognition. Comput Ind Eng 95:72–82. ISSN 0360-8352
Chen LH, Wang TY (2004) Artificial neural networks to classify mean shifts from multivariate χ2 chart signals. Comput Ind Eng 47(2–3):195–205
Cheng CS, Cheng HP (2008) Identifying the source of variance shifts in the multivariate process using neural networks and support vector machines. Expert Syst Appl 35(1–2):198– 206
Guh RS, Shiue YR (2008) An effective application of decision tree learning for on-line detection of mean shifts in multivariate control charts. Comput Ind Eng 55(2):475–493
Yu J, Xi L, Zhou X (2009) Identifying source (s) of out-of-control signals in multivariate manufacturing processes using selective neural network ensemble. Eng Appl Artif Intell 22(1):141–152
Alfaro E, Alfaro JL, Gamez M, Garcia N (2009) A boosting approach for understanding out-of-control signals in multivariate control charts. Int J Prod Res 47(24):6821–6834
Verron S, Li J, Tiplica T (2010) Fault detection and isolation of faults in a multivariate process with Bayesian network. J Process Control 20(8):902–911
He SG, He Z, Wang GA (2013) Online monitoring and fault identification of mean shifts in bivariate processes using decision tree learning techniques. J Intell Manuf 24(1):25–34
Carletti M, Masiero C, Beghi A, Susto GA (2019) Explainable machine learning in industry 4.0: evaluating feature importance in anomaly detection to enable root cause analysis. In: 2019 IEEE international conference on systems, man and cybernetics (SMC). IEEE, pp 21–26
Song H, Xu Q, Yang H, Fang J (2017) Interpreting out-of-control signals using instance-based Bayesian classifier in multivariate statistical process control. Commun Stat-Simul Comput 46(1):53–77
Salehi M, Bahreininejad A, Nakhai I (2011) On-line analysis of out-of-control signals in multivariate manufacturing processes using a hybrid learning-based model. Neurocomputing 74(12–13):2083–2095
Zhao C, Sun H, Tian F (2019) Total variable decomposition based on sparse cointegration analysis for distributed monitoring of nonstationary industrial processes. IEEE Trans Control Syst Technol 28(4):1542–1549
Chen Q, Kruger U, Leung AYT (2009) Cointegration testing method for monitoring nonstationary processes. Ind Eng Chem Res 48(7):3533–3543
Ketelaere BD, Mertens K, Mathijs F, Diaz DS, Baerdemaeker JD (2011) Nonstationarity in statistical process control–issues, cases, ideas. Appl Stoch Model Bus Ind 27(4):367–376
Liu J, Chen DS (2010) Nonstationary fault detection and diagnosis for multimode processes. AIChE J 56(1):207–219
Lazariv T, Schmid W (2019) Surveillance of non-stationary processes. AStA Adv Stat Anal 103(3):305–331
Lazariv T, Schmid W (2018) Challenges in monitoring non-stationary time series. In: Frontiers in statistical quality control 12. Springer, pp 257–275
Qiu P (2020) Big data? Statistical process control can help! Am Stat 74(4):329–344
Tuv E, Runger G (2003) Learning patterns through artificial contrasts with application to process control. WIT Trans Inf Commun Technol 29. https://www.witpress.com/elibrary/wit-transactions-on-information-and-communication-technologies/29/1376
Reis MS, Gins G (2017) Industrial process monitoring in the big data/industry 4.0 era: from detection, to diagnosis, to prognosis. Processes 5(3):35
Capizzi G, Masarotto G (2011) A least angle regression control chart for multidimensional data. Technometrics 53(3):285–296
Megahed FM, Woodall WH, Camelio JA (2011) A review and perspective on control charting with image data. J Qual Technol 43(2):83–98
Zuo L, He Z, Zhang M (2020) An EWMA and region growing based control chart for monitoring image data. Qual Technol Quant Manag 17(4):470–485
