A4 Vertaisarvioitu artikkeli konferenssijulkaisussa

A Model Identification Forensics Approach for Signal-Based Condition Monitoring




TekijätJalayer, M.; Shojaeinasab, A.; Najjaran, H.

ToimittajaSilva, Francisco J. G.; Ferreira, Luís Pinto; Sá, José Carlos; Pereira, Maria Teresa; Pinto, Carla M. A.

Konferenssin vakiintunut nimiInternational Conference on Flexible Automation and Intelligent Manufacturing

KustantajaSpringer Science and Business Media Deutschland GmbH

Julkaisuvuosi2024

JournalLecture Notes in Mechanical Engineering

Kokoomateoksen nimiFlexible Automation and Intelligent Manufacturing: Establishing Bridges for More Sustainable Manufacturing Systems: Proceedings of FAIM 2023, June 18–22, 2023, Porto, Portugal, Volume 2: Industrial Management

Tietokannassa oleva lehden nimiLecture Notes in Mechanical Engineering

Aloitussivu12

Lopetussivu19

ISBN978-3-031-38164-5

eISBN978-3-031-38165-2

ISSN2195-4356

eISSN2195-4364

DOIhttps://doi.org/10.1007/978-3-031-38165-2_2

Verkko-osoitehttps://doi.org/10.1007/978-3-031-38165-2_2


Tiivistelmä
Condition monitoring (CM) of machines and robots is vital to improve operational reliability and to avoid occupational incidents. Recently, deep learning (DL) has become popular in CM literature for its outstanding ability of learning fault patterns. However, due to the black box and non-intuitive nature of its layers, the logic behind its decisions is hard to understand. This shortcoming hinders the DL implementation in many critical applications where the user needs to ensure the reliability of the classifier. Hence, in this paper, a new framework for DL-based CM systems is proposed, which consists of four steps (1) Feature extraction (2) Fault diagnosis (3) eXplainable Artificial Intelligence (XAI)-based model optimization (4) Interpretation system. The experimental evaluations on two real-world datasets demonstrate that the proposed XAI interpreter was able to visualize the contributing patterns to fault types. The feature engineering block not only makes it easier for the operator to only observe the contributing features, but also it helps the model optimizer to speed up the runtime. The results show that the proposed model achieved a slightly better accuracy than the other state-of-the-art models.



Last updated on 2025-27-01 at 19:42