Title :
Adaptive Dynamic Programming for Optimal Tracking Control of Unknown Nonlinear Systems With Application to Coal Gasification
Author :
Qinglai Wei ; Derong Liu
Author_Institution :
State Key Lab. of Manage. & Control for Complex Syst., Inst. of Autom.many, Beijing, China
Abstract :
In this paper, we establish a new data-based iterative optimal learning control scheme for discrete-time nonlinear systems using iterative adaptive dynamic programming (ADP) approach and apply the developed control scheme to solve a coal gasification optimal tracking control problem. According to the system data, neural networks (NNs) are used to construct the dynamics of coal gasification process, coal quality and reference control, respectively, where the mathematical model of the system is unnecessary. The approximation errors from neural network construction of the disturbance and the controls are both considered. Via system transformation, the optimal tracking control problem with approximation errors and disturbances is effectively transformed into a two-person zero-sum optimal control problem. A new iterative ADP algorithm is then developed to obtain the optimal control laws for the transformed system. Convergence property is developed to guarantee that the performance index function converges to a finite neighborhood of the optimal performance index function, and the convergence criterion is also obtained. Finally, numerical results are given to illustrate the performance of the present method.
Keywords :
coal gasification; control engineering computing; dynamic programming; iterative methods; neural nets; nonlinear control systems; optimal control; ADP; coal gasification; discrete-time nonlinear systems; iterative adaptive dynamic programming; iterative optimal learning control; neural networks; optimal tracking control; unknown nonlinear systems; zero-sum optimal control; Coal gas; Dynamic programming; Neural networks; Optimal control; Tracking; Adaptive dynamic programming; coal gasification; data-based control; finite approximation errors; neural networks; optimal tracking control;
Journal_Title :
Automation Science and Engineering, IEEE Transactions on
DOI :
10.1109/TASE.2013.2284545