Multi-sensor networked estimation in electric power grids

CAMSAP(2011)

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摘要
The performance of a continuous-discrete Kalman filter using multi-sensor observations with irregular sampling patterns is analyzed in terms of the dynamics of the associated (predicted) error-covariance matrix. Irregular sampling may occur as a result of differences in sampling rates and/or lack of synchrony in a geographically-distributed power system. Alternatively, it may also be caused by intermittency (i.e., packet-loss) in the communication link between a sensor and an estimation/control center. We show that the ensemble-and time-averaged error covariance depends only on system parameters and on the characteristic function of the irregular sampling interval of the multi-sensor sampling pattern. We obtain lower and upper bounds on the average error covariance, as well as a necessary condition for its stability, expressed in terms of the region of convergence of the sampling interval characteristic function.
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关键词
multisensor networked estimation,kalman filters,power system stability,power system parameter estimation,electric power grids,ensemble-and time-averaged error covariance matrix,communication link,average error covariance,irregular sampling patterns,covariance matrices,power filters,control center,geographically-distributed power system,lower bounds,power grids,sampling interval characteristic function,multisensor sampling pattern,upper bounds,sensor fusion,continuous-discrete kalman filter,power system,packet loss,covariance matrix,sensor network,characteristic function,prediction error,electric power,kalman filter
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