Digital Twin with Model Predictive Control for Screw Unfastening by Robots

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Abstract

Product disassembly, critical in remanufacturing, often involves removing screws and bolts, which can be challenging due to degradation, such as rust or thread damage. Here, we develop a digital twin integrated with a Model Predictive Controller to optimise robotic screw unfastening. Using real-time force and torque data from a robot unscrewing an electric vehicle battery pack, the controller predicts and adjusts screwdriver position and spindle speed to minimise applied torque and force. Experimental results demonstrate that this approach improves unscrewing success rates and reduces torque variability compared to manual methods. These findings suggest that combining digital twin technology with MPC can enhance the efficiency and reliability of robotic disassembly processes, supporting sustainable remanufacturing efforts.
Original languageEnglish
Article number20
Number of pages18
JournalAutomation
Volume7
Issue number1
Early online date19 Jan 2026
DOIs
Publication statusPublished - Feb 2026

Keywords

  • digital twin
  • autonomous remanufacturing
  • MPC
  • robotic disassembly
  • cyber-physical systems
  • model predictive control

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