An Approach to Reducing Input Parameter Volume for Fault Classifiers

被引:0
|
作者
Ann Smith
Fengshou Gu
Andrew D. Ball
机构
[1] University of Huddersfield,Centre for Efficiency and Performance Engineering
关键词
Fault diagnosis; classification; variable clustering; data compression; big data;
D O I
暂无
中图分类号
学科分类号
摘要
As condition monitoring of systems continues to grow in both complexity and application, an overabundance of data is amassed. Computational capabilities are unable to keep abreast of the subsequent processing requirements. Thus, a means of establishing computable prognostic models to accurately reflect process condition, whilst alleviating computational burdens, is essential. This is achievable by restricting the amount of information input that is redundant to modelling algorithms. In this paper, a variable clustering approach is investigated to reorganise the harmonics of common diagnostic features in rotating machinery into a smaller number of heterogeneous groups that reflect conditions of the machine with minimal information redundancy. Naïve Bayes classifiers established using a reduced number of highly sensitive input parameters realised superior classification powers over higher dimensional classifiers, demonstrating the effectiveness of the proposed approach. Furthermore, generic parameter capabilities were evidenced through confirmatory factor analysis. Parameters with superior deterministic power were identified alongside complimentary, uncorrelated, variables. Particularly, variables with little explanatory capacity could be eliminated and lead to further variable reductions. Their information sustainability is also evaluated with Naïve Bayes classifiers, showing that successive classification rates are sufficiently high when the first few harmonics are used. Further gains were illustrated on compression of chosen envelope harmonic features. A Naïve Bayes classification model incorporating just two compressed input variables realised an 83.3% success rate, both an increase in classification rate and an immense improvement volume-wise on the former ten parameter model.
引用
收藏
页码:199 / 212
页数:13
相关论文
共 50 条
  • [31] Test Input Prioritization for Machine Learning Classifiers
    Dang, Xueqi
    Li, Yinghua
    Papadakis, Mike
    Klein, Jacques
    Bissyande, Tegawende F.
    Le Traon, Yves
    IEEE TRANSACTIONS ON SOFTWARE ENGINEERING, 2024, 50 (03) : 413 - 442
  • [32] Encrypted-Input Obfuscation of Image Classifiers
    Di Crescenzo, Giovanni
    Bahler, Lisa
    Coan, Brian A.
    Rohloff, Kurt
    Cousins, David B.
    Polyakov, Yuriy
    DATA AND APPLICATIONS SECURITY AND PRIVACY XXXV, 2021, 12840 : 136 - 156
  • [33] Bayesian input selection for neural network classifiers
    Verrelst, H
    Vandewalle, J
    De Moor, B
    Timmerman, D
    PROCEEDING OF THE THIRD INTERNATIONAL CONFERENCE ON NEURAL NETWORKS AND EXPERT SYSTEMS IN MEDICINE AND HEALTHCARE, 1998, : 125 - 132
  • [34] A hyper-parameter tuning approach for cost-sensitive support vector machine classifiers
    Rosita Guido
    Maria Carmela Groccia
    Domenico Conforti
    Soft Computing, 2023, 27 : 12863 - 12881
  • [35] A hyper-parameter tuning approach for cost-sensitive support vector machine classifiers
    Guido, Rosita
    Groccia, Maria Carmela
    Conforti, Domenico
    SOFT COMPUTING, 2023, 27 (18) : 12863 - 12881
  • [36] ENGINE FAULT ANALYSIS .2. PARAMETER-ESTIMATION APPROACH
    SOOD, AK
    FAHS, AA
    HENEIN, NA
    IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS, 1985, 32 (04) : 301 - 307
  • [37] A Supervised Learning Approach to Water Quality Parameter Prediction and Fault Detection
    Joslyn, Kathleen
    Lipor, John
    2018 IEEE INTERNATIONAL CONFERENCE ON BIG DATA (BIG DATA), 2018, : 2511 - 2514
  • [38] A Parameter Identification Approach to Series DC Arc Fault Detection and Localization
    Herrera, Luis
    Yao, Xiu
    2018 IEEE ENERGY CONVERSION CONGRESS AND EXPOSITION (ECCE), 2018, : 497 - 501
  • [39] Fault Location for Underground Power Cable Using Distributed Parameter Approach
    Yang, Xia
    Choi, Myeon-Song
    Lee, Seung-Jae
    Ten, Chee-Wooi
    Lim, Seong-Il
    IEEE TRANSACTIONS ON POWER SYSTEMS, 2008, 23 (04) : 1809 - 1816
  • [40] Nearest Neighbor Classifiers : Reducing the Computational Demands
    Kumar, R. Raj
    Viswanath, P.
    Bindu, C. Shobha
    2016 IEEE 6TH INTERNATIONAL CONFERENCE ON ADVANCED COMPUTING (IACC), 2016, : 45 - 50