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为提高基于压缩感知技术的矩量法在三维电大目标双站电磁散射问题中的计算效率和稳定性, 提出新的稀疏、测量和重构方法, 构建一种新型压缩感知计算模型. 不同于基于欠定方程的传统的压缩感知计算模型, 新型计算模型首先采用按行均匀抽取阻抗矩阵的方法构造测量矩阵以获得稳定的计算结果; 然后, 基于Foldy-Lax方程生成多阶特征基函数并作为稀疏基对感应电流进行稀疏转换; 再依据少数低阶特征基函数足以近似表征感应电流的先验条件, 将恢复算法简化为最小二乘法; 最后, 将矩阵方程转换为一个超定系统并采用最小二乘法解出电流系数. 与传统的计算模型相比, 新型计算模型不仅可以获得更加稳定的精确解, 还可以显著提高电大目标双站散射问题的求解效率和计算精度. 数值仿真结果证明了新方法的可行性和高效性.The method of moments is one of the most effective algorithms for solving electromagnetic scattering problems. However, the high computational complexity limits its application to electrically large problems. As an improved algorithm, the compressive sensing-based method of moments introduces the compressive sensing technique into the algorithmic structure, which avoids the inverse of the matrix equation and improves the computational efficiency. Using the underdetermined equation-based calculation model, this scheme is utilized to efficiently analyze the bistatic scattering of the objects. In this technique, the extracted few rows from the impedance matrix are used to construct the measurement matrix. Nevertheless, the results are unstable due to the random extraction utilized to build the measurement matrix. Furthermore, it is challenging task to provide an appropriate sparse basis for the induced currents of three-dimensional objects discretized by the Rao-Wilton-Glisson basis functions. To address the aforementioned issues, a novel compressive sensing calculation model that enhances measurement matrix building, sparse basis construction, and recovery is provided in this paper. First, several rows of the impedance matrix are uniformly extracted to produce consistent computation results, which is opposed to the randomly constructed measurement matrix in the conventional technique. The number of rows to be extracted is typically set to be 3–5 times the number of basis functions for high accuracy. Then, the characteristic basis functions based on the Foldy-Lax equation are employed to construct the sparse basis. Considering the prior knowledge that the lower order characteristic basis functions are dominant, the columns of the recovery matrix corresponding to some low-order characteristic functions are determined in advance as the columns that will be identified by the recovery algorithm, thus simplifying the recovery algorithm to a least-squares operation. Obviously, the matrix equation is reduced to an overdetermined equation instead of the underdetermined equation since only a few low-order basis functions are to be computed. Compared with the conventional compressive sensing-based method of moments with characteristic basis functions, the computation time is significantly reduced in terms of constructing the basis functions and recovering the current coefficients, while the accuracy is improved. Finally, both the suggested method and the conventional compressive sensing-based method of moments are used to simulate the bistatic radar cross sections of the perfect electrical conductor cube, cylinder, and missile model. The efficiency and accuracy of the proposed method are verified by the numerical results.
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Keywords:
- compressive sensing /
- method of moments /
- characteristic basis function /
- measurement matrix
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[11] Liu Y, Qi Q, Cao X Y, Chen M S, Deng G Q, Huang Z X, WU X L 2021 Int. J. Antennas Propag. 2021 9912502Google Scholar
[12] Kong M, Chen M S, Cao X Y, Zhang L, Qi Q, Wu X L 2020 IEEE Access 8 127640Google Scholar
[13] Kong M, Chen M S, Cao X Y, Zhu J B, Kuang X J, Qi Q, Wu X L 2021 IEEE Antennas Wirel. Propag. Lett. 20 1527Google Scholar
[14] 王哲, 王秉中 2014 63 120202Google Scholar
Wang Z, Wang B Z 2014 Acta Phys. Sin. 63 120202Google Scholar
[15] Chai S R, Guo L X 2016 IEEE Antennas Wirel. Propag. Lett. 15 1771Google Scholar
[16] Wang Z, Wang B Z, Shao W 2015 J. Electromagn. Waves Appl. 29 683Google Scholar
[17] Chai S R, Guo L X 2016 J. Electromagn. Waves Appl. 30 1755Google Scholar
[18] Cao X Y, Chen M S, Qi Q, Kong M, Hu J H, Zhang L, Wu X L 2020 IEEE Microw. Wireless Compon. Lett. 30 541Google Scholar
[19] 丁亚辉, 孙玉发, 朱金玉 2018 67 100201Google Scholar
Ding Y H, Sun Y F, Zhu J Y 2018 Acta Phys. Sin. 67 100201Google Scholar
[20] Wang Z G, Wang P, Sun Y F, Nie W Y 2022 IEEE Antennas Wirel. Propag. Lett. 21 1817Google Scholar
[21] Candès E J 2008 Comptes Rendus Mathematique 346 589Google Scholar
[22] Wang J, Kwon S, Shim B 2012 IEEE Trans. Signal Process. 60 6202Google Scholar
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表 1 测量矩阵与稀疏基之间的相关系数
Table 1. Correlation coefficient of the measurement matrix and sparse basis.
