I. Introduction
The rapid rise of robotic vehicle automation and control has driven the need for accurate mathematical models describing their motion. Many of the physical parameters of a vehicle, such as the tire cornering stiffness, are difficult to measure and have to be inferred from sensors, such as GPS and inertial measurement units. The amount of information we gain about the unknown parameters is largely dependent on how the system is excited. Designing an experiment so that it is maximally informative about the unknown parameters is often the goal of experimental design. This article presents novel experimental design techniques for parameter estimation applied to dynamical vehicle systems.