We prove that we can always construct strongly minimal linearizations of an arbitrary rational matrix from its Laurent expansion around the point at infinity, which happens to be the case for polynomial matrices expressed in the monomial basis. If the rational matrix has a particular self-conjugate structure we show how to construct strongly minimal linearizations that preserve it. The structures that are considered are the Hermitian and skew-Hermitian rational matrices with respect to the real line, and the para-Hermitian and para-skew-Hermitian matrices with respect to the imaginary axis. We pay special attention to the construction of strongly minimal linearizations for the particular case of structured polynomial matrices. The proposed constructions lead to efficient numerical algorithms for constructing strongly minimal linearizations. The fact that they are valid for {\em any} rational matrix is an improvement on any other previous approach for constructing other classes of structure preserving linearizations, which are not valid for any structured rational or polynomial matrix. The use of the recent concept of strongly minimal linearization is the key for getting such generality.
翻译:我们证明,我们总能从Laurent在无限点周围扩展的任意理性矩阵中构建极小的线性,这恰好是单项基质表达的多元矩阵。如果理性矩阵有一个特殊的自合结构,我们就会展示如何构建非常起码的线性化,以维护它。所考虑的结构是:与真实线相关的Hermitian和Skew-Hermitian理性矩阵,与想象轴相关的准Hermitian和准Sskew-Hermitian矩阵。我们特别注意为结构化多面基质的特定案例构建极小的线性矩阵。提议的构造可以导致高效的数字算法,以构建非常最低限度的线性矩阵。事实上,这些结构对于 69 任何 合理矩阵都是有效的。 与以前建造其他结构维护线性结构的方法相比,这些结构性矩阵对于任何结构上的合理或多面基质矩阵都无效。 使用最近极小的线性概念是获得这种普遍性的关键。