Experimental validation of manipulability optimization control of a 7-DoF serial manipulator for robot-assisted surgery

Int J Med Robot. 2021 Feb;17(1):1-11. doi: 10.1002/rcs.2193. Epub 2020 Nov 12.

Abstract

Purpose: Both safety and accuracy are of vital importance for surgical operation procedures. An efficient way to avoid the singularity of the surgical robot concerning safety issues is to maximize its manipulability in robot-assisted surgery. The goal of this work was to validate a dynamic neural network optimization method for manipulability optimization control of a 7-degree of freedom (DoF) robot in a surgical operation.

Methods: Three different paths, a circle, a sinusoid and a spiral were chosen to simulate typical surgical tasks. The dynamic neural network-based manipulability optimization control was implemented on a 7-DoF robot manipulator. During the surgical operation procedures, the manipulability of the robot manipulator and the accuracy of the surgical operation are recorded for performance validation.

Results: By comparison, the dynamic neural network-based manipulability optimization control achieved optimized manipulability but with a loss of the accuracy of trajectory tracking (the global error was 1 mm compare to the 0.5 mm error of non-optimized method).

Conclusions: The method validated in this work achieved optimized manipulability with a loss of error. Future works should be introduced to improve the accuracy of the surgical operation.

Keywords: accuracy; manipulability; redundant robot; robot-assisted surgery; trajectory tracking.

MeSH terms

  • Humans
  • Neural Networks, Computer
  • Robotic Surgical Procedures*