Rapid Parameter Inference with Uncertainty Quantification for a Radiological Plume Source Identification Problem
Journal:
arXiv
Published Date:
Feb 20, 2025
Abstract
In the event of a nuclear accident, or the detonation of a radiological
dispersal device, quickly locating the source of the accident or blast is
important for emergency response and environmental decontamination. At a
specified time after a simulated instantaneous release of an aerosolized
radioactive contaminant, measurements are recorded downwind from an array of
radiation sensors. Neural networks are employed to infer the source release
parameters in an accurate and rapid manner using sensor and mean wind speed
data. We consider two neural network constructions that quantify the
uncertainty of the predicted values; a categorical classification neural
network and a Bayesian neural network. With the categorical classification
neural network, we partition the spatial domain and treat each partition as a
separate class for which we estimate the probability that it contains the true
source location. In a Bayesian neural network, the weights and biases have a
distribution rather than a single optimal value. With each evaluation, these
distributions are sampled, yielding a different prediction with each
evaluation. The trained Bayesian neural network is thus evaluated to construct
posterior densities for the release parameters. Results are compared to Markov
chain Monte Carlo (MCMC) results found using the Delayed Rejection Adaptive
Metropolis Algorithm. The Bayesian neural network approach is generally much
cheaper computationally than the MCMC approach as it relies on the
computational cost of the neural network evaluation to generate posterior
densities as opposed to the MCMC approach which depends on the computational
expense of the transport and radiation detection models.