Potential, challenges and future directions for deep learning in prognostics and health management applications

Open access
Date
2020-06Type
- Journal Article
Abstract
Deep learning applications have been thriving over the last decade in many different domains, including computer vision and natural language understanding. The drivers for the vibrant development of deep learning have been the availability of abundant data, breakthroughs of algorithms and the advancements in hardware. Despite the fact that complex industrial assets have been extensively monitored and large amounts of condition monitoring signals have been collected, the application of deep learning approaches for detecting, diagnosing and predicting faults of complex industrial assets has been limited. The current paper provides a thorough evaluation of the current developments, drivers, challenges, potential solutions and future research needs in the field of deep learning applied to Prognostics and Health Management (PHM) applications. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000414034Publication status
publishedExternal links
Journal / series
Engineering Applications of Artificial IntelligenceVolume
Pages / Article No.
Publisher
ElsevierSubject
Deep learning; Prognostics and health management; GAN; Domain adaptation; Fleet PHM; Deep reinforcement learning; Physics-induced machine learningOrganisational unit
09642 - Fink, Olga (ehemalig) / Fink, Olga (former)
Funding
176878 - Data-Driven Intelligent Predictive Maintenance of Industrial Assets (SNF)
More
Show all metadata