ROMAFeb 20, 2022

Velocity Obstacle Based Risk-Bounded Motion Planning for Stochastic Multi-Agent Systems

arXiv:2202.09748v1
Originality Incremental advance
AI Analysis

This work addresses collision avoidance in uncertain multi-agent systems, such as robotics or autonomous vehicles, but it is incremental as it builds on existing velocity obstacle and chance-constrained optimization methods.

The paper tackles motion planning for stochastic multi-agent systems by developing a risk-bounded methodology that uses velocity obstacles and chance constraints to generate collision-free trajectories under a prescribed collision risk bound, with simulation results showing effective collision avoidance and high-quality trajectories.

In this paper, we present an innovative risk-bounded motion planning methodology for stochastic multi-agent systems. For this methodology, the disturbance, noise, and model uncertainty are considered; and a velocity obstacle method is utilized to formulate the collision-avoidance constraints in the velocity space. With the exploitation of geometric information of static obstacles and velocity obstacles, a distributed optimization problem with probabilistic chance constraints is formulated for the stochastic multi-agent system. Consequently, collision-free trajectories are generated under a prescribed collision risk bound. Due to the existence of probabilistic and disjunctive constraints, the distributed chance-constrained optimization problem is reformulated as a mixed-integer program by introducing the binary variable to improve computational efficiency. This approach thus renders it possible to execute the motion planning task in the velocity space instead of the position space, which leads to smoother collision-free trajectories for multi-agent systems and higher computational efficiency. Moreover, the risk of potential collisions is bounded with this robust motion planning methodology. To validate the effectiveness of the methodology, different scenarios for multiple agents are investigated, and the simulation results clearly show that the proposed approach can generate high-quality trajectories under a predefined collision risk bound and avoid potential collisions effectively in the velocity space.

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