Workshop 10: | Monday, 3 June |
Lecture Room: | 14-15 |
Conveners: |
Olivier Dubrule (Imperial College/Total) Mark Thompson (Equinor) Duncan Irving (EVRY) Lukas Mosser (Imperial College) |
Rationale:
It was clear at the EAGE/PESGB 1st Machine Learning workshop (PETEX, Nov 29-30, 2018) that there have been rapid advances in the application of Machine Learning (ML) for seismic, petrophysics, geology and reservoir modelling applications. However, some challenges need to be addressed, for example:
- Is a data-driven approach such as machine learning optimal for the use case at hand?
- Are we focussing too much on tactical rather than strategic improvements?
- Can ML-derived results be interpreted and explained satisfactorily?
- How do we introduce these tools and methods into our business?
The challenges need to be addressed by a focussed forum and we see the annual EAGE meeting as an ideal gathering of thought leaders and stakeholders for this activity.
Description:
The workshop will discuss recently developed applications of ML, and the challenges and opportunities associated with the development of these applications in the petroleum industry.
After a short survey of the expectations of potential participants, the first half of the workshop will consist of technical presentations of recent advances of ML, with an emphasis on Deep Learning. This will include:
Who should attend:
Please note: This workshop is almost at full capacity!
Workshop Programme:
09:00 | Introduction |
09:15 | Exploring the Subsurface Digital Transformation T. Todnem* (Equinor) |
09:40 | Learn to Invert: Surface wave inversion with deep neural network S. Hou* (CGG), S. Angio (CGG), A. Clowes (CGG), I. Mikhalev (CGG), H. Hoeber (CGG), S. Hagedorn (Wintershall Dea) |
10:00 | Neural Network Travel-Time Tomography S. Earp* (Univ. of Edinburgh) * A. Curtis (Institute of Geophysics, ETH Zurich) |
10:20 | Poster Speed Intro |
10:30 | Coffee break & Poster Session |
11:00 | Deep Learning in the Geosciences Workflow. Opportunities and challenges. P. Cordier* (Total) |
11:25 | Including Physics in Deep Learning – An example from 4D seismic pressure saturation inversion J.S. Dramsch* (Technical Univ. of Denmark), G. Corte (Heriot-Watt Univ.), H. Amini (Heriot-Watt Univ.), C. MacBeth (Heriot-Watt Univ.), & M. Luthje (Technical Univ. of Denmark) |
11:45 | Stratigraphic Segmentation Using Convolutional Neural Networks D. Civitarese* (IBM Research), D. Szwarcman (IBM Research), & E. Vital Brazil (IBM Research) |
12:05 | Lunch break |
13:05 | Getting Subsurface Ready for the Data Journey Using OSDU J. Krebbers* (Shell) |
13:30 | Removing Elastic Effects in FWI Using Supervised Cycled Generative Adversarial Networks J. Yao* (Imperial College London), L. Guasch (Imperial College London), M. Warner (Imperial College London), D. Davies (CNOOC International), & A. Wild (CNOOC International) |
13:50 | Coffee break & Poster session |
14:10 | Capacity Building for Driving ML and Analytics - The academic perspective D. Hodgetts* |
14:35 | The Path to Digital Maturity – Views from other industries N. O’Doherty |
15:00 | Panel and Workshop Discussion |
16:00 | End of Workshop |