IEEE Transactions on Automatic Control, Vol.54, No.5, 1048-1053, 2009
Optimal Control for Polynomial Systems Using Matrix Sum of Squares Relaxations
This note deals with a computational approach to an optimal control problem for input-affine polynomial systems based on a state-dependent linear matrix inequality (SDLMI) from the Hamilton-Jacobi inequality. The design follows a two-step procedure to obtain an upper bound on the optimal value and a state feedback law. In the first step, a direct usage of the matrix sum of squares relaxations and semidefinite programming gives a feasible solution to the SDLMI. In the second step, two kinds of polynomial annihilators decrease the conservativeness of the first design. The note also deals with a control-oriented structural reduction method to reduce the computational effort. Numerical examples illustrate the resulting design method.
Keywords:Polynomial systems;state feedback control;state-dependent linear matrix inequality (SDLMI);sum of squares (SOS)