Title :
Stochastic optimal LQR control with integral quadratic constraints and indefinite control weights
Author :
Lim, Andrew E B ; Zhou, Xun Yu
Author_Institution :
Dept. of Syst. Eng. & Eng. Manage., Chinese Univ. of Hong Kong, Shatin, Hong Kong
fDate :
7/1/1999 12:00:00 AM
Abstract :
A standard assumption in traditional (deterministic and stochastic) optimal (minimizing) linear quadratic regulator (LQR) theory is that the control weighting matrix in the cost functional is strictly positive definite. In the deterministic case, this assumption is in fact necessary for the problem to be well-posed because positive definiteness is required to make it a convex optimization problem. However, it has recently been shown that in the stochastic case, when the diffusion term is dependent on the control, the control weighting matrix may have negative eigenvalues but the problem remains well-posed. In this paper, the completely observed stochastic LQR problem with integral quadratic constraints is studied. Sufficient conditions for the well-posedness of this problem are given. Indeed, we show that in certain cases, these conditions may be satisfied, even when the control weighting matrices in the cost and all of the constraint functionals have negative eigenvalues. It is revealed that the seemingly nonconvex problem (with indefinite control weights) can actually be a convex one by virtue of the uncertainty in the system. Finally, when these conditions are satisfied, the optimal control is explicitly derived using results from duality theory
Keywords :
convex programming; diffusion; duality (mathematics); eigenvalues and eigenfunctions; linear quadratic control; matrix algebra; minimisation; stochastic systems; LQ control; deterministic control; duality theory; indefinite control weights; integral quadratic constraints; minimizing linear quadratic regulator; negative eigenvalues; stochastic control; stochastic optimal LQR control; strictly positive definite control weighting matrix; Control systems; Cost function; Eigenvalues and eigenfunctions; Optimal control; Regulators; Riccati equations; Size control; State feedback; Stochastic processes; Weight control;
Journal_Title :
Automatic Control, IEEE Transactions on