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Nonlinear Electromagnetic Inverse Scattering Imaging Based on IN-LSQR

机译:基于IN-LSQR的非线性电磁逆散射成像

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摘要

A nonlinear inversion scheme is proposed for electromagnetic inverse scattering imaging. It exploits inexact Newton (IN) and least square QR factorization (LSQR) methods to tackle the nonlinearity and ill-posedness of the electromagnetic inverse scattering problem. A nonlinear model of the inverse scattering in functional form is developed. At every IN iteration, the sparse storage method is adopted to solve the storage and computational bottleneck of Frechet derivative matrix, a large-scale sparse Jacobian matrix. Moreover, to address the slow convergence problem encountered in the inexact Newton solution via Landweber iterations, an LSQR algorithm is proposed for obtaining a better solution of the internal large-scale sparse linear equations in the IN step. Numerical results demonstrate the applicability of the proposed IN-LSQR method to quantitative inversion of scatterer electric performance parameters. Moreover, compared with the inexact Newton method based on Landweber iterations, the proposed method significantly improves the convergence rate with less computational and storage cost.
机译:提出了一种用于电磁逆散射成像的非线性反演方案。它利用不精确的牛顿(IN)和最小二乘QR分解(LSQR)方法来解决电磁逆散射问题的非线性和不适定性。建立了功能形式反散射的非线性模型。在每次IN迭代中,都采用稀疏存储方法来解决Frechet导数矩阵,大规模稀疏Jacobian矩阵的存储和计算瓶颈。此外,为了解决在不精确的牛顿解中通过Landweber迭代遇到的缓慢收敛问题,提出了一种LSQR算法,用于在IN步骤中获得内部大规模稀疏线性方程的更好解。数值结果证明了所提出的IN-LSQR方法在散射体电性能参数定量反演中的适用性。此外,与基于Landweber迭代的不精确牛顿法相比,该方法显着提高了收敛速度,同时减少了计算和存储成本。

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