A fuzzy-nets system has been developed to create fuzzy rule banks and
to control nonlinear systems. The training procedure includes five ste
ps. First, fuzzy regions of input and output spaces are defined based
on the boundaries of the system. The second step is to generate fuzzy
rules by given data sets which are feedback data from the system. Then
, conflicting rules are resolved through bottom-up and top-down method
ologies. In the fourth stage the rules are combined to generate a fuzz
y rule base. Finally, an appropriate defuzzification methodology is de
fined for controlling the systems. To test the system, experimental da
ta for a backing up a truck were collected and trained through the tra
ining scheme. An optimal fuzzy rule bank was then developed and variou
s tests were performed and evaluated. The simulation results show that
the scheme is able to produce an appropriate rule bank for controllin
g a nonlinear system.