摘要

This paper demonstrates control accuracy and computational efficiency of nonlinear model predictive control (NMPC) strategy which utilizes a deterministic sparse kernel learning technique called Support vector regression (SVR) and particle swarm optimization with controllable random exploration velocity (PSO-CREV). An accurate reliable nonlinear model is first identified by SVR with a radial basis RBF) kernel and then the optimization of control sequence is speeded up by PSO-CREV. An improved system performance is guaranteed by an accurate sparse predictive model and an efficient and fast optimization algorithm. To compare the performance, model predictive control (MPC) using neural network (NN) model is done on a highly nonlinear distillation column with severe interacting process variables. SVR based MPC shows improved tracking performance with very less computational effort which is much essential for real time control.

  • 出版日期2015-12