Seismic data processing, a complex and non-deterministic task, has traditionally faced challenges in separating signal from noise. Here we summarize the integration of machine learning (ML) into seismic data processing, emphasizing its transformative potential, and real-world applications.
Julien Oukili, Jyoti Kumar, Jon Burren, Steve Cochran, Martin Bubner, Denis Nasyrov and Bagher Farmani demonstrate the benefits of implementing deep neural networks for certain steps of seismic data processing on data examples from around the world in the December edition of First Break. Read more ‘Large-scale industrial deployment of machine learning workflows for seismic data processing’.
Machine learning, particularly through the utilization of deep neural networks, has emerged as a transformative force in the field of seismic data processing. This paradigm shift allows for the automation of specific processing steps, liberating geophysicists from laborious optimization tasks and enabling them to focus on enhancing data quality.
Conventional seismic data processing involves a sequential, time-intensive strategy. ML, however, disrupts this approach by accelerating specific processing steps. The following use cases exemplify the practical application of ML in the seismic data processing workflow currently employed by TGS.
ML proves instrumental in denoising raw seismic data before applying wavelet processing. The Real Image Denoising Network (RIDNet), a convolutional neural network (CNN), is employed for its efficiency in noise attenuation. Case studies from the Eastern Mediterranean, Faroes Shetland Basin, and offshore Malaysia showcase substantial noise reduction and improved wavefield generation and these examples can all be seen in the First Break paper. An example from Malaysia is shown below.