Skip to main content
Log in

An artificial immune and incremental learning inspired novel framework for performance pattern identification of complex electromechanical systems

  • Article
  • Published:
Science China Technological Sciences Aims and scope Submit manuscript

Abstract

Performance pattern identification is the key basis for fault detection and condition prediction, which plays a major role in ensuring safety and reliability in complex electromechanical systems (CESs). However, there are a few problems related to the automatic and adaptive updating of an identification model. Aiming to solve the problem of identification model updating, a novel framework for performance pattern identification of the CESs based on the artificial immune systems and incremental learning is proposed in this paper to classify real-time monitoring data into different performance patterns. First, an unsupervised clustering technique is used to construct an initial identification model. Second, the artificial immune and outlier detection algorithms are applied to identify abnormal data and determine the type of immune response. Third, incremental learning is employed to trace the dynamic changes of patterns, and operations such as pattern insertion, pattern removal, and pattern revision are designed to realize automatic and adaptive updates of an identification model. The effectiveness of the proposed framework is demonstrated through experiments with the benchmark and actual pattern identification applications. As an unsupervised and self-adapting approach, the proposed framework inherits the preponderances of the conventional methods but overcomes some of their drawbacks because the retraining process is not required in perceiving the pattern changes. Therefore, this method can be flexibly and efficiently used for performance pattern identification of the CESs. Moreover, the proposed method provides a foundation for fault detection and condition prediction, and can be used in other engineering applications.

This is a preview of subscription content, log in via an institution to check access.

Access this article

Price excludes VAT (USA)
Tax calculation will be finalised during checkout.

Instant access to the full article PDF.

Similar content being viewed by others

References

  1. Wang R X, Gao J M, Gao Z Y, et al. Complex network theory-based condition recognition of electromechanical system in process industry. Sci China Tech Sci, 2016, 59: 604–617

    Google Scholar 

  2. Jiang H, Wang R, Gao J, et al. Evidence fusion-based framework for condition evaluation of complex electromechanical system in process industry. Knowledge-Based Syst, 2017, 124: 176–187

    Google Scholar 

  3. Wang R, Gao X, Gao J, et al. An information transfer based novel framework for fault root cause tracing of complex electromechanical systems in the processing industry. Mech Syst Signal Pr, 2018, 101: 121–139

    Google Scholar 

  4. Chen Q, Whitbrook A, Aickelin U, et al. Data classification using the Dempster-Shafer method. J Exp Theor Artif In, 2014, 26: 493–517

    Google Scholar 

  5. Kumar P M, Lokesh S, Varatharajan R, et al. Cloud and IoT based disease prediction and diagnosis system for healthcare using Fuzzy neural classifier. Future Generation Comput Syst, 2018, 86: 527–534

    Google Scholar 

  6. Mollajan A, Memarian H, Nabi-Bidhendi M. Fuzzy classifier fusion: An application to reservoir facies identification. Neural Comput Appl, 2018, 30: 825–834

    Google Scholar 

  7. Richhariya B, Tanveer M. EEG signal classification using universum support vector machine. Expert Syst Appl, 2018, 106: 169–182

    Google Scholar 

  8. Tian Y, Mirzabagheri M, Bamakan S M H, et al. Ramp loss one-class support vector machine; A robust and effective approach to anomaly detection problems. Neurocomputing, 2018, 310: 223–235

    Google Scholar 

  9. Huang Q, Yang D, Jiang L, et al. A novel unsupervised adaptive learning method for long-term electromyography (EMG) pattern recognition. Sensors, 2017, 17: 1370

    Google Scholar 

  10. Cadenas J M, Garrido M C, Martínez R, et al. A fuzzy K-nearest neighbor classifier to deal with imperfect data. Soft Comput, 2018, 22: 3313–3330

    Google Scholar 

  11. Wang G, Li Q, Wang L, et al. Impact of sliding window length in indoor human motion modes and pose pattern recognition based on smartphone sensors. Sensors, 2018, 18: 1965

    Google Scholar 

  12. Lai S K, Lin Y T, Hsu P J, et al. Dynamical study of metallic clusters using the statistical method of time series clustering. Comput Phys Commun, 2011, 182: 1013–1026

    MATH  Google Scholar 

  13. Burfield R, Neumann C, Saunders C P. Review and application of functional data analysis to chemical data—The example of the comparison, classification, and database search of forensic ink chromatograms. Chemometr Intell Lab, 2015, 149: 97–106

