Journal of Marine Science and Engineering (Apr 2024)

Research on Abrasive Particle Target Detection and Feature Extraction for Marine Lubricating Oil

  • Chenzhao Bai,
  • Jiaqi Ding,
  • Hongpeng Zhang,
  • Zhiwei Xu,
  • Hanlin Liu,
  • Wei Li,
  • Guobin Li,
  • Yi Wei,
  • Jizhe Wang

DOI
https://doi.org/10.3390/jmse12040677
Journal volume & issue
Vol. 12, no. 4
p. 677

Abstract

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The hydraulic oil of marine equipment contains a large number of abrasive contaminants that reflect the operating condition of the equipment. In order to realize the detection of particulate contaminants, this research first proposes a shape-based classification method for oil abrasive particles, designs an oil abrasive particle collection system, and constructs a new dataset. After that, the research introduces deep learning target detection technology in computer vision, and uses GhostNet to lighten the network structure, the CBAM (Convolutional Block Attention Module) attention mechanism to improve the generalization ability of the model, and the ASPP module to enhance the model sensory wildness, respectively. A lightweight target detection model, WDD, is created for the identification of abrasive particles. In this study, the WDD model is tested against other network models, and the mAP value of WDD reaches 91.2%, which is 4.8% higher than that of YOLOv5s; in addition, the detection speed of the WDD model reaches 55 FPS. Finally, this study uses real ship lubricating oils for validation, and the WDD model still maintains a high level of accuracy. Therefore, the WDD model effectively balances the accuracy and detection speed of marine oil abrasive particle detection, which is superior to other oil abrasive particle detection techniques.

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