Author/Authors :
Ghanbari، Aahmad نويسنده , , Rahmani، Arash نويسنده ,
Abstract :
This paper presents forward and inverse Kinematics analysis of a specific class of series–
parallel manipulators, known as 2(6-UPS) manipulators. As Forward kinematics problem of
this kind of manipulators is a very difficult problem to solve because of their highly nonlinear
relations between joint variables and position and orientation of the end effectors, Numerical
methods are the most common approaches to solve. Nevertheless, the possible lack of
convergence of these methods is the main drawback. Therefore, artificial neural networks
(ANN) with their inherent learning ability as a strong method, was used to approximate the
forward kinematics function without any knowledge of manipulator structure. In this paper, two
types of ANN models were used. MLP (multi-layer perceptron network) and RBF (radial basis
function network) have been used to solve the forward kinematics problem of this hybrid
manipulator and results are obtained. Simulation results show the advantages of employing
neural networks. Also, according to average percentage error, as the performance index, it
was found at RBF gives better result as compared to MLP.