Computation of (approximate) polynomials common factors is an important problem in several fields of science, like control theory and signal processing. While the problem has been widely studied for scalar polynomials, the scientific literature in the framework of matrix polynomials seems to be limited to the problem of exact greatest common divisors computation. In this paper, we generalize two algorithms from scalar to matrix polynomials. The first one is fast and simple. The second one is more accurate but computationally more expensive. We test the performances of the two algorithms and observe similar behavior to the one in the scalar case. Finally we describe an application to multi-input multi-output linear time-invariant dynamical systems.
翻译:在控制理论和信号处理等几个科学领域,(近似)多面体共同因素的比较是一个重要问题。虽然这个问题已经对卡路里多面体进行了广泛研究,但矩阵多面体框架内的科学文献似乎仅限于精确、最常见的分数计算问题。在本文中,我们概括了两种算法,从标度到矩阵多面体。第一个算法既快又简单。第二个算法更准确,但计算成本更高。我们测试了两种算法的性能,并观察了与标度体中类似的行为。最后,我们描述了多种投入、多输出、线性线性时变动态系统的应用。