“…There have been many solutions proposed using neural networks to solve the inverse kinematics problem of an unknown geometry manipulator, such as multi-layer perceptron (MLPN) (Watanabe and Shimizu, 1991;Guez and Ahmad, 1998;Choi and Lawrence, 1992;Binggul et al, 2005;Morris and Mansor, 1997;Guez and Ahmad, 1989;Takanashi, 1990;Alsina et al, 1995;Lui and Ito, 1995), self-organised network systems (Zeller and Schulten, 1996;Barhen et al, 1989;Herman et al, 2003) and radial basis function networks (RBFNs) (Driscoll, 2000;Zhang et al, 2004;Yang et al, 2000;Morris and Mansor, 1998;Mayorga and Sanongboon, 2002). The MLPN is the most popular neural network applied to functional approximation problems.…”