--> Artificial Intelligence Application on Seismic Data for Automatic First-Break Arrival Picking
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Artificial Intelligence Application on Seismic Previous HitDataNext Hit for Automatic First-Break Arrival Picking

Abstract

Automatic arrival-picking schemes for seismic Previous HitdataNext Hit are indispensable due to large amount of digital Previous HitdataNext Hit recorded by wide seismic networks and the need for rapid analysis. Until now, the automation process has been applied only to seismological studies for earthquake analysis. In this study, the authors took the initiative to use the framework of automatic arrival picking and modified it for its application on Vertical Seismic Profiling (Previous HitVSPNext Hit) Previous HitdataNext Hit, a class of borehole measurements used for correlation with surface seismic Previous HitdataNext Hit to obtain higher resolution images than surface seismic images for oil and gas exploration by industries. An accurate estimation of Previous HitVSPNext Hit first breaks is important for Previous HitVSPNext Hit Previous HitdataNext Hit Previous HitprocessingNext Hit and velocity calculation which forms the backbone of subsurface modelling for hydrocarbon exploration. The authors tested different arrival-picking algorithms on Previous HitVSPNext Hit Previous HitdataNext Hit, which were based on finding changes in seismic trace attributes such as change in energy, power, amplitude or statistical properties of the seismic signal in time or frequency domain. The authors built and applied 7 arrival-picking algorithms: Short-term Average/Long-Term Average (STA/LTA) Ratio, Kurtosis, Skewness, Modified Energy Ratio (MER), Peak amplitude of a half cycle, Peak-to-Lobe Difference and Entropy Method. The authors then selected 4 best algorithms corresponding to high correlation coefficients by the method of Principal Component Analysis, which were fed to the deep learning Neural Network for its training of first-break arrival picking. The authors employed the Artificial Neural Network approach due to its adaptive and robust nature, quintessential for accurate first-break arrival picking of large volumes of complex seismic Previous HitdataNext Hit. The authors used the trained neural network to pick first-breaks in a more realistic Previous HitVSPNext Hit Previous HitdataNext Hit set. In these experiments, the authors found that the arrival picks from the trained neural network gave a very close approximation of the first-break arrival picks. The work thus provided valuable insight into the applicability of rapidly emerging Machine Learning techniques, in particular the Artificial Intelligence (AI) technology by deep learning Neural Networks, to seismic studies. The integration of AI with seismic studies for automating Previous HitVSPNext Hit Previous HitdataNext Hit Previous HitprocessingNext Hit has not been explored as on date as per the author’s knowledge. The study will transform the Previous HitdataNext Hit Previous HitprocessingNext Hit methods of the industry and will facilitate faster and more reliable seismic Previous HitdataNext Hit Previous HitprocessingTop with significant reduction in manual effort employed in the process, thus aiding in efficient and cost-effective oil and gas exploration.