Izenburua
Probabilistic feature selection for improved asset lifetime estimation in renewables. Application to transformers in photovoltaic power plantsBeste instituzio
IkerbasqueOrmazabal
Bertsioa
Postprinta
Eskubideak
© 2024 ElsevierSarbidea
Sarbide mugatuaArgitaratzailearen bertsioa
https://doi.org/10.1016/j.engappai.2023.107841Non argitaratua
Engineering Applications of Artificial Intelligence Vol. 131. N. art. 107841, 2024Argitaratzailea
ElsevierGako-hitzak
Prognostics
Degradation
Feature selection
Machine learning ... [+]
Degradation
Feature selection
Machine learning ... [+]
Prognostics
Degradation
Feature selection
Machine learning
Transformer [-]
Degradation
Feature selection
Machine learning
Transformer [-]
Eremua (UNESCO Sailkapena)
http://skos.um.es/unesco6/33Diziplina (UNESCO Sailkapena)
http://skos.um.es/unesco6/3322Laburpena
The increased penetration of renewable energy sources (RESs) as an effective mechanism to reduce carbon emissions leads to an increased weather dependency for power and energy systems. This has create ... [+]
The increased penetration of renewable energy sources (RESs) as an effective mechanism to reduce carbon emissions leads to an increased weather dependency for power and energy systems. This has created dynamic operation and degradation phenomena, which affect the lifetime estimation of the assets operated with RESs. For the reliable and efficient operation of RES it is crucial to monitor the health of its constituent components and feature selection is a crucial step for building robust and accurate health monitoring approaches. In this context, this paper presents a probabilistic feature selection approach, which probabilistically weights and selects features through a heuristic and iterative process for an improved asset lifetime estimation. Power transformers are key power grid assets and they are used to demonstrate the validity and impact of the proposed approach. The approach is tested on two different photovoltaic power plants operated in Spain and Australia. Results consistently show that the proposed feature-selection approach reduces the prediction error and consistently selects relevant features. The approach has been applied to transformer lifetime estimation, but it can be generally applied to assist in the lifetime estimation of other components operated in RESs. Part of the studies presented here as well as source codes are all open-source under the GitHub repository https://github.com/iramirezg/FeatureSelection. [-]
Finantzatzailea
Gobierno de EspañaGobierno Vasco
Gobierno de España
Programa
Convocatoria 2021. Programa Estatal para Impulsar la Investigación Científico-Técnica y su Transferencia, del Plan Estatal de Investigación Científica, Técnica y de Innovación 2021-2023Ikertalde Convocatoria 2022-2023
Convocatoria 2019. Plan Estatal de I+D+I 2017-2020. Subprograma Estatal de Formación y en el Subprograma Estatal de Incorporación, del Programa Estatal de Promoción del Talento y su Empleabilidad. Ayudas Juan de la Cierva-incorporación
Zenbakia
CPP2021-008580IT1451-22
IJC2019-039183-I
Proiektua
Modelización y Diagnóstico de Transformadores (MODITRANS)Teoría de la Señal y Comunicaciones
Sin información