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Fast Iterative Solution of Integral Equations With Method of Moments and Matrix Decomposition Algorithm – Singular Value Decomposition

机译:矩量法和矩阵分解算法—奇异值分解的积分方程快速迭代解

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The multilevel matrix decomposition algorithm (MLMDA) was originally developed by Michielsen and Boag for 2-D TMz scattering problems and later implemented in 3-D by Rius The 3-D MLMDA was particularly efficient and accurate for piece-wise planar objects such as printed antennas. However, for arbitrary 3-D problems it was not as efficient as the multilevel fast multipole algorithm (MLFMA) and the matrix compression error was too large for practical applications. This paper will introduce some improvements in 3-D MLMDA, like new placement of equivalent functions and SVD postcompression. The first is crucial to have a matrix compression error that converges to zero as the compressed matrix size increases. As a result, the new MDA-SVD algorithm is comparable with the MLFMA and the adaptive cross approximation (ACA) in terms of computation time and memory requirements. Remarkably, in high-accuracy computations the MDA-SVD approach obtains a matrix compression error one order of magnitude smaller than ACA or MLFMA in less computation time. Like the ACA, the MDA-SVD algorithm can be implemented on top of an existing MoM code with most commonly used Green''s functions, but the MDA-SVD is much more efficient in the analysis of planar or piece-wise planar objects, like printed antennas.
机译:多级矩阵分解算法(MLMDA)最初由Michielsen和Boag开发,用于解决2-D TMz散射问题,后来由Rius在3-D中实施。3-D MLMDA对于分段平面物体(例如印刷的)特别有效且准确。天线。但是,对于任意的3D问题,它的效率不如多级快速多极算法(MLFMA),并且矩阵压缩误差对于实际应用而言太大。本文将介绍3-D MLMDA的一些改进,例如等效功能的新放置和SVD后压缩。第一个至关重要的一点是矩阵压缩误差随着压缩矩阵大小的增加而收敛到零。结果,新的MDA-SVD算法在计算时间和存储要求方面与MLFMA和自适应交叉逼近(ACA)相当。值得注意的是,在高精度计算中,MDA-SVD方法在更少的计算时间内获得了比ACA或MLFMA小一个数量级的矩阵压缩误差。与ACA一样,MDA-SVD算法可以在具有最常用Green函数的现有MoM代码的顶部实现,但是MDA-SVD在分析平面或分段平面对象时效率更高,像印刷天线。

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