Cloud-enabled Subsurface Modeling
Project Information
- Discipline
- Petroleum Engineering (113)
- Subdiscipline
- 11.07 Computer Science
- Orientation
- Education
Cloud computing has a significant promise in hydrocarbon reservoir modeling and exploration studies. Reservoir modeling involves sparse data and therefore, multiple realizations, stochastic models are necessary to reduce uncertainty in reservoir characterization and management. Localized cluster computing environments can harness the scalability of reservoir simulations and reduce the simulation runtime. However, they are not growing as fast as the amount of work and data demands in this application area. As a result, cloud computing is becoming an emerging computing standard and the main purpose this project is to deploy a cloud based solutions for reservoir modeling applications and evaluate various standards and APIs for their interoperability, and areas for future development.
Intellectual MeritHarnessing the scalability reservoir modeling and simulations, the intellectual merit of this project is to (1) evaluate the interoperability of cloud standards applicable to this application area, and (2) facilitates the comparison of performance characteristics between local cluster, grid, and cloud computing environments.
Broader ImpactsThe effort could be used to demonstrate the scope of advanced distributed computing in petroleum engineering. A portion of this work will be used to develop/demonstrate educational content for the future engineering workforce in petroleum engineering, computer science and high performance computing.
Project Contact
- Project Lead
- Ravi Vadapalli (rvadapalli)
- Project Manager
- Ravi Vadapalli (rvadapalli)
- Project Members
- Akash Pargat, Alan Sill
Resource Requirements
- Hardware Systems
-
- alamo (Dell optiplex at TACC)
- foxtrot (IBM iDataPlex at UF)
- hotel (IBM iDataPlex at U Chicago)
- india (IBM iDataPlex at IU)
- sierra (IBM iDataPlex at SDSC)
- xray (Cray XM5 at IU)
- bravo (large memory machine at IU)
- delta (GPU Cloud)
- Not sure
The FutureGrid resources will be used to evaluate and develop APIs.
Scale of UseInitially the resources will be used to test existing capabilities with FutureGrid and their interoperability with reservoir modeling applications. During the course, simulation models will be developed and at that time the usage may increase. Until then, the scale of usage is minimal.
Project Timeline
- Submitted
- 11/07/2012 - 17:01