A method of anomaly detection and fault diagnosis with online adaptive learning under small training samples

Several methods of the modern intelligent anomaly detection and fault diagnosis have been developed to provide more efficient solutions. However, lacking of fault samples, the training stage and testing stage being mutually independent, and not recognizing new fault type restrict their application in some cases. This paper presents a method of anomaly detection and fault diagnosis with online adaptive learning under small training samples. This approach has classification function and clustering function at the same time. The samples of known fault type are categorized and the samples of unknown fault type are clustered with this approach. To determine the performance and possible advantages of the approaches, the experiments on ball bearing fault data and Iris data were performed. Results show that our proposed approach outperforms the other methods, when the training samples are inadequate to cover all of the fault types. The less the known fault types are, the more advantages it has. To a certain extent, this approach could make up for the disadvantages of other methods of anomaly detection and fault diagnosis. This algorithm can solve anomaly detection and fault diagnosis problems at the same time.This algorithm has the ability of online adaptive learning under small samples during testing stage.This algorithm has classification function and clustering function at the same time.This algorithm categorizes the known type samples and clusters the unknown type samples.

[1]  Safaai Deris,et al.  An artificial immune system for solving production scheduling problems: a review , 2013, Artificial Intelligence Review.

[2]  Qunxiong Zhu,et al.  Rough set-based heuristic hybrid recognizer and its application in fault diagnosis , 2009, Expert Syst. Appl..

[3]  Yadwinder Singh Brar,et al.  Artificial neural network approaches for fault classification: comparison and performance , 2014, Neural Computing and Applications.

[4]  Fernando Niño,et al.  Recent Advances in Artificial Immune Systems: Models and Applications , 2011, Appl. Soft Comput..

[5]  Miguel Angel Ferrer-Ballester,et al.  Review of Automatic Fault Diagnosis Systems Using Audio and Vibration Signals , 2014, IEEE Transactions on Systems, Man, and Cybernetics: Systems.

[6]  Ahmed Patel,et al.  An intrusion detection and prevention system in cloud computing: A systematic review , 2013, J. Netw. Comput. Appl..

[7]  Leandro Nunes de Castro,et al.  The Clonal Selection Algorithm with Engineering Applications 1 , 2000 .

[8]  Mehmet Karakose,et al.  An approach for automated fault diagnosis based on a fuzzy decision tree and boundary analysis of a reconstructed phase space. , 2014, ISA transactions.

[9]  Alan S. Perelson,et al.  Self-nonself discrimination in a computer , 1994, Proceedings of 1994 IEEE Computer Society Symposium on Research in Security and Privacy.

[10]  Dong Li,et al.  A boundary-fixed negative selection algorithm with online adaptive learning under small samples for anomaly detection , 2016, Eng. Appl. Artif. Intell..

[11]  Mehrdad Nouri Khajavi,et al.  Intelligent fault classification of rolling bearings using neural network and discrete wavelet transform , 2014 .

[12]  Tao Li,et al.  A negative selection algorithm based on hierarchical clustering of self set , 2011, Science China Information Sciences.

[13]  Chee Peng Lim,et al.  Condition monitoring of induction motors: A review and an application of an ensemble of hybrid intelligent models , 2014, Expert Syst. Appl..

[14]  Kemal Polat,et al.  Diagnosis of heart disease using artificial immune recognition system and fuzzy weighted pre-processing , 2006, Pattern Recognit..

[15]  Jonathan Timmis,et al.  Application areas of AIS: The past, the present and the future , 2008, Appl. Soft Comput..

[16]  Xin Xiao,et al.  A Real-Valued Negative Selection Algorithm Based on Grid for Anomaly Detection , 2013 .

[17]  E. Cooper,et al.  Evolution of immune systems from self/not self to danger to artificial immune systems (AIS). , 2010, Physics of life reviews.

[18]  Dong Li,et al.  A negative selection algorithm with online adaptive learning under small samples for anomaly detection , 2015, Neurocomputing.

[19]  Andries Petrus Engelbrecht,et al.  Application of the feature-detection rule to the Negative Selection Algorithm , 2013, Expert Syst. Appl..

[20]  Maoguo Gong,et al.  An efficient negative selection algorithm with further training for anomaly detection , 2012, Knowl. Based Syst..

[21]  Alan S. Perelson,et al.  The immune system, adaptation, and machine learning , 1986 .

[22]  Li Tao,et al.  A self-adaptive negative selection algorithm used for anomaly detection , 2009 .

[23]  Kazuteru Nagamura,et al.  Gear damage diagnosis and classification based on support vector machines , 2014 .

[24]  Dong Li,et al.  Negative selection algorithm with constant detectors for anomaly detection , 2015, Appl. Soft Comput..

[25]  Bo-Suk Yang,et al.  Support vector machine in machine condition monitoring and fault diagnosis , 2007 .

[26]  Uwe Aickelin,et al.  The Danger Theory and Its Application to Artificial Immune Systems , 2008, ArXiv.

[27]  Liangpei Zhang,et al.  Sub-pixel mapping based on artificial immune systems for remote sensing imagery , 2013, Pattern Recognit..

[28]  Jianzhong Fu,et al.  Intelligent fault diagnosis using rough set method and evidence theory for NC machine tools , 2009, Int. J. Comput. Integr. Manuf..

[29]  Li Tao,et al.  Negative selection algorithm based on grid file of the feature space , 2014 .

[30]  Wolfgang Banzhaf,et al.  The use of computational intelligence in intrusion detection systems: A review , 2010, Appl. Soft Comput..

[31]  Zhou Ji,et al.  Revisiting Negative Selection Algorithms , 2007, Evolutionary Computation.

[32]  Guilherme Costa Silva,et al.  Immune inspired Fault Detection and Diagnosis: A fuzzy-based approach of the negative selection algorithm and participatory clustering , 2012, Expert Syst. Appl..

[33]  Sadan Kulturel-Konak,et al.  A review of clonal selection algorithm and its applications , 2011, Artificial Intelligence Review.

[34]  Raghunathan Rengaswamy,et al.  Fault diagnosis using dynamic trend analysis: A review and recent developments , 2007, Eng. Appl. Artif. Intell..

[35]  Davor Svetinovic,et al.  An optimization model for product returns using genetic algorithms and artificial immune system , 2013 .