方法 CS-CBFs NCS-CBFs 均匀抽取 随机抽取 均匀抽取 随机抽取 相关系数 0.033 + 0.132i 0.100 + 0.021i –0.040 + 0.087i 0.047 + 0.053i 表 2 计算时间和RCS误差比较
Table 2. Comparison of computation time and RCS error.
目标 方法 构造
基函数
时间/s重构
电流系数
时间/s总求解
时间/sRCS
误差/dBsm导体
立方体CS-CBFs 43.8 3.9 48.0 0.33 NCS-CBFs 24.0 1.3 25.6 0.09 导体
圆柱CS-CBFs 287.2 60.0 348.1 1.48 NCS-CBFs 200.4 6.7 208.0 0.71 导弹 CS-CBFs 75.4 2.4 78.1 1.02 NCS-CBFs 23.5 0.8 24.7 0.28 -
[1] Hanington R F 1968 Field Computation by Moment Methods (New York: Maxillan) p6
[2] Song J M, Lu C C, Chew W C 1997 IEEE Trans. Antenn. Propag. 45 1488Google Scholar
[3] Freni A, Vita D P, Pirinoli P, Matekovits L, Vecchi G 2011 IEEE Trans. Antenn. Propag. 59 4588Google Scholar
[4] Jrgensen E, Volakis J L, Meincke P, Breinbjerg O 2004 IEEE Trans. Antennas Propag. 52 2985Google Scholar
[5] Prakash V V S, Mittra R 2003 Microw. Opt. Technol. Lett. 36 95Google Scholar
[6] Sun Y F, Chan C H, Mittra R 2003 IEEE Antennas and Propagation Society International Symposium Columbus, June 22–27, 2003 p1068
[7] Donoho D L 2006 IEEE Trans. Inform. Theory 52 1289Google Scholar
[8] Chen M S, Liu F L, Du H M, Wu X L 2011 IEEE Antennas Wirel. Propag. Lett. 10 1243Google Scholar
[9] 柴水荣, 郭立新 2015 64 060301Google Scholar
Chai S R, Guo L X 2015 Acta Phys. Sin. 64 060301Google Scholar
[10] Chai S R, Guo L X 2016 IEEE Trans. Antennas Propag. 64 3545Google Scholar
[11] Liu Y, Qi Q, Cao X Y, Chen M S, Deng G Q, Huang Z X, WU X L 2021 Int. J. Antennas Propag. 2021 9912502Google Scholar
[12] Kong M, Chen M S, Cao X Y, Zhang L, Qi Q, Wu X L 2020 IEEE Access 8 127640Google Scholar
[13] Kong M, Chen M S, Cao X Y, Zhu J B, Kuang X J, Qi Q, Wu X L 2021 IEEE Antennas Wirel. Propag. Lett. 20 1527Google Scholar
[14] 王哲, 王秉中 2014 63 120202Google Scholar
Wang Z, Wang B Z 2014 Acta Phys. Sin. 63 120202Google Scholar
[15] Chai S R, Guo L X 2016 IEEE Antennas Wirel. Propag. Lett. 15 1771Google Scholar
[16] Wang Z, Wang B Z, Shao W 2015 J. Electromagn. Waves Appl. 29 683Google Scholar
[17] Chai S R, Guo L X 2016 J. Electromagn. Waves Appl. 30 1755Google Scholar
[18] Cao X Y, Chen M S, Qi Q, Kong M, Hu J H, Zhang L, Wu X L 2020 IEEE Microw. Wireless Compon. Lett. 30 541Google Scholar
[19] 丁亚辉, 孙玉发, 朱金玉 2018 67 100201Google Scholar
Ding Y H, Sun Y F, Zhu J Y 2018 Acta Phys. Sin. 67 100201Google Scholar
[20] Wang Z G, Wang P, Sun Y F, Nie W Y 2022 IEEE Antennas Wirel. Propag. Lett. 21 1817Google Scholar
[21] Candès E J 2008 Comptes Rendus Mathematique 346 589Google Scholar
[22] Wang J, Kwon S, Shim B 2012 IEEE Trans. Signal Process. 60 6202Google Scholar
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