Computation of matrix exponentials of special matrices

Computing matrix exponentials or transition matrices are important in signal processing and control systems. This paper studies the methods of computing the transition matrices related to linear dynamic systems, discusses and gives the properties of the transition matrices and explores the transition matrices of some special matrices. Some examples are provided to illustrate the proposed methods.

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