Maragah HD, Woodall WH (1992) The effect of autocorrelation on the retrospective x-chart. J Stat Comput Simul 40(1–2):29–42
Arkat J, Niaki STA, Abbasi B (2007) Artificial neural networks in applying MCUSUM residuals charts for AR (1) processes. Appl Math Comput 189(2):1889–1901
Kim SB, Jitpitaklert W, Park SK, Hwang SJ (2012) Data mining model-based control charts for multivariate and autocorrelated processes. Expert Syst Appl 39(2):2073–2081
Cuentas S, Peñabaena-Niebles R, Garcia E (2017) Support vector machine in statistical process monitoring: a methodological and analytical review. Int J Adv Manuf Technol 91(1):485–500
Chinnam RB, Kumar VS (2001) Using support vector machines for recognizing shifts in correlated manufacturing processes. In: IJCNN 2001. International joint conference on neural networks. Proceedings (Cat. No. 01CH37222), vol 3. IEEE, pp 2276–2280
Hsu CC, Chen MC, Chen LS (2010) Integrating independent component analysis and support vector machine for multivariate process monitoring. Comput Ind Eng 59(1):145–156
Hsu CC, Chen MC, Chen LS (2010) Intelligent ICA-SVM fault detector for non-gaussian multivariate process monitoring. Expert Syst Appl 37(4):3264–3273
Tran KP, Nguyen HD, Thomassey S (2019) Anomaly detection using long short term memory networks and its applications in supply chain management. IFAC-PapersOnLine 52(13):2408– 2412
Nguyen HD, Tran KP, Thomassey S, Hamad M (2021) Forecasting and anomaly detection approaches using LSTM and LSTM autoencoder techniques with the applications in supply chain management. Int J Inf Manag 57:102282
Rudin C (2019) Stop explaining black box machine learning models for high stakes decisions and use interpretable models instead. Nat Mach Intell 1(5):206–215
Wang K, Jiang W (2009) High-dimensional process monitoring and fault isolation via variable selection. J Qual Technol 41(3):247–258
Jin Y, Huang S, Wang G, Deng H (2017) Diagnostic monitoring of high-dimensional networked systems via a LASSO-BN formulation. IISE Trans 49(9):874–884
Qiu P (2017) Statistical process control charts as a tool for analyzing big data. In: Big and complex data analysis. Springer, pp 123–138
Sparks R, Chakraborti S (2017) Detecting changes in location using distribution-free control charts with big data. Qual Reliab Eng Int 33(8):2577–2595
Megahed FM, Jones-Farmer LA (2015) Statistical perspectives on “big data”. In: Frontiers in statistical quality control 11. Springer, pp 29–47
Malaca P, Rocha LF, Gomes D, Silva J, Veiga G (2019) Online inspection system based on machine learning techniques: real case study of fabric textures classification for the automotive industry. J Intell Manuf 30(1):351–361
Woodall WH, Montgomery DC (2014) Some current directions in the theory and application of statistical process monitoring. J Qual Technol 46(1):78–94
Bochinski E, Senst T, Sikora T (2017) Hyper-parameter optimization for convolutional neural network committees based on evolutionary algorithms. In: 2017 IEEE international conference on image processing (ICIP). IEEE, pp 3924–3928
Trittenbach H, Böhm K, Assent I (2020) Active learning of SVDD hyperparameter values. In: 2020 IEEE 7th international conference on data science and advanced analytics (DSAA). IEEE, pp 109–117
Trinh VV, Tran KP, Huong TT (2017) Data driven hyperparameter optimization of one-class support vector machines for anomaly detection in wireless sensor networks. In: 2017 international conference on advanced technologies for communications (ATC). IEEE, pp 6–10
Wu J, Chen SP, Liu XY (2020) Efficient hyperparameter optimization through model-based reinforcement learning. Neurocomputing 409:381–393
