Abstract

In nonlinear systems, the control input often directly impacts observability of the system. In this paper, we investigate the use of control barrier functions (CBFs) for enforcing observability of a mobile robot in target tracking, when only the distance to the target is measured. The problem is motivated by practical applications for autonomous robots when operating in GPS-denied environments. To address the tradeoffs between localization accuracy and tracking performance, a tracking controller is augmented by a control barrier function based on an observability metric. Two examples are used to show the efficacy of the approach, one with unicycle dynamics on a plane, and the other based on gliding robotic fish with complex 3D dynamics. The approach taken in this work is compared to a model predictive controller that optimizes a joint cost function of tracking error and observability metric. While both approaches are shown to maintain observability and enable tracking, the CBF-based approach is shown to have several advantages

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