核心概念
Proposing a Risk-aware motion planner using CVaR constraints for large-scale robotic swarms to ensure safety and flexibility.
摘要
Swarm robotics has gained attention for complex tasks. Existing methods face scalability issues. ROVER uses CVaR for collision avoidance. Hierarchical planning integrates macroscopic and microscopic methods. ADOC model navigates swarm state with GMM representation. CVaR measures risk beyond a threshold, enhancing safety. The proposed FTMPC solution ensures flexibility, scalability, and risk control ability.
統計資料
Nr "500"
α "0.05, 0.15, 0.3"
η "10^-5"
∆t "0.1s"
引述
"ROVER formulates a finite-time model predictive control problem predicated upon the macroscopic state of the robot swarm represented by a Gaussian Mixture Model."
"Utilizing the analytical expression of CVaR of a GMM derived in this work, we develop a computationally efficient solution to solve the non-linear constrained FTMPC through sequential linear programming."
"The simulations demonstrate the effectiveness of ROVER in flexibility, scalability, and risk mitigation."