Deep Model Based Domain Adaptation for Fault Diagnosis

@article{Lu2017DeepMB,
  title={Deep Model Based Domain Adaptation for Fault Diagnosis},
  author={Weining Lu and Bin Liang and Yu Cheng and Deshan Meng and Jun Yang and Tao Zhang},
  journal={IEEE Transactions on Industrial Electronics},
  year={2017},
  volume={64},
  pages={2296-2305}
}
In recent years, machine learning techniques have been widely used to solve many problems for fault diagnosis. However, in many real-world fault diagnosis applications, the distribution of the source domain data (on which the model is trained) is different from the distribution of the target domain data (where the learned model is actually deployed), which leads to performance degradation. In this paper, we introduce domain adaptation, which can find the solution to this problem by adapting the… CONTINUE READING
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