International Journal of Advanced Computer Research (IJACR) ISSN (P): 2249-7277 ISSN (O): 2277-7970 Vol - 4, Issue - 14, March 2014
  1. 1
    Google Scholar
  2. 4
    Impact Factor
Implementation and Validation of Artificial Intelligence Techniques for Robotic Surgery

Aarshay Jain, Deepansh Jagotra, Vijayant Agarwal

Abstract

The primary focus of this study is implementation of Artificial Intelligence (AI) technique for developing an inverse kinematics solution for the Raven-IITM surgical research robot [1]. First, the kinematic model of the Raven-IITM robot was analysed along with the proposed analytical solution [2] for inverse kinematics problem. Next, The Artificial Neural Network (ANN) techniques was implemented. The training data for the same was careful selected by keeping manipulability constraints in mind. Finally, the results were verified using elliptical trajectories. The originally proposed analytical solution was found to be computationally inefficient, gave multiple solutions and its existence necessitates the use of the Standard Raven-IITM Tool [2]. The solution devised using ANN technique gave a single solution which was thirteen times faster than the original solution. Moreover, it is generic in nature and can be used for any type of tool. Thus, a novel solution for solving the inverse kinematics problem of the Raven-II surgical robot was formulated and confirmed.

Keyword

Surgical Robotics, Artificial Intelligence, Cognitive Robotics, Artificial Neural Network, Computer Assisted Surgery.

Cite this article

Refference