Analysis for Packet Dropout in State Estimation Problem over Sensor Network

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Abstract:

In this paper, we discuss the data losses problem in state estimation process. In sensor network, due to the energy constrained and communication constrained, the system suffering varying data dropped problem, which include independent package dropped, related dropped in single data package transmission processing and partial package dropout in multiple data package transmission processing. Based on the proposed state estimation over sensor network model, the corresponding mathematical models are built and analyzed.

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523-527

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June 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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