Journal of Control Science and Engineering (Jan 2018)

Deep Sparse Autoencoder for Feature Extraction and Diagnosis of Locomotive Adhesion Status

  • Changfan Zhang,
  • Xiang Cheng,
  • Jianhua Liu,
  • Jing He,
  • Guangwei Liu

DOI
https://doi.org/10.1155/2018/8676387
Journal volume & issue
Vol. 2018

Abstract

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The model is difficult to establish because the principle of the locomotive adhesion process is complex. This paper presents a data-driven adhesion status fault diagnosis method based on deep learning theory. The adhesion coefficient and creep speed of a locomotive constitute the characteristic vector. The sparse autoencoder unsupervised learning network studies the input vector, and the single-layer network is superimposed to form a deep neural network. Finally, a small amount of labeled data is used to fine-tune training the entire deep neural network, and the locomotive adhesion state fault diagnosis model is established. Experimental results show that the proposed method can achieve a 99.3% locomotive adhesion state diagnosis accuracy and satisfy actual engineering monitoring requirements.