LDP of System Identification under Independent and Identically Distributed Observation Noises

We first consider system identification under i.i.d. noise. Extension to correlated noises will be treated in Chapter 5. Beginning with the following assumptions, we should emphasize here that since we consider open-loop identification problems, the input signal u is part of experimental design and can be selected to enhance the identification process.

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