State Evaluation Method of Robot Lubricating Oil Based on Support Vector Regression.

Journal: Computational intelligence and neuroscience
Published Date:

Abstract

Recently, the development of the Industrial Internet of Things (IIoT) has led enterprises to re-examine the research of the equipment-state-prediction models and intelligent manufacturing applications. Take industrial robots as typical example. Under the effect of scale, robot maintenance decision seriously affects the cost of spare parts and labor deployment. In this paper, an evaluation method is proposed to predict the state of robot lubricating oil based on support vector regression (SVR). It would be the proper model to avoid the structural risks and minimize the effect of small sample volume. IIoT technology is used to collect and store the valuable robot running data. The key features of the running state of the robot are extracted, and the machine learning model is applied according to the measured element contents of the lubricating oil. As a result, the cost of spare parts consumption can be saved for more than two million CNY per year.

Authors

  • Dongdong Guo
    Technical Service Site, Beijing Benz Automotive Co. Ltd., Beijing 100176, China.
  • Xiangqun Chen
    School of Software & Microelectronics, Peking University, Beijing 100871, China.
  • Haitao Ma
    Technical Service Site, Beijing Benz Automotive Co. Ltd., Beijing 100176, China.
  • Zimei Sun
    Technical Service Site, Beijing Benz Automotive Co. Ltd., Beijing 100176, China.
  • Zongrui Jiang
    Technical Service Site, Beijing Benz Automotive Co. Ltd., Beijing 100176, China.