Abstract
Well logging is one of the main decision support methods in the oil and gas industry. However, depth mismatches between logs recorded with different runs or different logging tools in the same well remain a complex problem in the industry. Until now, the oil and gas industry has relied heavily on the judgment of log analysts, who manually align log data before interpreting them. Nevertheless, the process of manually depth alignment is subjective and time-consuming. This paper proposes a preprocessing algorithm that clean the data to apply Pearson correlation as a depth alignment metric. A cross-correlation depth alignment algorithm was proposed and tested on five wells located in Western Siberia. We also derived pairs of different-type logs from different bundles to calculate the optimal offset by cross-correlation.
Reference15 articles.
1. Basyrov, M. A., Akinshin, A. V., Makhmutov, I. R., Kantemirov, Yu. D., Oshnyakov, I. O., & Koshelev, M. B. (2020). Application of machine learning methods for automatic interpretation of open hole logging data. Oil Industry, (11), 44–47. https://doi.org/10.24887/0028-2448-2020-11-44-47 [In Russian]
2. Grjibovski, А. M. (2008). Correlation analysis. Human Ecology, (9), 50–60. [In Russian]
3. RD 153-39.0-072-01. (2001). Technical instructions for conducting geophysical surveys and work with devices on the cable in oil and gas wells. GERS. [In Russian]
4. Shepeleva, I. S. (2020). Field geophysics. Sukhoi State Technical University of Gomel. [In Russian]
5. Amin, T. B., & Mahmood, I. (2008). Speech recognition using dynamic time warping. 2008 2nd International Conference on Advances in Space Technologies (Nov. 29–30, 2008, Islamabad, Pakistan), 74–79. https://doi.org/10.1109/ICAST.2008.4747690