Ikusi/ Ireki
Izenburua
An interpretable operational state classification framework for elevators through Convolutional Neural NetworksEgilea
Beste instituzio
Laboral KutxaUniversidad del País Vasco/Euskal Herriko Unibertsitatea (UPV/EHU)
Ikerbasque
Bertsioa
Postprinta
Eskubideak
© The AuthorsSarbidea
Sarbide bahituaArgitaratzailearen bertsioa
https://doi.org/10.1111/mice.13479Non argitaratua
Computer-Aided Civil and Infrastructure Engineering Early ViewArgitaratzailea
WileyLaburpena
Ensuring the safe, reliable, and cost-efficient operation of transportation systems such as elevators is critical for the maintenance of civil infrastructures. The ability to monitor the health state ... [+]
Ensuring the safe, reliable, and cost-efficient operation of transportation systems such as elevators is critical for the maintenance of civil infrastructures. The ability to monitor the health state and classify different operational states (elevator moving up/down, stopped, doors opening/closing) may lead to the development of intelligent solutions, such as diagnostics and predictive maintenance. Accordingly, downtime and maintenance costs can be significantly reduced with an accurate monitoring of the operation parameters and dynamics. In this context, this paper presents a novel approach for the operational state classification of elevator systems based on a one-dimensional convolutional neural network, using exclusively a single axis (Z) of an accelerometer signal. The proposed model utilizes a single accelerometer and addresses the challenge of distinguishing overlapping signal patterns, such as those produced by vertical displacement and door movements. The approach includes an interpretability stage, which demonstrates the data processing involved in extracting features from the underlying physical phenomena captured in the acceleration signal. Obtained results have been validated with an on-site captured dataset which contains 250 elevator journeys and compared with three other classification methods that have been conventionally used: generalized likelihood ratio test (GLRT), barometer-assisted GLRT, and three conventional machine learning modelss. It has been shown that the proposed approach is very accurate, with 96% of the average F1 score and, importantly, includes the analytic relation of the classification model features. [-]
Finantzatzailea
Gobierno VascoGobierno de España
Programa
Ikertalde Convocatoria 2022-2023Ramon y Cajal. Convocatoria 2022
Zenbakia
IT1451-22RYC2022-037300-I
Laguntzaren URIa
Sin informaciónSin información
Proiektua
Teoría de la Señal y Comunicaciones (IKERTALDE 2022-2023)Jose Ignacio Aizpurua Unanue