Robust Stackelberg Differential Game With Model Uncertainty

This study formalizes two types of modeling uncertainties in a stochastic Stackelberg linear-quadratic differential game and discusses the ssociated robust Stackelberg strategy design for either the leader or follower. Both uncertainties are primarily motivated by practical applications in engineering and management. The first uncertainty is connected to a disturbance unknown to the follower but known to the leader. A soft-constraint min-max control is applied by the follower to determine the optimal response, and then an augmented linear-quadratic FBSDE control is solved by the leader to ensure a robust strategy design. The second uncertainty involves a disturbance, the realization of which can be completely observed by the follower, but only its distribution can be accessed by the leader. Thus a hard-constraint min-max control on an affine-equality-constraint is studied by the leader to address the exact-optimal robust design. Moreover, based on a weak convergence technique, a minimizing sequence of near-optimal robust designs is constructed, which is more tractable in computation. Some numerical results of the abovementioned robust strategies are also presented.