Litcius/Paper detail

Extended Relevance Vector Machine-Based Remaining Useful Life Prediction for DC-Link Capacitor in High-Speed Train

Xiuli Wang, Bin Jiang, Steven X. Ding, Ningyun Lu, Yang Li

2020IEEE Transactions on Cybernetics54 citationsDOI

Abstract

Remaining useful life (RUL) prediction is a reliable tool for the health management of components. The main concern of RUL prediction is how to accurately predict the RUL under uncertainties. In order to enhance the prediction accuracy under uncertain conditions, the relevance vector machine (RVM) is extended into the probability manifold to compensate for the weakness caused by evidence approximation of the RVM. First, tendency features are selected based on the batch samples. Then, a dynamic multistep regression model is built for well describing the influence of uncertainties. Furthermore, the degradation tendency is estimated to monitor degradation status continuously. As poorly estimated hyperparameters of RVM may result in low prediction accuracy, the established RVM model is extended to the probabilistic manifold for estimating the degradation tendency exactly. The RUL is then prognosticated by the first hitting time (FHT) method based on the estimated degradation tendency. The proposed schemes are illustrated by a case study, which investigated the capacitors' performance degradation in traction systems of high-speed trains.

Topics & Concepts

Relevance vector machineHyperparameterComputer scienceTrainProbabilistic logicSupport vector machineDegradation (telecommunications)Artificial intelligenceMachine learningControl theory (sociology)CartographyTelecommunicationsGeographyControl (management)Machine Fault Diagnosis TechniquesReliability and Maintenance OptimizationPower System Reliability and Maintenance