Safe Navigation in Unmapped Environments for Robotic Systems with Input Constraints
This paper presents an approach for navigation and control in unmapped environments under input and state constraints using a composite control barrier function (CBF). We consider the scenario where real-time perception feedback (e.g., LiDAR) is used online to construct a local CBF that models local...
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Zusammenfassung: | This paper presents an approach for navigation and control in unmapped
environments under input and state constraints using a composite control
barrier function (CBF). We consider the scenario where real-time perception
feedback (e.g., LiDAR) is used online to construct a local CBF that models
local state constraints (e.g., local safety constraints such as obstacles) in
the a priori unmapped environment. The approach employs a soft-maximum function
to synthesize a single time-varying CBF from the N most recently obtained local
CBFs. Next, the input constraints are transformed into controller-state
constraints through the use of control dynamics. Then, we use a soft-minimum
function to compose the input constraints with the time-varying CBF that models
the a priori unmapped environment. This composition yields a single relaxed
CBF, which is used in a constrained optimization to obtain an optimal control
that satisfies the state and input constraints. The approach is validated
through simulations of a nonholonomic ground robot that is equipped with LiDAR
and navigates an unmapped environment. The robot successfully navigates the
environment while avoiding the a priori unmapped obstacles and satisfying both
speed and input constraints. |
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DOI: | 10.48550/arxiv.2410.02106 |