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A Recovery Performance Study of Compressive Sensing Methods on Antenna Array Diagnosis from Near-Field Measurements

机译:近场测量天线阵列诊断压缩检测方法的恢复性能研究

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摘要

Antenna testing consists locating the potential defaults from radiated field measurements. It has been established in literature, that compressive sensing methods provide faster results in failure detection from smaller number of measurement data compared to the traditional back-propagation mechanisms. Compressive sensing (CS) methods require a priori measurement of failure-free reference array and require small number of measurements for diagnosis. However, there are conflicting reports in literature regarding the choice of appropriate CS method, and there is no sufficient comparison study to justify which one is a better choice under a very harsh condition. In this study, recovery performance test of CS methods for the diagnosis of antenna array from few near-field measured data under various signal-to-noise ratios (SNRs) is presented. Specifically, we tested three prominent regularization procedures: total variation (TV), mixed l(1)/l(2) norm, and minimization of the l(1) in solving diagnosis problems in antenna array. Linear system that relates the difference between near-field measured data from reference antenna (RA) array and array under test (AUT), and the difference that exist between coefficients of RA and the AUT, is solved by the three compressive sensing regularization methods. Numerical experiment of a 10 x 10 rectangular waveguide array under realistic noise scenario, operating at 10 GHz is used to conduct the test. Minimization l1 technique is more robust to additive data noise. It exhibits better diagnosis at 20 dB and 10 dB SNR, making it a better candidate for noisy measured data as compared to other techniques.
机译:天线测试由定位辐射现场测量的潜在默认值。它已经在文献中建立,即与传统的背部传播机制相比,压缩传感方法提供更快的测量数据的故障检测结果。压缩检测(CS)方法需要先验的无故障参考阵列测量,并且需要少量测量进行诊断。然而,关于合适的CS方法的选择存在相互矛盾的报告,并且没有足够的比较研究,以证明在一个非常恶劣的条件下是更好的选择。在这项研究中,提出了在各种信噪比(SNRS)下从少数近场测量数据诊断天线阵列的CS方法的恢复性能测试。具体而言,我们测试了三个突出的正则化程序:总变化(电视),混合L(1)/ L(2)规范,以及L(1)的最小化在解决天线阵列中的诊断问题。线性系统,其涉及来自参考天线(RA)阵列和阵列的近场测量数据和RA和AUT系数之间存在的差异的差异由三个压缩感测正规化方法求解。在现实噪声场景下的10×10矩形波导阵列的数值实验,在10 GHz操作时进行测试进行测试。最小化L1技术对附加数据噪声更加强大。它在20 dB和10 dB SNR上表现出更好的诊断,使其与其他技术相比,这是一个更好的噪音测量数据的候选者。

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