This paper presents an interactive procedure for controller design for nonl
inear system by integrating available classical as well as modern tools suc
h as fuzzy logic, and neural networks. The proposed approach is based on qu
asi-linear dynamic models of the plant. Classical optimal controllers for e
ach set of operating conditions were developed. These controllers are used
to construct a single fuzzy-logic gain scheduling-like controller. Adaptive
-neuro-fuzzy inference system was used to construct the rules for the fuzzy
gain schedule. This will guarantee the continuos change in the gains as th
e system parameters change in time or space. This procedure is systematic a
nd can be used to design controllers for many nonlinear systems. Two degree
s of freedom (dof) planar manipulator was chosen to show the effectiveness
of the proposed approach. A robot manipulator is inherently unstable and di
splays a strong nonlinearity. The resulting system is stable for different
reference trajectories. The system is also robust for wide range of driving
frequencies of the input. This system is able to deal with slow as well as
fast varying systems, which is a significant improvement on conventional g
ain scheduling.