4.7 Article

Marine Controlled-Source Electromagnetic Data Denoising Method Using Symplectic Geometry Mode Decomposition

Related references

Note: Only part of the references are listed.
Article Engineering, Mechanical

Output-Only Modal Identification Based on Auto-regressive Spectrum-Guided Symplectic Geometry Mode Decomposition

Pengming Zhan et al.

Summary: This paper proposes a novel output-only structural modal identification approach based on an improved symplectic geometry mode decomposition method, namely auto-regressive spectrum-guided symplectic geometry mode decomposition (ARSGMD). The ARSGMD method decomposes the dynamic response into several symplectic geometry components containing one major frequency by introducing the auto-regressive spectrum to determine the iteration number and frequency range. The proposed ARSGMD-based modal identification method effectively extracts the structural modal parameters under impulse or ambient excitation.

JOURNAL OF VIBRATION ENGINEERING & TECHNOLOGIES (2023)

Article Acoustics

A denoising method for ultrasonic testing of rubber composites based on improved symplectic geometric mode decomposition

Jinxuan Zhu et al.

Summary: Ultrasonic nondestructive testing is widely used in industry due to its wide detection range and high detection efficiency. However, for multi-layer stacked rubber materials, ultrasound is easily affected by noise interference, posing a challenge in reducing or separating the noise through signal processing. A new ultrasonic echo denoising method based on symplectic geometry mode decomposition is proposed, which effectively decomposes useful components and noise components in the signal with good screening effect. Experimental research on simulated and measured signals confirms the effectiveness and robustness of the method, showing its superiority over other noise reduction methods.

APPLIED ACOUSTICS (2023)

Article Engineering, Multidisciplinary

Fault diagnosis of rolling bearing combining improved AWSGMD-CP and ACO-ELM model

Fuzheng Liu et al.

Summary: A novel fault diagnosis method based on adaptive weighted symplectic geometry mode decomposition (AWSGMD-CP) with Cosine difference factor (CDF) and Pearson correlation coefficient (PCC) and extreme learning machine (ELM) optimized by ant colony optimization (ACO) is proposed. The method can effectively extract fault features from vibration signals and has a high diagnosis accuracy of up to 99.18%.

MEASUREMENT (2023)

Article Automation & Control Systems

Cycle kurtosis entropy guided symplectic geometry mode decomposition for detecting faults in rotating machinery

Jianchun Guo et al.

Summary: This paper proposes an adaptive symplectic geometric mode decomposition (SGMD) method using cycle kurtosis entropy for weak feature extraction and compound faults detection in rotating machinery fault diagnosis. The cycle kurtosis entropy is introduced to measure the strength of periodic impulses in a signal, and an adaptive slip window is constructed using the cycle kurtosis entropy to extract weak fault features. The components selected by the cycle kurtosis entropy as the selection criterion are reconstructed to obtain a denoised signal. Experimental results demonstrate the effectiveness of the proposed method under strong noise conditions and for identifying strong periodic impulses.

ISA TRANSACTIONS (2023)

Article Engineering, Marine

Improved Detectivity for Detecting Gas Hydrates Using the Weighted Differential Fields of the Marine Controlled-Source Electromagnetic Data

Gang Li et al.

Summary: Gas hydrate is considered as a new energy resource, but it can also be a major greenhouse gas and pose a severe hazard to offshore infrastructures. Therefore, it is crucial to investigate the gas hydrate and its environmental impacts. Geophysical seismic reflection data and marine controlled-source electromagnetic data can be effectively used to detect gas hydrate.

JOURNAL OF MARINE SCIENCE AND ENGINEERING (2022)

Article Engineering, Mechanical

Enhanced symplectic geometry mode decomposition and its application to rotating machinery fault diagnosis under variable speed conditions

Guangyao Zhang et al.

Summary: In this paper, an adaptive harmonic components extraction method is proposed to accurately estimate the instantaneous phase of the reference shaft under variable speed conditions, and achieve fault diagnosis for rotating machinery.

MECHANICAL SYSTEMS AND SIGNAL PROCESSING (2022)

Article Geochemistry & Geophysics

Denoising Marine Controlled Source Electromagnetic Data Based on Dictionary Learning

Pengfei Zhang et al.

Summary: This article proposes a dictionary-learning-based denoising method for marine CSEM, which improves data quality by sparsely representing and reconstructing the contaminated signal. The effectiveness and superiority of the method are demonstrated through experiments.

MINERALS (2022)

Article Engineering, Industrial

Dynamic time warping using graph similarity guided symplectic geometry mode decomposition to detect bearing faults

Jianchun Guo et al.

Summary: This paper proposes an enhanced DTW method based on GS-SGMD, which decomposes the signal into multiple components to reduce noise interference and introduces graph similarity to select effective components for detection. Experimental results show that this method has higher precision compared to traditional methods.

