A review and appraisal of arrival-time picking methods for downhole microseismic data

Author:

Akram Jubran1,Eaton David W.2

Affiliation:

1. University of Calgary, Department of Geoscience and Zero-Offset Technology Solutions Inc., Calgary, Alberta, Canada..

2. University of Calgary, Department of Geoscience, Calgary, Alberta, Canada..

Abstract

We have evaluated arrival-time picking algorithms for downhole microseismic data. The picking algorithms that we considered may be classified as window-based single-level methods (e.g., energy-ratio [ER] methods), nonwindow-based single-level methods (e.g., Akaike information criterion), multilevel- or array-based methods (e.g., crosscorrelation approaches), and hybrid methods that combine a number of single-level methods (e.g., Akazawa’s method). We have determined the key parameters for each algorithm and developed recommendations for optimal parameter selection based on our analysis and experience. We evaluated the performance of these algorithms with the use of field examples from a downhole microseismic data set recorded in western Canada as well as with pseudo-synthetic microseismic data generated by adding 100 realizations of Gaussian noise to high signal-to-noise ratio microseismic waveforms. ER-based algorithms were found to be more efficient in terms of computational speed and were therefore recommended for real-time microseismic data processing. Based on the performance on pseudo-synthetic and field data sets, we found statistical, hybrid, and multilevel crosscorrelation methods to be more efficient in terms of accuracy and precision. Pick errors for S-waves are reduced significantly when data are preconditioned by applying a transformation into ray-centered coordinates.

Publisher

Society of Exploration Geophysicists

Subject

Geochemistry and Petrology,Geophysics

Reference82 articles.

1. Akazawa, T., 2004, A technique for automatic detection of onset time of P- and S-phases in strong motion records: Proceedings of the 13th World Conference on Earthquake Engineering, International Association for Earthquake Engineering, paper no. 786.

2. Akram, J., 2014, Downhole microseismic monitoring: Processing, algorithms and error analysis: Ph.D. thesis, University of Calgary.

3. Automatic Event-Detection and Time-Picking Algorithms for Downhole Microseismic Data Processing

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