Application and evaluation of surrogate models for radiation source search

Jared A. Cook, Ralph C. Smith, Jason M. Hite, Razvan Stefanescu, John Mattingly

Research output: Contribution to journalArticlepeer-review

4 Scopus citations

Abstract

Surrogate models are increasingly required for applications in which first-principles simulation models are prohibitively expensive to employ for uncertainty analysis, design, or control. They can also be used to approximate models whose discontinuous derivatives preclude the use of gradient-based optimization or data assimilation algorithms. We consider the problem of inferring the 2D location and intensity of a radiation source in an urban environment using a ray-tracing model based on Boltzmann transport theory. Whereas the code implementing this model is relatively efficient, extension to 3D Monte Carlo transport simulations precludes subsequent Bayesian inference to infer source locations, which typically requires thousands to millions of simulations. Additionally, the resulting likelihood exhibits discontinuous derivatives due to the presence of buildings. To address these issues, we discuss the construction of surrogate models for optimization, Bayesian inference, and uncertainty propagation. Specifically, we consider surrogate models based on Legendre polynomials, multivariate adaptive regression splines, radial basis functions, Gaussian processes, and neural networks. We detail strategies for computing training points and discuss the merits and deficits of each method.

Original languageEnglish
Article number269
JournalAlgorithms
Volume12
Issue number2
DOIs
StatePublished - Feb 1 2019
Externally publishedYes

Funding

Funding: This research was supported by the Department of Energy National Nuclear Security Administration (NNSA) under the Award Number DE-NA0002576 through the Consortium for Nonproliferation Enabling Capabilities (CNEC). This research was supported by the Department of Energy National Nuclear Security Administration (NNSA) under the Award Number DE-NA0002576 through the Consortium for Nonproliferation Enabling Capabilities (CNEC). Satellite imagery used in this report is ? 2015 Commonwealth of Virginia, DigitalGlobe, District of Columbia (DC GIS), Sanborn, as well as the U.S. Geological Survey and is provided by Google Maps. Building footprints shown in satellite overlays is ? 2015 OpenStreetMaps contributors and is publicly available under the terms of the Open Database License (http://www.openstreetmap.org/copyright).

FundersFunder number
DC GIS
U.S. Geological Survey
National Nuclear Security AdministrationDE-NA0002576
Google
District of Columbia Space Grant Consortium

    Keywords

    • Bayesian inference
    • Radiation source localization
    • Surrogate modeling

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