4.7 Article

Ranging-Based Localizability Optimization for Mobile Robotic Networks

Journal

IEEE TRANSACTIONS ON ROBOTICS
Volume -, Issue -, Pages -

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TRO.2023.3263772

Keywords

Robots; Distance measurement; Location awareness; Robot sensing systems; Rigidity; Sensors; Position measurement; Cooperative localization; multirobot systems (MRS); path planning

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In robotic networks relying on noisy range measurements between agents for cooperative localization, potential-based planning methods are introduced to characterize the quality of the network geometry for cooperative position estimation. These methods utilize Cramer Rao lower bounds (CRLB) to provide a theoretical lower bound on the achievable positioning accuracy. The concept of localizability is extended using equality-constrained CRLBs to scenarios where additional information about the relative positions of the ranging sensors is known.
In robotic networks relying on noisy range measurements between agents for cooperative localization, the achievable positioning accuracy strongly depends on the network geometry. This motivates the problem of planning robot trajectories in such multirobot systems in a way that maintains high localization accuracy. We present potential-based planning methods, where localizability potentials are introduced to characterize the quality of the network geometry for cooperative position estimation. These potentials are based on Cramer Rao lower bounds (CRLB) and provide a theoretical lower bound on the error covariance achievable by any unbiased position estimator. In the process, we establish connections between CRLBs and the theory of graph rigidity, which has been previously used to plan the motion of robotic networks. We develop decentralized deployment algorithms appropriate for large networks, and we use equality-constrained CRLBs to extend the concept of localizability to scenarios where additional information about the relative positions of the ranging sensors is known. We illustrate the resulting robot deployment methodology through simulated examples and an experiment.

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