A Soft Computing (SC) optimizer for designing a Knowledge Base (KB) to be
used in a control system for controlling a motorcycle is described. In
one embodiment, a simulation model of the motorcycle and rider control is
used. In one embodiment, the simulation model includes a feedforward
rider model. The SC optimizer includes a fuzzy inference engine based on
a Fuzzy Neural Network (FNN). The SC Optimizer provides Fuzzy Inference
System (FIS) structure selection, FIS structure optimization method
selection, and teaching signal selection and generation. The user selects
a fuzzy model, including one or more of: the number of input and/or
output variables; the type of fuzzy inference; and the preliminary type
of membership functions. A Genetic Algorithm (GA) is used to optimize
linguistic variable parameters and the input-output training patterns. A
GA is also used to optimize the rule base, using the fuzzy model, optimal
linguistic variable parameters, and a teaching signal. The GA produces a
near-optimal FNN. The near-optimal FNN can be improved using classical
derivative-based optimization procedures. The FIS structure found by the
GA is optimized with a fitness function based on a response of the actual
plant model of the controlled plant. The SC optimizer produces a robust
KB that is typically smaller that the KB produced by prior art methods.