Publication | Closed Access
Online distributed sensor selection
75
Citations
29
References
2010
Year
Unknown Venue
Sensor NetworksEngineeringMachine LearningData ScienceWireless Sensor SystemEdge ComputingMulti-sensor ManagementSensor SelectionSystems EngineeringInternet Of ThingsComputer ScienceUtility FunctionSensor OptimizationCombinatorial OptimizationSensor ConnectivitySignal ProcessingOnline GreedyCollaborative Sensor Network
A key problem in sensor networks is to decide which sensors to query when, in order to obtain the most useful information (e.g., for performing accurate prediction), subject to constraints (e.g., on power and bandwidth). In many applications the utility function is not known a priori, must be learned from data, and can even change over time. Furthermore for large sensor networks solving a centralized optimization problem to select sensors is not feasible, and thus we seek a fully distributed solution. In this paper, we present Distributed Online Greedy (DOG), an efficient, distributed algorithm for repeatedly selecting sensors online, only receiving feedback about the utility of the selected sensors. We prove very strong theoretical no-regret guarantees that apply whenever the (unknown) utility function satisfies a natural diminishing returns property called submodularity. Our algorithm has extremely low communication requirements, and scales well to large sensor deployments. We extend DOG to allow observation-dependent sensor selection. We empirically demonstrate the effectiveness of our algorithm on several real-world sensing tasks.
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