Memoryless Control Design for Persistent Surveillance under Safety Constraints
This paper deals with the design of time-invariant memoryless control policies for robots that move in a finite two- dimensional lattice and are tasked with persistent surveillance of an area in which there are forbidden regions. We model each robot as a controlled Markov chain whose state comprises...
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Zusammenfassung: | This paper deals with the design of time-invariant memoryless control
policies for robots that move in a finite two- dimensional lattice and are
tasked with persistent surveillance of an area in which there are forbidden
regions. We model each robot as a controlled Markov chain whose state comprises
its position in the lattice and the direction of motion. The goal is to find
the minimum number of robots and an associated time-invariant memoryless
control policy that guarantees that the largest number of states are
persistently surveilled without ever visiting a forbidden state. We propose a
design method that relies on a finitely parametrized convex program inspired by
entropy maximization principles. Numerical examples are provided. |
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DOI: | 10.48550/arxiv.1209.5805 |