Volume 5 Issue 2 A hybrid denoising method for low-field nuclear magnetic resonance data

Published 01 December, 2025

Low-field nuclear magnetic resonance (NMR) has broad application prospects in the exploration and development of unconventional oil and gas reservoirs. However, NMR instruments tend to acquire echo signals with relatively low signal-to-noise ratio (SNR), resulting in poor accuracy of T2 spectrum inversion. It is crucial to preprocess the low SNR data with denoising methods before inversion. In this paper, a hybrid NMR data denoising method combining empirical mode decomposition-singular value decomposition (EMD-SVD) was proposed. Firstly, the echo data were decomposed with the EMD method to low- and high-frequency intrinsic mode function (IMF) components as well as a residual. Next, the SVD method was employed for the high-frequency IMF components denoising. Finally, the low-frequency IMF components, the denoised high-frequency IMF components, and the residual are summed to form the denoised signal. To validate the effectiveness and feasibility of the EMD-SVD method, numerical simulations, experimental data, and NMR log data processing were conducted. The results indicate that the inverted NMR spectra with the EMD-SVD denoising method exhibit higher quality compared to the EMD method and the SVD method.

Jiangfeng Guo

Jiangfeng Guo received the B.S. degree in exploration technology and engineering from Yangtze University in 2013. He received the Ph.D. degree in geological resources and geological engineering from China University of Petroleum (Beijing) in 2019. He was a Post-Doctoral Fellow at University of New Brunswick, Canada, from 2019 to 2021. Currently, he is an associate professor in China University of Petroleum (Beijing). His research interests include NMR experiments and data processing, petrophysics, and NMR flow measurements.

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