Multi-Robot Active Sensing for Bearing Formations.

2023 International Symposium on Multi-Robot and Multi-Agent Systems (MRS)(2023)

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摘要
This paper proposes a novel distributed active sensing control strategy for formations of drones measuring relative bearings. To be able to localize their relative positions from bearing measurements, the drone formation must satisfy specific Persistency of Excitation (PE) conditions. We propose a solution that can meet these PE conditions by maximizing the information collected from onboard cameras via a distributed gradient-based algorithm. Additionally, we also consider presence of a (concurrent) position-based formation control task using Quadratic Program-based control with Control Lyapunov Functions (CLFs). The results show that the inclusion of active sensing in the formation control law enhances the localization accuracy and, as a consequence, the precision of reaching the desired formation. The improvement is especially important when the underlying graphs are not Infinitesimally Bearing Rigid (IBR), as it can be expected.
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关键词
Optimal Control,Formation Control,Onboard Camera,Estimation Error,Identity Matrix,Cost Function,Control Input,Second Derivative,Undirected,Regularization Term,Observing System,Quadratic Programming,Orthogonal Projection,Line Graph,Laplacian Matrix,Positive Semidefinite,Minimum Eigenvalue,Graph Topology,Formal Errors,Position Of The Robot,Limited Field Of View,Forgetting Factor,Simple Cycle,Distancing Measures,Position Vector
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