RELIABILITY ENGINEERING & SYSTEM SAFETY (2022)

Article Engineering, Multidisciplinary

A novel signature extracting approach for inductive oil debris sensors based on symplectic geometry mode decomposition

Bing Yu et al.

Summary: The article introduces a novel signal decomposition method called SGMD for extracting the debris signature, showing its accurate and effective performance. Experimental results demonstrate that combining SGMD and EMD has better decomposition ability than EMD or wavelet decomposition.

MEASUREMENT (2021)

Article Engineering, Multidisciplinary

A novel fault diagnosis procedure based on improved symplectic geometry mode decomposition and optimized SVM

Xiaoyuan Zhang et al.

Summary: A novel fault diagnosis procedure based on improved symplectic geometry mode decomposition (SGMD) and optimized SVM is proposed, which effectively diagnoses faults in rotating machineries by decomposing and reconstructing signal components, extracting feature vectors, and optimizing SVM in the feature space.

MEASUREMENT (2021)

Article Engineering, Aerospace

Guide to Spectral Proper Orthogonal Decomposition

Oliver T. Schmidt et al.

AIAA JOURNAL (2020)

Article Engineering, Multidisciplinary

An early fault diagnosis method of gear based on improved symplectic geometry mode decomposition

Jian Cheng et al.

MEASUREMENT (2020)

Article Geosciences, Multidisciplinary

Marine controlled-source electromagnetic method data de-noising based on compressive sensing

Pengfei Zhang et al.

JOURNAL OF APPLIED GEOPHYSICS (2020)

Article Engineering, Biomedical

Systematic analysis of wavelet denoising methods for neural signal processing

Giulia Baldazzi et al.

JOURNAL OF NEURAL ENGINEERING (2020)

Article Engineering, Mechanical

A noise reduction method of symplectic singular mode decomposition based on Lagrange multiplier

Haiyang Pan et al.

MECHANICAL SYSTEMS AND SIGNAL PROCESSING (2019)

Article Engineering, Mechanical

Symplectic geometry mode decomposition and its application to rotating machinery compound fault diagnosis

Haiyang Pan et al.

MECHANICAL SYSTEMS AND SIGNAL PROCESSING (2019)

Article Geochemistry & Geophysics

MARE2DEM: a 2-D inversion code for controlled-source electromagnetic and magnetotelluric data

Kerry Key

GEOPHYSICAL JOURNAL INTERNATIONAL (2016)

Article Geosciences, Multidisciplinary

Quantifying the effect of the air/water interface in marine active source EM

David Wright

JOURNAL OF APPLIED GEOPHYSICS (2015)

Article Engineering, Electrical & Electronic

Variational Mode Decomposition

Konstantin Dragomiretskiy et al.

IEEE TRANSACTIONS ON SIGNAL PROCESSING (2014)

Article Mathematics, Interdisciplinary Applications

SINGULAR SPECTRUM DECOMPOSITION: A NEW METHOD FOR TIME SERIES DECOMPOSITION

Pietro Bonizzi et al.

ADVANCES IN DATA SCIENCE AND ADAPTIVE ANALYSIS (2014)

Article Geochemistry & Geophysics

Decomposition in upgoing and downgoing fields and inversion of marine CSEM data

Rune Mittet et al.

GEOPHYSICS (2013)

Article Geochemistry & Geophysics

The marine controlled-source electromagnetic method in shallow water

Rune Mittet et al.

GEOPHYSICS (2013)

Article Geochemistry & Geophysics

Detection and imaging sensitivity of the marine CSEM method

Rune Mittet et al.

GEOPHYSICS (2012)

Article Geochemistry & Geophysics

Marine Electromagnetic Studies of Seafloor Resources and Tectonics

Kerry Key

SURVEYS IN GEOPHYSICS (2012)

Article Geochemistry & Geophysics

Broad-band waveforms and robust processing for marine CSEM surveys

David Myer et al.

GEOPHYSICAL JOURNAL INTERNATIONAL (2011)

Article Geochemistry & Geophysics

Ten years of marine CSEM for hydrocarbon exploration

Steven Constable

GEOPHYSICS (2010)

Article Engineering, Mechanical

On the energy leakage of discrete wavelet transform

Z. K. Peng et al.

MECHANICAL SYSTEMS AND SIGNAL PROCESSING (2009)

Article Geochemistry & Geophysics

1D inversion and resolution analysis of marine CSEM data

Niels B. Christensen et al.

GEOPHYSICS (2007)

Article Geochemistry & Geophysics

Decomposition of electromagnetic fields into upgoing and downgoing components

Lasse Amundsen et al.

GEOPHYSICS (2006)

Article Computer Science, Interdisciplinary Applications

On-line outlier detection and data cleaning

HC Liu et al.

COMPUTERS & CHEMICAL ENGINEERING (2004)