Abstract
This paper studies identification of systems in which the system output is quantized, transmitted through a digital communication channel, and observed afterwards. The concept of the CR Ratio is introduced to characterize impact of communication channels on identification. The relationship between the CR Ratio and Shannon channel capacity is discussed. Identification algorithms are further developed when the channel error probability is unknown.
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This research is supported in part by supported in part by the National Science Foundation under ECS-0329597, DMS-0603287, and DMS-0624849.
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Wang, L.Y., Yin, G.G. Information Characterization of Communication Channels for System Identification. Jrl Syst Sci & Complex 20, 251–261 (2007). https://doi.org/10.1007/s11424-007-9022-5
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DOI: https://doi.org/10.1007/s11424-007-9022-5