    Google Scholar 

  14. Amarnath B, Balamurugan S A A. Review on feature selection techniques and its impact for effective data classification using UCI machine learning repository dataset. J Eng Sci Technol, 2016, 11: 1639–1646

    Google Scholar 

  15. Wei Y, Zhang X, Shi Y, et al. A review of data-driven approaches for prediction and classification of building energy consumption. Renew Sustain Energy Rev, 2018, 82: 1027–1047

    Google Scholar 

  16. Oktar Y, Turkan M. A review of sparsity-based clustering methods. Signal Process, 2018, 148: 20–30

    Google Scholar 

  17. Pandove D, Goel S, Rani R. Systematic review of clustering high-dimensional and large datasets. Acm T Knowl Discov D, 2018, 12: 16

    Google Scholar 

  18. Liu D, Li T, Ruan D, et al. Incremental learning optimization on knowledge discovery in dynamic business intelligent systems. J Glob Optim, 2011, 51: 325–344

    MathSciNet  MATH  Google Scholar 

  19. Losing V, Hammer B, Wersing H. Incremental on-line learning: A review and comparison of state of the art algorithms. Neurocomputing, 2018, 275: 1261–1274

    Google Scholar 

  20. Li P, Wu X, Hu X, et al. An incremental decision tree for mining multilabel data. Appl Artif Intell, 2015, 29: 992–1014

    Google Scholar 

  21. Yu H, Zhang C, Wang G. A tree-based incremental overlapping clustering method using the three-way decision theory. Knowledge-Based Syst, 2016, 91: 189–203

    Google Scholar 

  22. Driff L N, Drias H. Artificial neural network for incremental data mining. In: Rocha Á, Correia A, Adeli H, eds. Recent Advances in Information Systems and Technologies. WorldCIST 2017. Advances in Intelligent Systems and Computing, Vol 569. Cham: Springer, 2017. 133–143

    Google Scholar 

  23. Vennila G, Manikandan M S K, Suresh M N. Detection and prevention of spam over Internet telephony in voice over internet protocol networks using Markov chain with incremental SVM. Int J Commun Syst, 2017, 30: e3255

    Google Scholar 

  24. Farmer J D, Packard N H, Perelson A S. The immune system, adaptation, and machine learning. Physica D-Nonlinear Phenomena, 1986, 22: 187–204

    MathSciNet  Google Scholar 

  25. Bersini H, Varela F J. Hints for adaptive problem solving gleaned from immune networks. In: Schwefel H P, Männer R, eds. Parallel Problem Solving from Nature. PPSN 1990. Lecture Notes in Computer Science, Vol 496. Berlin, Heidelberg: Springer, 1991

    Google Scholar 

  26. Wu B, Lu T, Zheng K, et al. Smartphone malware detection model based on artificial immune system. China Commun, 2014, 11: 86–92

    Google Scholar 

  27. Zhang Y. Network intrusion detection system model based on artificial immune. IJSIA, 2015, 9: 359–370

    Google Scholar 

  28. Chen M H, Chang P C, Wu J L. A population-based incremental learning approach with artificial immune system for network intrusion detection. Eng Appl Artif Intell, 2016, 51: 171–181

    Google Scholar 

  29. Saurabh P, Verma B. An efficient proactive artificial immune system based anomaly detection and prevention system. Expert Syst Appl, 2016, 60: 311–320

    Google Scholar 

  30. Montechiesi L, Cocconcelli M, Rubini R. Artificial immune system via Euclidean Distance Minimization for anomaly detection in bearings. Mech Syst Signal Pr, 2016, 76–77: 380–393

    Google Scholar 

  31. Bayar N, Darmoul S, Hajri-Gabouj S, et al. Fault detection, diagnosis and recovery using artificial immune systems: A review. Eng Appl Artif Intell, 2015, 46: 43–57

    Google Scholar 

  32. Costa Silva G, Caminhas W M, Palhares R M. Artificial immune systems applied to fault detection and isolation: A brief review of immune response-based approaches and a case study. Appl Soft Comput, 2017, 57: 118–131

    Google Scholar 

  33. Coello C A C, Cutello V, Lee D, et al. Recent advances in immunological inspired computation. Eng Appl Artif Intell, 2017, 62: 302–303

    Google Scholar 

  34. Tarakanov A O. Immunocomputing for intelligent signal processing. Neural Comput Appl, 2010, 19: 1143–1152

    Google Scholar 

  35. Zhu H, Wu Y, Li P, et al. An OpenCL-accelerated parallel immunodominance clone selection algorithm for feature selection. Concurr Comp-Pract E, 2017, 29: e3838

