Algorithms for optimal scheduling and management of hidden Markov model sensors 论文

2002IEEE Transactions on Signal Processing引用 263
Distributed Sensor Networks and Detection AlgorithmsTarget Tracking and Data Fusion in Sensor NetworksFault Detection and Control Systems

摘要

The author considers a hidden Markov model (HMM) where a single Markov chain is observed by a number of noisy sensors. Due to computational or communication constraints, at each time instant, one can select only one of the noisy sensors. The sensor scheduling problem involves designing algorithms for choosing dynamically at each time instant which sensor to select to provide the next measurement. Each measurement has an associated measurement cost. The problem is to select an optimal measurement scheduling policy to minimize a cost function of estimation errors and measurement costs. The optimal measurement policy is solved via stochastic dynamic programming. Sensor management issues and suboptimal scheduling algorithms are also presented. A numerical example that deals with the aircraft identification problem is presented.