Leveraging Active Learning for Failure Mode Acquisition

被引:1
|
作者
Kulkarni, Amol [1 ]
Terpenny, Janis [2 ]
Prabhu, Vittaldas [1 ]
机构
[1] Penn State Univ, Dept Ind & Mfg Engn, Univ Pk, State Coll, PA 16802 USA
[2] George Mason Univ, Dept Syst Engn & Operat Res, Fairfax, VA 22030 USA
关键词
fault-mode acquisition; maintenance records; active learning; human-in-the-loop learning; FINITE-ELEMENT-ANALYSIS; CLASSIFICATION; ONTOLOGY;
D O I
10.3390/s23052818
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Identifying failure modes is an important task to improve the design and reliability of a product and can also serve as a key input in sensor selection for predictive maintenance. Failure mode acquisition typically relies on experts or simulations which require significant computing resources. With the recent advances in Natural Language Processing (NLP), efforts have been made to automate this process. However, it is not only time consuming, but extremely challenging to obtain maintenance records that list failure modes. Unsupervised learning methods such as topic modeling, clustering, and community detection are promising approaches for automatic processing of maintenance records to identify failure modes. However, the nascent state of NLP tools combined with incompleteness and inaccuracies of typical maintenance records pose significant technical challenges. As a step towards addressing these challenges, this paper proposes a framework in which online active learning is used to identify failure modes from maintenance records. Active learning provides a semi-supervised machine learning approach, allowing for a human in the training stage of the model. The hypothesis of this paper is that the use of a human to annotate part of the data and train a machine learning model to annotate the rest is more efficient than training unsupervised learning models. Results demonstrate that the model is trained with annotating less than ten percent of the total available data. The framework is able to achieve ninety percent (90%) accuracy in the identification of failure modes in test cases with an F-1 score of 0.89. This paper also demonstrates the effectiveness of the proposed framework with both qualitative and quantitative measures.
引用
收藏
页数:20
相关论文
共 50 条
  • [31] Batch Mode Active Learning for Biometric Recognition
    Chakraborty, Shayok
    Balasubramanian, Vineeth
    Panchanathan, Sethuraman
    BIOMETRIC TECHNOLOGY FOR HUMAN IDENTIFICATION VII, 2010, 7667
  • [32] Sliding Mode Control for Active Suspension System with Data Acquisition Delay
    Alves, Uiliam Nelson L. T.
    Garcia, Jose Paulo F.
    Teixeira, Marcelo C. M.
    Garcia, Saulo C.
    Rodrigues, Fernando B.
    MATHEMATICAL PROBLEMS IN ENGINEERING, 2014, 2014
  • [33] Learning While Acquisition: Towards Active Learning Framework for Beamforming in Ultrasound Imaging
    Katare, Mayank
    Panicker, Mahesh Raveendranatha
    Madhavanunni, A. N.
    Malamal, Gayathri
    MACHINE LEARNING FOR MEDICAL IMAGE RECONSTRUCTION (MLMIR 2022), 2022, 13587 : 115 - 122
  • [34] Leveraging electronic health record documentation for Failure Mode and Effects Analysis team identification
    Kricke, Gayle Shier
    Carson, Matthew B.
    Lee, Young Ji
    Benacka, Corrine
    Mutharasan, R. Kannan
    Ahmad, Faraz S.
    Kansal, Preeti
    Yancy, Clyde W.
    Anderson, Allen S.
    Soulakis, Nicholas D.
    JOURNAL OF THE AMERICAN MEDICAL INFORMATICS ASSOCIATION, 2017, 24 (02) : 288 - 294
  • [35] Acquisition of procedures: The effects of example elaborations and active learning exercises
    Catrambone, Richard
    Yuasa, Mashiho
    LEARNING AND INSTRUCTION, 2006, 16 (02) : 139 - 153
  • [36] Acquisition of control knowledge of nonholonomic system by active learning method
    Sakurai, Y
    Honda, N
    Nishino, J
    2003 IEEE INTERNATIONAL CONFERENCE ON SYSTEMS, MAN AND CYBERNETICS, VOLS 1-5, CONFERENCE PROCEEDINGS, 2003, : 2400 - 2405
  • [37] AutoRefl: active learning in neutron reflectometry for fast data acquisition
    Hoogerheide, David P.
    Heinrich, Frank
    Journal of Applied Crystallography, 2024, 57 (Pt 4) : 1192 - 1204
  • [38] Efficient Online Decision Tree Learning with Active Feature Acquisition
    Rahbar, Arman
    Ye, Ziyu
    Chen, Yuxin
    Chehreghani, Morteza Haghir
    PROCEEDINGS OF THE THIRTY-SECOND INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE, IJCAI 2023, 2023, : 4163 - 4171
  • [39] Improving control-knowledge acquisition for planning by active learning
    Fuentetaja, Raquel
    Borrajo, Daniel
    MACHINE LEARNING: ECML 2006, PROCEEDINGS, 2006, 4212 : 138 - 149
  • [40] Leveraging active learning for relevance feedback using an information theoretic diversity measure
    Dagli, Charlie K.
    Rajaram, Shyamsundar
    Huang, Thomas S.
    IMAGE AND VIDEO RETRIEVAL, PROCEEDINGS, 2006, 4071 : 123 - 132