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Non-linear model-order reduction based on tensor decomposition and matrix product

机译:基于张量分解和矩阵积的非线性模型降阶

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In this study, based on tensor decomposition and matrix product, the authors investigate two model-order reduction (MOR) methods for the quadratic-bilinear (QB) systems which are equivalently transformed from the non-linear input-output systems. Since the quadratic term coefficient of the QB system can be considered as the matricisation of a tensor, they propose two computationally efficient ways to obtain the reduced system by using tensor calculus. First, the Tucker decomposition of tensors is used to deal with the quadratic term coefficient of the QB system. The transformational matrix is constructed by applying the analysis of matrix product. Then, they get the reduced QB system which can match the first several expansion coefficients of the original output. Besides, they propose another MOR method based on the CANDECOMP/PARAFAC decomposition. These two methods can avoid large computational complexity in the process of computing the reduced system. Moreover, the error estimation and stability of the authors' MOR methods are discussed. The efficiency of their MOR methods is illustrated by two numerical examples and they show their competitiveness when compared to the proper orthogonal decomposition method.
机译:在这项研究中,基于张量分解和矩阵乘积,作者研究了二次-双线性(QB)系统的两种模型阶数缩减(MOR)方法,这些方法是从非线性输入-输出系统等效转换而来的。由于可以将QB系统的二次项系数视为张量的矩阵化,因此他们提出了两种计算有效的方法来使用张量演算来获得简化系统。首先,张量的塔克分解用于处理QB系统的二次项系数。变换矩阵是通过对矩阵乘积进行分析而构造的。然后,他们得到了简化的QB系统,该系统可以匹配原始输出的前几个扩展系数。此外,他们提出了另一种基于CANDECOMP / PARAFAC分解的MOR方法。这两种方法可以避免在简化系统的计算过程中产生较大的计算复杂性。此外,讨论了作者的MOR方法的误差估计和稳定性。两个数值示例说明了它们的MOR方法的效率,并且与适当的正交分解方法相比,它们显示了它们的竞争力。

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