A new computationally efficient approach for nonlinear model predictive con
trol (NMPC) presented here uses the factorability of radial basis function
(RBF) process models in a traditional model predictive control (MPC) framew
ork. The key to the approach is to formulate the RBF process model that can
make nonlinear predictions across a p-step horizon without using future un
known process measurements. The RBF model avoids error propagation from use
of model predictions as input in a recursive or iterative manner. The resu
lting NMPC formulation using the RBF model provides analytic expressions fo
r the gradient and Hessian of the controller's objective function in terms
of RBF network parameters. Solution of the NMPC optimization problem is sim
plified significantly by factorization of the RBF model output into terms c
ontaining only known and unknown parts of the process.