Abstract

The magnetic resonance sounding (MRS) method is a non-invasive, efficient and advanced geophysical method for groundwater detection. However, the MRS signal received by the coil sensor is extremely susceptible to electromagnetic noise interference. In MRS data processing, random noise suppression of noisy MRS data is an important research aspect. We propose an approach for intensive sampling sparse reconstruction (ISSR) and kernel regression estimation (KRE) to suppress random noise. The approach is based on variable frequency sampling, numerical integration and statistical signal processing combined with kernel regression estimation. In order to realize the approach, we proposed three specific sparse reconstructions, namely rectangular sparse reconstruction, trapezoidal sparse reconstruction and Simpson sparse reconstruction. To solve the distortion of peaks and valleys after sparse reconstruction, we introduced the KRE to deal with the processed data by the ISSR. Further, the simulation and field experiments demonstrate that the ISSR-KRE approach is a feasible and effective way to suppress random noise. Besides, we find that rectangular sparse reconstruction and trapezoidal sparse reconstruction are superior to Simpson sparse reconstruction in terms of noise suppression effect, and sampling frequency is positively correlated with signal-to-noise improvement ratio (SNIR). In one case of field experiment, the standard deviation of noisy MRS data was reduced from 1200.80 nV to 570.01 nV by the ISSR-KRE approach. The proposed approach provides theoretical support for random noise suppression and contributes to the development of MRS instrument with low power consumption and high efficiency. In the future, we will integrate the approach into MRS instrument and attempt to utilize them to eliminate harmonic noise from power line.

Highlights

  • Magnetic resonance sounding (MRS) has attracted much attention in recent years due to accuracy properties of magnetic resonance sounding (MRS) in groundwater detection, which offers important economic benefits

  • The rectangular sparse reconstruction and trapezoidal sparse reconstruction are better than Simpson sparse reconstruction in terms of the suppression effect of random noise, from Figure 7a–c and Table 1 in Section 4 and Equations (7)–(12) in Section 3.2.3 for details

  • In order to better suppress random noise in MRS data, we propose an approach of intensive sampling sparse reconstruction and kernel regression estimation to improve signal to noise ratio (SNR) in this paper

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Summary

Introduction

Magnetic resonance sounding (MRS) has attracted much attention in recent years due to accuracy properties of MRS in groundwater detection, which offers important economic benefits. MRS is a relatively efficient and non-invasive geophysical approach for groundwater surveying that utilizes the principle of magnetic resonance phenomenon in hydrogen atoms comprised of water in the geomagnetic field [1,2,3]. The development of nuclear magnetic resonance imaging in the biomedical field has promoted the MRS application in water resources exploration [4,5]. The MRS method and instrument have been further researched and developed in many countries such as France, the United States, Germany, China and other countries [6,7,8]. When the MRS instrument is exploited for groundwater exploration, the received signal is weak and degraded in ambient electromagnetic interference [14]. Obtaining the MRS signal with nanovolt-level amplitude is a challenging area in regards to strong electromagnetic noise [15]

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