Stacking-based ensemble learning for remaining useful life estimation

Author:

Ture Begum Ay,Akbulut Akhan,Zaim Abdul Halim,Catal CagatayORCID

Abstract

AbstractExcessive and untimely maintenance prompts economic losses and unnecessary workload. Therefore, predictive maintenance models are developed to estimate the right time for maintenance. In this study, predictive models that estimate the remaining useful life of turbofan engines have been developed using deep learning algorithms on NASA’s turbofan engine degradation simulation dataset. Before equipment failure, the proposed model presents an estimated timeline for maintenance. The experimental studies demonstrated that the stacking ensemble learning and the convolutional neural network (CNN) methods are superior to the other investigated methods. While the convolution neural network (CNN) method was superior to the other investigated methods with an accuracy of 93.93%, the stacking ensemble learning method provided the best result with an accuracy of 95.72%.

Funder

Qatar University

Publisher

Springer Science and Business Media LLC

Subject

Geometry and Topology,Theoretical Computer Science,Software

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1. A literature review of fault diagnosis based on ensemble learning;Engineering Applications of Artificial Intelligence;2024-01

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