학술논문

CS-BRM: A Probabilistic RoadMap for Consistent Belief Space Planning With Reachability Guarantees
Document Type
Periodical
Source
IEEE Transactions on Robotics IEEE Trans. Robot. Robotics, IEEE Transactions on. 40:1630-1649 2024
Subject
Robotics and Control Systems
Computing and Processing
Components, Circuits, Devices and Systems
Planning
Uncertainty
Trajectory
Robot sensing systems
Noise measurement
Measurement uncertainty
Aerospace electronics
Belief space roadmap
covariance steering
motion planning
probabilistic roadmap
uncertainty
Language
ISSN
1552-3098
1941-0468
Abstract
A new belief space planning algorithm, called covariance steering belief roadmap (CS-BRM), is introduced, analyzed, and numerically and experimentally tested. CS-BRM is a multiquery algorithm for motion planning for dynamical systems under simultaneous motion and observation uncertainties. CS-BRM extends the probabilistic roadmap approach to belief spaces based on the recently developed theory of covariance steering (CS) that enables guaranteed satisfaction of terminal belief constraints in finite time. The nodes in the CS-BRM are sampled in the belief space and represent distributions of the system states. A covariance steering controller steers the system from one BRM node to another, thus acting as an edge controller of the corresponding belief graph that ensures belief constraint satisfaction. After the edge controller is computed, a specific edge cost is assigned to that edge. The CS-BRM algorithm allows the sampling of nonstationary belief nodes, and thus, is able to explore the velocity space and find much more efficient trajectories than previous BRM methods. The performance of CS-BRM is evaluated and compared to previous belief space planning approaches using several numerical examples and experimental demonstrations, illustrating the benefits of the proposed approach.