Hosseini S, Zade BMH (2020) New hybrid method for attack detection using combination of evolutionary algorithms, SVM, and ANN. Comput Netw 173:107168
Žliobaitė I, Pechenizkiy M, Gama J (2016) An overview of concept drift applications. In: Big data analysis: new algorithms for a new society, pp 91–114
Gama J, Žliobaitė I, Bifet A, Pechenizkiy M, Bouchachia A (2014) A survey on concept drift adaptation. ACM Comput Surv (CSUR) 46(4):1–37
Shmueli G, Fienberg SE (2006) Current and potential statistical methods for monitoring multiple data streams for biosurveillance. In: Statistical methods in counterterrorism. Springer, pp 109–140
Castanedo F (2013) A review of data fusion techniques. Sci World J 2013. https://www. hindawi.com/journals/tswj/2013/704504/
Zhang M, Yuan Y, Wang R, Cheng W (2020) Recognition of mixture control chart patterns based on fusion feature reduction and fireworks algorithm-optimized MSVM. Pattern Anal Appl 23(1):15–26
Zhang M, Zhang X, Wang H, Xiong G, Cheng W (2020) Features fusion exaction and KELM with modified grey wolf optimizer for mixture control chart patterns recognition. IEEE Access 8:42469–42480
Umeda Y, Kaneko J, Kikuchi H (2019) Topological data analysis and its application to time-series data analysis. Fujitsu Sci Tech J 55(2):65–71
Colosimo BM, Pacella M (2010) A comparison study of control charts for statistical monitoring of functional data. Int J Prod Res 48(6):1575–1601
Liu J, Chen J, Wang D (2020) Wavelet functional principal component analysis for batch process monitoring. Chemom Intell Lab Syst 196:103897
Flores M, Fernández-Casal R, Naya S, Zaragoza S, Raña P, Tarrío-Saavedra J (2020) Constructing a control chart using functional data. Mathematics 8(1):58
Yu G, Zou C, Wang Z (2012) Outlier detection in functional observations with applications to profile monitoring. Technometrics 54(3):308–318
He Z, Zuo L, Zhang M, Megahed FM (2016) An image-based multivariate generalized likelihood ratio control chart for detecting and diagnosing multiple faults in manufactured products. Int J Prod Res 54(6):1771–1784
He K, Zuo L, Zhang M, Alhwiti T, Megahed FM (2017) Enhancing the monitoring of 3D scanned manufactured parts through projections and spatiotemporal control charts. J Intell Manuf 28(4):899–911
Stankus SE, Castillo-Villar KK (2019) An improved multivariate generalised likelihood ratio control chart for the monitoring of point clouds from 3D laser scanners. Int J Prod Res 57(8):2344–2355
Okhrin Y, Schmid W, Semeniuk I (2019) Monitoring image processes: overview and comparison study. In: International workshop on intelligent statistical quality control. Springer, pp 143–163
Okhrin Y, Schmid W, Semeniuk I (2020) New approaches for monitoring image data. IEEE Trans Image Process 30:921–933
Yuan Y, Lin L (2020) Self-supervised pre-training of transformers for satellite image time series classification. IEEE J Sel Top Appl Earth Obs Remote Sens 14:474–487
Tran PH, Heuchenne C, Thomassey S (2020) An anomaly detection approach based on the combination of LSTM autoencoder and isolation forest for multivariate time series data. In: Proceedings of the 14th international FLINS conference on robotics and artificial intelligence (FLINS 2020). World Scientific, pp 18–21
Sheather SJ, Marron JS (1990) Kernel quantile estimators. J Am Stat Assoc 85(410):410–416
Qiu H, Lee J, Lin J, Yu G (2006) Wavelet filter-based weak signature detection method and its application on rolling element bearing prognostics. J Sound Vib 289(4–5):1066–1090
Yu J, Zheng X, Wang S (2019) Stacked denoising autoencoder-based feature learning for out-of-control source recognition in multivariate manufacturing process. Q Reliab Eng Int 35(1):204–223