Suppressing simulation bias using multi-modal data
Bogdan Kustowski, Jim A. Gaffney, Brian K. Spears, Gemma J. Anderson,, Rushil Anirudh, Peer-Timo Bremer, Jayaraman J. Thiagarajan, Michael K. G., Kruse, Ryan C. Nora (Lawrence Livermore National Laboratory, Livermore, CA)

TL;DR
This paper introduces a transfer learning approach to reduce simulation bias in multi-modal data, enabling more accurate predictions with limited experimental data across scientific and engineering applications.
Contribution
It presents a novel transfer learning method combined with deep learning for multi-modal calibration, improving simulation predictions with fewer experimental data points.
Findings
Transfer learning improves simulation accuracy with limited experiments.
Baseline calibration worsens predictions compared to transfer learning.
Method generalizes to various multi-modal prediction problems.
Abstract
Many problems in science and engineering require making predictions based on few observations. To build a robust predictive model, these sparse data may need to be augmented with simulated data, especially when the design space is multi-dimensional. Simulations, however, often suffer from an inherent bias. Estimation of this bias may be poorly constrained not only because of data sparsity, but also because traditional predictive models fit only one type of observed outputs, such as scalars or images, instead of all available output data modalities, which might have been acquired and simulated at great cost. To break this limitation and open up the path for multi-modal calibration, we propose to combine a novel, transfer learning technique for suppressing the bias with recent developments in deep learning, which allow building predictive models with multi-modal outputs. First, we train…
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Taxonomy
TopicsLaser-Plasma Interactions and Diagnostics · Cold Fusion and Nuclear Reactions · Nuclear Physics and Applications
