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A Polishing Robot Force Control System Based on Time Series Data in Industrial Internet of Things

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Published:08 March 2021Publication History
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Abstract

Installing a six-dimensional force/torque sensor on an industrial arm for force feedback is a common robotic force control strategy. However, because of the high price of force/torque sensors and the closedness of an industrial robot control system, this method is not convenient for industrial mass production applications. Various types of data generated by industrial robots during the polishing process can be saved, transmitted, and applied, benefiting from the growth of the industrial internet of things (IIoT). Therefore, we propose a constant force control system that combines an industrial robot control system and industrial robot offline programming software for a polishing robot based on IIoT time series data. The system mainly consists of four parts, which can achieve constant force polishing of industrial robots in mass production. (1) Data collection module. Install a six-dimensional force/torque sensor at a manipulator and collect the robot data (current series data, etc.) and sensor data (force/torque series data). (2) Data analysis module. Establish a relationship model based on variant long short-term memory which we propose between current time series data of the polishing manipulator and data of the force sensor. (3) Data prediction module. A large number of sensorless polishing robots of the same type can utilize that model to predict force time series. (4) Trajectory optimization module. The polishing trajectories can be adjusted according to the prediction sequences. The experiments verified that the relational model we proposed has an accurate prediction, small error, and a manipulator taking advantage of this method has a better polishing effect.

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  1. A Polishing Robot Force Control System Based on Time Series Data in Industrial Internet of Things

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    • Published in

      cover image ACM Transactions on Internet Technology
      ACM Transactions on Internet Technology  Volume 21, Issue 2
      June 2021
      599 pages
      ISSN:1533-5399
      EISSN:1557-6051
      DOI:10.1145/3453144
      • Editor:
      • Ling Liu
      Issue’s Table of Contents

      Copyright © 2021 Association for Computing Machinery.

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      Publication History

      • Published: 8 March 2021
      • Accepted: 1 August 2020
      • Revised: 1 July 2020
      • Received: 1 May 2020
      Published in toit Volume 21, Issue 2

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