    Google Scholar 

  36. Wen C, Tao L. Parameter analysis of negative selection algorithm. Inf Sci, 2017, 420: 218–234

    Google Scholar 

  37. Louati A, Darmoul S, Elkosantini S, et al. An artificial immune network to control interrupted flow at a signalized intersection. Inf Sci, 2018, 433–434: 70–95

    MathSciNet  Google Scholar 

  38. Chelly Z, Elouedi Z. A survey of the dendritic cell algorithm. Knowl Inf Syst, 2016, 48: 505–535

    Google Scholar 

  39. Giraud-Carrier C. A note on the utility of incremental learning. Ai Commun, 2000, 13: 215–223

    MATH  Google Scholar 

  40. Ripon K S N, Kwong S, Man K F. A real-coding jumping gene genetic algorithm (RJGGA) for multiobjective optimization. Inf Sci, 2007, 177: 632–654

    MATH  Google Scholar 

  41. Rani K N A, Abdulmalek M, Rahim H A, et al. Hybridization of strength pareto multiobjective optimization with modified cuckoo search algorithm for rectangular array. Sci Rep, 2017, 7: 46521

    Google Scholar 

  42. MacQueen J. Some methods for classification and analysis of multivariate observations. In: Proceedings of the Fifth Berkeley Symposium on Mathematical Statistics and Probability. California: University of California Press, 1967. 281–297

    Google Scholar 

  43. Bezdek J C. Pattern recognition with fuzzy objective function algorithms. 1981

    MATH  Google Scholar 

  44. Dunn J C. A fuzzy relative of the ISODATA process and its use in detecting compact well-separated clusters. J Cybern, 1973, 3: 32–57

    MathSciNet  MATH  Google Scholar 

  45. Wang Y L, Msghina M, Li T Q. Studying sub-dendrograms of restingstate functional networks with voxel-wise hierarchical clustering. Front Hum Neurosci, 2016, 10: 75

    Google Scholar 

  46. Ester M, Kriegel H P, Sander J, et al. A density-based algorithm for discovering clusters in large spatial databases with noise. In: KDD-96 Proceedings Second International Conference on Knowledge Discovery and Data Mining. 1996, 226–231

  47. Ankerst M, Breunig M M, Kriegel H P, et al. OPTICS: Ordering points to identify the clustering structure. In: Proceedings of the 1999 ACM SIGMOD International Conference on Management of Data. Philadelphia, 1999. 49–60

  48. Tran T N, Drab K, Daszykowski M. Revised DBSCAN algorithm to cluster data with dense adjacent clusters. Chemometr Intell Lab, 2013, 120: 92–96

    Google Scholar 

  49. Chikh M A, Saidi M, Settouti N. Diagnosis of diabetes diseases using an artificial immune recognition system2 (AIRS2) with fuzzy K-nearest neighbor. J Med Syst, 2012, 36: 2721–2729

    Google Scholar 

  50. Chang T Y, Shiu Y F. Simultaneously construct IRT-based parallel tests based on an adapted CLONALG algorithm. Appl Intell, 2012, 36: 979–994

    Google Scholar 

  51. Xia X J, Togneri R, Sohel F, et al. Random forest classification based acoustic event detection utilizing contextual-information and bottleneck features. Pattern Recogn, 2018, 81: 1–13

    Google Scholar 

  52. Luo Y, Xiong Z, Xia S, et al. Classification noise detection based SMO algorithm. Optik, 2016, 127: 7021–7029

    Google Scholar 

  53. Dabrowski J J, de Villiers J P, Beyers C. Naïve Bayes switching linear dynamical system: A model for dynamic system modelling, classification, and information fusion. Inf Fusion, 2018, 42: 75–101

    Google Scholar 

Download references

Author information

Authors and Affiliations

Authors

Corresponding author

Correspondence to RongXi Wang.

Additional information

This work was supported in part by the National Key R&D Program of China (Grant No. 2017YFF0210500), and in part by China Postdoctoral Science Foundation (Grant No. 2017M620446).

Rights and permissions

Reprints and permissions

About this article

Check for updates. Verify currency and authenticity via CrossMark

Cite this article

Wang, R., Gao, X., Gao, J. et al. An artificial immune and incremental learning inspired novel framework for performance pattern identification of complex electromechanical systems. Sci. China Technol. Sci. 63, 1–13 (2020). https://doi.org/10.1007/s11431-019-9532-5

Download citation

  • Received:

  • Accepted:

  • Published:

  • Issue Date:

  • DOI: https://doi.org/10.1007/s11431-019-9532-5

Navigation