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Optimal Prediction of Unmeasured Output from Measurable Outputs In LTI Systems

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 Added by Deividas Eringis
 Publication date 2021
and research's language is English




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In this short article, we showcase the derivation of an optimal predictor, when one part of systems output is not measured but is able to be predicted from the rest of the systems output which is measured. According to authors knowledge, similar derivations have been done before but not in state-space representation.



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