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A transient electromagnetic signal denoising method based on an improved variational mode decomposition algorithm

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Abstract Transient electromagnetic method (TEM) is often disturbed by surrounding noise in field measurement, which leads to low resolution of data and affects accurate positioning of geological anomalies. In order… Click to show full abstract

Abstract Transient electromagnetic method (TEM) is often disturbed by surrounding noise in field measurement, which leads to low resolution of data and affects accurate positioning of geological anomalies. In order to solve this problem, an improved variational mode decomposition (VMD) algorithm based on whale optimization algorithm (WOA) is proposed. Firstly, the WOA is used to quickly obtain the optimal parameter combination of the decomposition number K and the penalty factor α of the VMD algorithm. Then, the improved VMD is used to adaptively decompose the signal. Finally, the Bhattacharyya distance algorithm is used to identify the effective mode and noise mode to accurately reconstruct the signal. The simulation comparison test shows that the proposed method has better performance in the noise processing of TEM signals. In addition, in the field experiment, this method successfully filters out the noise modes in the signal, which greatly improves the accuracy of data interpretation and verifies the effectiveness of the algorithm.

Keywords: decomposition; improved variational; variational mode; algorithm; transient electromagnetic; mode

Journal Title: Measurement
Year Published: 2021

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