Litcius/Paper detail

Collision Avoidance for Dynamic Obstacles with Uncertain Predictions using Model Predictive Control

Siddharth H. Nair, Eric Tseng, Francesco Borrelli

20222022 IEEE 61st Conference on Decision and Control (CDC)17 citationsDOI

Abstract

We propose a Model Predictive Control (MPC) for collision avoidance between an autonomous agent and dynamic obstacles with uncertain predictions. The collision avoidance constraints are imposed by enforcing positive distance between convex sets representing the agent and the obstacles, and tractably reformulating them using Lagrange duality. This approach allows for smooth collision avoidance constraints even for polytopes, which otherwise require mixed-integer or non-smooth constraints. We consider three widely used descriptions of the uncertain obstacle position: 1) Arbitrary distribution with polytopic support, 2) Gaussian distributions and 3) Arbitrary distribution with first two moments known, and obtain deterministic reformulations of the collision avoidance constraints. The proposed MPC formulation optimizes over feedback policies to reduce conservatism in satisfying the collision avoidance constraints. The proposed approach is validated using simulations of traffic intersections in CARLA.

Topics & Concepts

Collision avoidanceModel predictive controlObstacle avoidanceControl theory (sociology)TrajectoryComputer scienceMathematical optimizationCollisionPosition (finance)PolytopeGaussianRegular polygonMathematicsControl (management)Artificial intelligenceRobotMobile robotPhysicsAstronomyComputer securityEconomicsQuantum mechanicsGeometryFinanceDiscrete mathematicsAdvanced Control Systems OptimizationFormal Methods in VerificationRobotic Path Planning Algorithms