Few-Shot Cross-Domain Fault Diagnosis of Bearing Driven by Task-Supervised ANIL
Hunan University · University of Strathclyde
Abstract
Meta-learning has effectively addressed the limit of deep learning fault diagnosis models that demands a large number of samples. However, existing meta-learning models lack the capacity of feature reuse and task adaptability. To address the cross-domain fault diagnosis tasks with small samples, the feature reuse capability and task adaptability of existing meta-learning models need further improvements. To achieve this goal, this paper introduces a new approach built upon the task-supervised Almost No Inner Loop (ANIL). The proposed approach adopts a residual network to optimize the backbone structure of the inner loop, enhancing the feature reuse capability of the meta-learning in the unknown domain. An…
Citation impact
- FWCI
- 52.64
- Percentile
- 100%
- References
- 35
Authors
4Topics & keywords
- Computer science
- Artificial intelligence
- Reuse
- Adaptability
- Task (project management)
- Machine learning
- Fault (geology)
- Residual