Abstract Based on the recently developed algorithms for the modelling and control of bounded dynamic stochastic systems (H. Wang, J. Zhang, Bounded stochastic distributions control for pseudo ARMAX stochastic systems, IEEE Transactions on Automatic control, 486–490), this paper presents the design of a subotpimal nonlinear mean controller for bounded dynamic stochastic systems with guaranteed stability. The B-spline functional expansion based square root model is used to represent the output probability density function of the system. This is then followed by the design of a mean controller of the output distribution of the system using nonlinear output tracking concept. A nonlinear quadratic optimization is performed using the well known Hamilton–Jacobi–Bellman equation. This leads to a controller which consists of a static unit, a state feedback part and an equivalent output feedback loop. In order to achieve high precision for the output tracking, the output feedback gain is determined by a learning process, where the Lyapunov stability analysis is performed to show the asymptotic stability of the closed loop system under some conditions. A simulation example is included to demonstrate the use of the algorithm and encouraging results have been obtained.
[1]
Hong Wang,et al.
Bounded Dynamic Stochastic Systems: Modelling and Control
,
2000
.
[2]
Jianhua Zhang,et al.
Bounded stochastic distributions control for pseudo-ARMAX stochastic systems
,
2001,
IEEE Trans. Autom. Control..
[3]
T. Poggio,et al.
Networks and the best approximation property
,
1990,
Biological Cybernetics.
[4]
Kok Lay Teo,et al.
Optimal and suboptimal feedback controls for a class of nonlinear systems
,
1996
.
[5]
Hong Wang,et al.
Robust control of the output probability density functions for multivariable stochastic systems with guaranteed stability
,
1999,
IEEE Trans. Autom. Control..
[6]
W. Ramirez.
Process Control and Identification
,
1993
.
[7]
Hong Wang.
Model reference adaptive control of the output stochastic distributions for unknown linear stochastic systems
,
1999,
Int. J. Syst. Sci..
[8]
C. Neuman,et al.
Flexible operation through optimal tracking in nonlinear processes
,
2000
.
[9]
C. Neuman,et al.
An adaptive control strategy for nonlinear processes
,
1995
.
[10]
K. Åström.
Introduction to Stochastic Control Theory
,
1970
.