Publication | Closed Access
Multiagent Information Fusion and Cooperative Control in Target Search
163
Citations
28
References
2012
Year
Artificial IntelligenceEngineeringMultiagent Information FusionField RoboticsMulti-agent LearningIntelligent SystemsLimited SensingCooperative SearchSwarm RoboticsSystems EngineeringRobot LearningMultirobot SystemMulti-agent PlanningDecision FusionPath PlanningRobot NetworkDistributed RoboticsComputer ScienceMulti-robot TeamAerospace EngineeringRoboticsUnmanned Aerial Systems
This paper addresses cooperative search for multiple stationary ground targets by a group of unmanned aerial vehicles with limited sensing and communication capabilities. The whole surveillance region is partitioned into cells where each cell is associated with a probability of target existence within the cell, which constitutes a probability map for the whole region. Each agent keeps an individual probability map and updates the map individually with measurements according to Bayesian rule. A nonlinear transformation of the probability map is introduced to simplify the computation by linearizing the Bayesian update. A consensus-like distributed fusion scheme is proposed for multiagent map fusion. We prove that all the individual probability maps converge to the same one that reflects the true existence or nonexistence of targets within each cell. Coverage and topology control algorithms are designed for the path planning of mobile agents. Moreover, the performance of the fusion scheme for asynchronous implementations of sampling and communication is analyzed. Finally, the effectiveness of the proposed algorithms is illustrated via simulations.
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