4.7 Article

Marine-Hydraulic-Oil-Particle Contaminant Identification Study Based on OpenCV

Journal

JOURNAL OF MARINE SCIENCE AND ENGINEERING
Volume 10, Issue 11, Pages -

Publisher

MDPI
DOI: 10.3390/jmse10111789

Keywords

particulate pollutants; OpenCV; contour extraction; shape recognition; fault diagnosis

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This paper presents a method for identifying marine-hydraulic-oil particulate pollutants based on OpenCV, achieving fast and accurate detection of particulate pollutant parameters.
Particulate pollutants mixed in hydraulic oil will lead to the failure of the marine hydraulic system. Nowadays, the current identification methods of particulate pollutants in oil make it challenging to obtain the specific parameters of pollutants. For this reason, this paper proposes a recognition method of marine-hydraulic-oil-particle pollutants based on OpenCV. The image of particles in the marine hydraulic oil was preprocessed by OpenCV software and using the Canny operator edge detection algorithm to extract the contour of particle pollutants to obtain their area and perimeter. The recognition accuracy reached 95%. Using the Douglas-Peucker algorithm for fit polygons, then image moments to obtain the angle-distance waveform of particulate pollutants, the shape of marine-hydraulic-oil particulate pollutants was successfully identified. The designed method has the advantages of fast calculation efficiency, high accuracy, and real-time detection of various parameters of particulate pollutants in marine hydraulic oil. It has great significance for the fault diagnosis of hydraulic systems and prolonging the working life of hydraulic equipment. This research provides a new idea for the condition monitoring and fault diagnosis of ships and offshore engineering equipment.

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