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Multi-Robot Dynamical Source Seeking in Unknown Environments

Bin Du, Kun Qian, Hassan Iqbal, Christian Claudel, Dengfeng Sun

202112 citationsDOI

Abstract

This paper presents an algorithmic framework for the distributed on-line source seeking, termed as DoSS, with a multi-robot system in an unknown dynamical environment. Our algorithm, building on a novel concept called dummy confidence upper bound (D-UCB), integrates both estimation of the unknown environment and task planning for the multiple robots simultaneously, and as a result, drives the team of robots to a steady state in which multiple sources of interest are located. Unlike the standard UCB algorithm in the context of multi-armed bandits, the introduction of D-UCB significantly reduces the computational complexity in solving subproblems of the multi-robot task planning. This also enables our DoSS algorithm to be implementable in a distributed on-line manner. The performance of the algorithm is theoretically guaranteed by showing a sub-linear upper bound of the cumulative regret. Numerical results on a real-world methane emission seeking problem are also provided to demonstrate the effectiveness of the proposed algorithm.

Topics & Concepts

RegretRobotContext (archaeology)Computer scienceTask (project management)Upper and lower boundsMathematical optimizationLine (geometry)Task analysisComputational complexity theoryAlgorithmArtificial intelligenceMathematicsMachine learningEngineeringSystems engineeringGeometryPaleontologyBiologyMathematical analysisExtremum Seeking Control SystemsAdvanced Bandit Algorithms ResearchReceptor Mechanisms and Signaling
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