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Experimental Investigations on Airborne Gravimetry Based on Compressed Sensing

机译:基于压缩传感的航空重力测量实验研究

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Gravity surveys are an important research topic in geophysics and geodynamics. This paper investigates a method for high accuracy large scale gravity anomaly data reconstruction. Based on the airborne gravimetry technology, a flight test was carried out in China with the strap-down airborne gravimeter (SGA-WZ) developed by the Laboratory of Inertial Technology of the National University of Defense Technology. Taking into account the sparsity of airborne gravimetry by the discrete Fourier transform (DFT), this paper proposes a method for gravity anomaly data reconstruction using the theory of compressed sensing (CS). The gravity anomaly data reconstruction is an ill-posed inverse problem, which can be transformed into a sparse optimization problem. This paper uses the zero-norm as the objective function and presents a greedy algorithm called Orthogonal Matching Pursuit (OMP) to solve the corresponding minimization problem. The test results have revealed that the compressed sampling rate is approximately 14%, the standard deviation of the reconstruction error by OMP is 0.03 mGal and the signal-to-noise ratio (SNR) is 56.48 dB. In contrast, the standard deviation of the reconstruction error by the existing nearest-interpolation method (NIPM) is 0.15 mGal and the SNR is 42.29 dB. These results have shown that the OMP algorithm can reconstruct the gravity anomaly data with higher accuracy and fewer measurements.
机译:重力测量是地球物理学和地球动力学中的重要研究课题。本文研究了一种用于高精度大规模重力异常数据重建的方法。基于机载重量技术,中国国防科学技术大学惯性技术实验室研制的捷联式航空重力仪(SGA-WZ)在中国进行了飞行试验。考虑到通过离散傅里叶变换(DFT)进行的空中重力测量的稀疏性,本文提出了一种利用压缩感知(CS)理论重建重力异常数据的方法。重力异常数据重建是一个不适定的逆问题,可以转化为稀疏的优化问题。本文以零范数为目标函数,提出了一种称为正交匹配追踪(OMP)的贪婪算法来解决相应的最小化问题。测试结果表明,压缩采样率约为14%,OMP重建误差的标准偏差为0.03 mGal,信噪比(SNR)为56.48 dB。相反,通过现有的最近插值方法(NIPM)进行的重构误差的标准偏差为0.15 mGal,SNR为42.29 dB。这些结果表明,OMP算法可以以更高的精度和更少的测量值重建重力异常数据。

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