Neuro Fuzzy Control of Robotic Arm Movement
Loading...
Files
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
This thesis first outlines the theory, historical background, and application of neural networks
and fuzzy logic. The review of neural networks and fuzzy logic is followed by a discussion of the
combination of the two technologies -- neuro-fuzzy techniques. The two tools have been
successfully combined to maximize their individual strengths and compensate for shortcomings.
A survey is given of previous work done in applying these technologies to control systems.
The problem of moving a robotic arm in the presence of an obstacle is discussed. In particular,
trajectory planning of a planar, redundant manipulator is studied. The primary weakness of
previous methods for determining acceptable trajectories is the massive amount of computer time
needed to obtain a solution. Neuro-fuzzy systems offer not only the benefit of the parallel nature
of its computations, but also the ability to learn the control of an arm by following a human's
example.
Several neuro-fuzzy controllers are trained using sample data obtained from a human's control of
a robotic arm. Their performance is quantified and compared. It is shown that the definition of
the fuzzy membership functions plays a significant role in the ability of the neuro-fuzzy
controller to learn and generalize. Possible directions for future work are suggested.
