Skip to main navigation Skip to search Skip to main content

Improving the Representation of Organized Convection and Extreme Precipitation in High-Resolution Climate Models

Project: Research

Project Details

Description

In Situ Machine Learning for Intelligent Data Capture on Exascale Platforms PI: Nathan Fabian, Sandia National Labs Co-PI: Julia Ling, Sandia National Labs Co-PI: Kevin Reed, Stony Brook University In many dynamic systems, interesting events occur locally in time and space. Examples of such systems include ignition events in combustion simulations, material fractures in mechanics simulations, and extreme weather events in climate simulations. Due to memory constraints and data I/O costs, current simulation workflows save data at regularly spaced time-steps, at a fixed rate determined before the start of the simulation. Often this mode of operation results in missed events of interest, necessitating a simulation restart from before an event occurred with more frequent data saves. This data saving workflow is grossly inefficient and is already a bottleneck in the computing process. We propose to develop machine learning algorithms that can detect when interesting dynamical events are occurring, triggering data saves. These machine learning algorithms will performin situanomaly detection to flag regions with different dynamical properties than those previously recorded. The adaptive data saves would be local in time and space to match the event of interest, thereby enabling a much more efficient workflow that will reduce data I/O costs and data storage memory requirements. The algorithms will be tested on two applications: auto-ignition simulations and climate simulations. A critical component of this project will be developing machine learning algorithms that can be deployed efficientlyin situon HPC platforms with out-of-the-box functionality. The development ofin situmachine learning methods to detect anomalous events would enable a more efficient and effective workflow, in which all the relevant data are saved in a single simulation run, without re-starts or scientist intervention.
StatusFinished
Effective start/end date01/1/1712/31/20

Funding

  • US Department of Energy: $300,000.00

Fingerprint

Explore the research topics touched on by this project. These labels are generated based on the underlying awards/grants. Together they form a unique fingerprint.