Journal of Jilin University (Information Science Edition) ›› 2024, Vol. 42 ›› Issue (2): 200-209.

Previous Articles     Next Articles

Microseismic Signal Denoising Method Based on EM-KF Algorithm

LI Xuegui 1a,1b,1c , ZHANG Shuai 1a,1c , WU Jun 2 , DUAN Hanxu 1a,1c , WANG Zepeng 1a,1c   

  1. 1a. School of Computer and Information Technology; 1b. Artificial Intelligence Energy Research Institute; 1c. Heilongjiang Key Laboratory of Big Data and Intelligent Analysis of Petroleum, Northeast Petroleum University, Daqing 163318, China; 2. Exploration and Development Research Institute, Daqing Oilfield Company Limited, Daqing 163712, China
  • Received:2023-03-01 Online:2024-04-10 Published:2024-04-12

Abstract: Microseismic monitoring technology has been widely used in unconventional oil and gas development. The microseismic signal has weak energy and strong noise, which makes the follow-up work difficult and requires high-precision and accurate data. To solve the problem of extracting weak microseismic signals, an EM-KF (Expectation Maximization Kalman Filter)-based method is proposed for denoising microseismic signals. By establishing a state space model that conforms to the laws of microseismic signals and using the EM(Expectation Maximization) algorithm to obtain the optimal solution of the parameters for the Kalman filter, the signal-to-noise ratio of microseismic signals can be effectively improved while retaining the effective signals. The experimental results of synthetic data and real data show that this method has higher efficiency and better accuracy than traditional wavelet filtering and Kalman filtering.

Key words: microseism, expectation maximization (EM) algorithm, Kalman filter, signal to noise ratio

CLC Number: 

  • TP391