Skip to content
  • Português
CapesPrint
  • Home
  • The Project
    • Postgraduate Courses
    • Historic
  • Activities
    • Track activities
      • Events
      • Work Mission
      • Scholarships
  • Publications
    • Article Published in Periodicals
    • Books
    • Book Chapters
  • News
    • Internal Notice
  • Colaborators
    • Participants
    • Institutes
  • Contact

A Novel Index for the Robustness Comparison of Classifiers in Fault Diagnosis

18 de July de 20219 de July de 2021 by admin

Bernal de Lázaro, J. M., Llanes Santiago, O., Prieto Moreno, A., del Castillo-Serpa, A. e Silva Neto, A. J., A Novel Index for the Robustness Comparison of Classifiers in Fault Diagnosis, Neurocomputing, Vol. 275, pp. 636-648, 2018

The design of robust data-based fault diagnostic systems can be formulated in terms of classification tasks. A diagnostic classifier designed to effectively minimize the false and missing alarm rates resulting from noise, uncertainty, and unknown disturbances while maintaining a relatively high performance can be defined as robust. This paper presents a novel criterion to compare off-line the robustness of classifiers. The proposed index allows to complement the estimated misclassification rate and to quantify the quality of any data-based diagnostic system more rigorously. In order to evaluate the effectiveness of the proposed index, both Artificial Neural Networks and Support Vector Machines are used as diagnostic classifiers for the Continuous Stirred-Tank Reactor benchmark.

DOI: https://doi.org/10.1016/j.neucom.2017.09.021

Categories Article Published in Periodicals
Optimal Kernel Parameter Setting for Faults Detection with Stochastic Methods and Data Preprocessing
A Fault Diagnosis Proposal With Online Imputation to Incomplete Observations in Industrial Plants

Categories

  • Article Published in Periodicals (21)
  • Book Chapters (14)
  • Books (3)
  • Events (37)
  • Internal Notice (4)
  • Scholarships (11)
  • Work Mission (10)

Recent Posts

  • Lecture: Detection and Localization of Faults and Cyber Attacks in Industrial Systems Using Fuzzy Clustering Techniques
  • Interinstitutional Workshop – Lecture by Professor Orestes Llanes Santiago
  • Workshop on Computational Modeling, Inverse Problems, Optimization and Artificial Intelligence
  • Criteria for optimizing kernel methods in fault monitoring process: A survey
  • Contact Failure Identification in Multilayered Media via Artificial Neural Networks and Autoencoders

Follow us on social media !

  • facebook
  • youtube
© 2025 CapesPrint • Built with GeneratePress