Thursday, 8 November 2012

Control of Real Mobile Robot Using Artificial Intelligence Technique


Kundu, Shubhasri (2011) Control of Real Mobile Robot Using Artificial Intelligence Technique. MTech by Research thesis.

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Abstract

An eventual objective of mobile robotics research is to bestow the robot with high cerebral skill, of which navigation in an unfamiliar environment can be succeeded by using on‐line sensory information, which is essentially starved of humanoid intermediation. This research emphases on mechanical design of real mobile robot, its kinematic & dynamic model analysis and selection of AI technique based on perception, cognition, sensor fusion, path scheduling and analysis, which has to be implemented in robot for achieving integration of different preliminary robotic behaviors (e.g. obstacle avoidance, wall and edge following, escaping dead end and target seeking). Navigational paths as well as time taken during navigation by the mobile robot can be expressed as an optimization problem and thus can be analyzed and solved using AI techniques. The optimization of path as well as time taken is based on the kinematic stability and the intelligence of the robot controller. A set of linguistic fuzzy rules are developed to implement expert knowledge under various situations. Both of Mamdani and Takagi-Sugeno fuzzy model are employed in control algorithm for experimental purpose. Neural network has also been used to enhance and optimize the outcome of controller, e.g. by introducing a learning ability. The cohesive framework combining both fuzzy inference system and neural network enabled mobile robot to generate reasonable trajectories towards the target. An authenticity checking has been done by performing simulation as well as experimental results which showed that the mobile robot is capable of avoiding stationary obstacles, escaping traps, and reaching the goal efficiently.
Item Type:Thesis (MTech by Research)
Uncontrolled Keywords:Mobile Robot; Navigational Strategy; Reactive behavior; Fuzzy Logic; Fuzzy-Neural Network
Subjects:Engineering and Technology > Mechanical Engineering > Automobile Engineering
Divisions:Engineering and Technology > Department of Mechanical Engineering
ID Code:3018
Deposited By:Hemanta Biswal
Deposited On:04 May 2012 11:21
Last Modified:14 Jun 2012 09:44
Supervisor(s):Parhi, D R

Shiva Shankar

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