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2021-03-25

Matrix Splitting Technique for Solving Electromagnetic Scattering Problems Over a Wide Angle by Compressive Sensing

By Qi Qi, Xin-Yuan Cao, Ming Sheng Chen, Zhi-Xiang Huang, and Xian-Liang Wu
Progress In Electromagnetics Research Letters, Vol. 97, 45-50, 2021
doi:10.2528/PIERL21030404

Abstract

By combining the method of moments and the compressive sensing theory, a rapid scheme for analyzing the electromagnetic scattering problems over a wide incident angle has been developed, by which the calculation times of traditional method of moments can be decreased efficiently. To further reduce the calculation times, the matrix splitting technique is proposed to establish a new scheme in this paper. The basic principle is elaborated in detail, and the effectiveness of the new scheme is verified by numerical results.

Citation


Qi Qi, Xin-Yuan Cao, Ming Sheng Chen, Zhi-Xiang Huang, and Xian-Liang Wu, "Matrix Splitting Technique for Solving Electromagnetic Scattering Problems Over a Wide Angle by Compressive Sensing," Progress In Electromagnetics Research Letters, Vol. 97, 45-50, 2021.
doi:10.2528/PIERL21030404
http://jpier.org/PIERL/pier.php?paper=21030404

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