Presentation
Validated AI-Powered Machine Learning for Accelerating Delivery of Scientific Grand Challenges (2024 IEEE-CS Sidney Fernbach Award)
DescriptionA US imperative is to deliver a Fusion Pilot Plant to accelerate the fusion energy development timeline. This will rely heavily on validated scientific and engineering advances driven by HPC together with advanced statistical methods featuring artificial intelligence/deep learning/machine learning (AI/DL/ML) that must properly embrace verification, validation, and uncertainty quantification (VVUQ). Especially time-urgent is the need to predict and avoid large-scale “major disruptions” in tokamak systems.
This talk highlights the deployment of recurrent and convolutional neural networks in Princeton's Deep Learning Code—"FRNN"—that enabled the first adaptable predictive DL model for carrying out efficient "transfer learning" while delivering validated predictions of disruptive events across prominent tokamak devices. Moreover, the AI/DL capability can provide not only the “disruption score,” as an indicator of the probability of an imminent disruption but also a “sensitivity score” in real-time to indicate the underlying reasons for the predicted disruption. A real-time prediction and control capability has recently been significantly advanced with a novel surrogate model/HPC simulator ("SGTC")—a first-principles-based prediction and control surrogate necessary for projections to future experimental devices (e.g., ITER, FPP's) for which no "ground truth" observational data exist.
This talk highlights the deployment of recurrent and convolutional neural networks in Princeton's Deep Learning Code—"FRNN"—that enabled the first adaptable predictive DL model for carrying out efficient "transfer learning" while delivering validated predictions of disruptive events across prominent tokamak devices. Moreover, the AI/DL capability can provide not only the “disruption score,” as an indicator of the probability of an imminent disruption but also a “sensitivity score” in real-time to indicate the underlying reasons for the predicted disruption. A real-time prediction and control capability has recently been significantly advanced with a novel surrogate model/HPC simulator ("SGTC")—a first-principles-based prediction and control surrogate necessary for projections to future experimental devices (e.g., ITER, FPP's) for which no "ground truth" observational data exist.
Event Type
Awards and Award Talks
TimeWednesday, 20 November 20249am - 9:30am EST
LocationExhibit Hall A3
TP