A TPU-ENHANCED DEEP REINFORCEMENT LEARNING APPROACH FOR AUTOMATED GENERATIONS OF INTERPRETABLE MODELS FOR ENERGETIC MATERIALS ACROSS LENGTH SCALES

Abstract

Machine learning has increasingly become a disruptive force that changes how computational models are generated, verified and validated. With the new experimental data afforded by technologies such as micro-CT tomographic imaging, both the amount of data and the diversity of the data types are rapidly growing. In particular, the dynamic responses of energetic materials at the macroscopic scale is attributed to a combination of mechanisms across multiple length scales, such as reactive collapse of pores, localized shear, damage, and fragmentation of crystals, frictional heating amount contacts and debonding of the crystal-binder interfaces. This complexity makes it difficult to manually derive a theoretical model that guarantees all the important multi-physical coupling mechanisms are considered properly, while simultaneously ensuring that simplifications for the sake of convenience and interpretability remains appropriate for the intended applications. The objective of this DURIP project is to advance the fundamental understanding of the dynamic responses of energetic materials at the macroscopic scale via information obtained from sub-scale MD simulations and experiments. The support of this DURIP will be used to purchase a NVIDIA high-performance computing server designed specifically for accelerating machine learning tasks.By enabling acceleration through a new Tensor Core architecture, the time used for reinforcement and supervised machine learning used for both the PIs on-going YIP project, Modeling the highrate responses of wetted granular materials across scales and the third-party replicable validation exercises utilizing 3D printers, and the new FY19 MURI project, Integrating multiscale Modeling and Experiments to Develop a Meso-Informed Predictive Capability for Explosives Safety and Performance can be significantly shortened.

Document Details

Document Type
DoD Grant Award
Publication Date
Feb 25, 2023
Source ID
FA95502110027

Entities

People

  • WaiChing Sun

Organizations

  • Air Force Office of Scientific Research
  • Trustees of Columbia University in the City of New York
  • United States Air Force

Tags

Readers

  • Computational Fluid Dynamics (CFD)
  • Neural Network Machine Learning.
  • Research Science/Academic Research

Technology Areas

  • AI & ML
  • AI & ML - Neural Networks