Detalhes
Nome
Inês Alves BarbosaCargo
Assistente de InvestigaçãoDesde
07 novembro 2023
Nacionalidade
PortugalCentro
Laboratório de Inteligência Artificial e Apoio à DecisãoContactos
+351220402963
ines.a.barbosa@inesctec.pt
2025
Autores
Barbosa, I; Gama, J; Veloso, B;
Publicação
EPIA (2)
Abstract
Predictive Maintenance (PdM) aims to prevent failures through early detection, yet lacks explainability to support decision-making. Current PdM models often identify failures, but fail to explain their root causes, especially in real-world scenarios, with complex and limited labeled data. This study proposes an interpretable framework that combines LSTM-based Anomaly Detection with a dual-layered Root Cause Analysis (RCA) based on SHAP attributions. Applied to a real-world dataset, the method detects degradation transitions, tracks failure patterns over time, and provides interpretable information without explicit root cause labels.
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