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The Burst Failure Influence on the $H_infty$ Norm

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 Added by Jonathan M. Palma
 Publication date 2018
and research's language is English




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In this work, we present an analysis of the Burst failure effect in the $H_infty$ norm. We present a procedure to perform an analysis between different Markov Chain models and a numerical example. In the numerical example the results obtained pointed out that the burst failure effect in the performance does not exceed 6.3%. However, this work is an introduction for a wider and more extensive analysis in this subject.



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