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DKDL-Net: A Lightweight Bearing Fault Detection Model via Decoupled
  Knowledge Distillation and Low-Rank Adaptation Fine-tuning

DKDL-Net: A Lightweight Bearing Fault Detection Model via Decoupled Knowledge Distillation and Low-Rank Adaptation Fine-tuning

10 June 2024
Ovanes Petrosian
Li Pengyi
He Yulong
Liu Jiarui
Sun Zhaoruikun
Fu Guofeng
Meng Liping
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Papers citing "DKDL-Net: A Lightweight Bearing Fault Detection Model via Decoupled Knowledge Distillation and Low-Rank Adaptation Fine-tuning"

2 / 2 papers shown
Title
Deep learning-based fault identification in condition monitoring
Deep learning-based fault identification in condition monitoring
Hariom Dhungana
Suresh Kumar Mukhiya
Pragya Dhungana
Benjamin Karic
24
1
0
08 Oct 2024
Pruning and Quantization for Deep Neural Network Acceleration: A Survey
Pruning and Quantization for Deep Neural Network Acceleration: A Survey
Tailin Liang
C. Glossner
Lei Wang
Shaobo Shi
Xiaotong Zhang
MQ
147
674
0
24 Jan 2021
1