Stochastic modelling and inference of ocean transport
Item Status
Embargo End Date
Date
Authors
Brolly, Martin Thomas
Abstract
Inference of ocean dynamical properties from observations requires a suite of sta-
tistical tools. In this thesis we assemble and develop a selection of useful methods
for oceanographic inference problems. Our work is centred around the modelling
of ocean transport. We consider Lagrangian observations, including those obtained
from surface drifters. We adopt a Bayesian approach which offers a coherent frame-
work for diagnosing and predicting ocean transport and enables principled uncer-
tainty quantification. We also emphasise the role of stochastic models.
We begin with the problem of comparing stochastic models on the basis of ob-
servations. We apply Bayesian model comparison to classical stochastic differential
equation models of turbulent dispersion given trajectory data generated by simula-
tion of particles in an idealised forced–dissipative model of two-dimensional turbu-
lence. We discuss how model preference is quantifiably sensitive to the timescale
on which the models are applied. The method is widely applicable and accounts for
uncertainty in model parameters.
We then consider purely data-driven models for particle dynamics. In particular
we build a probabilistic neural network model of the single-particle transition density
given observations from the Global Drifter Program. The transition density model can
be used either to emulate surface transport, by modelling trajectories as a discrete-
time Markov process, or to estimate spatially-varying dynamical statistics including
diffusivity. As is standard for probabilistic neural networks we train our model to
maximise the likelihood of data. The model outperforms existing stochastic models,
as assessed by skill scores for probabilistic forecasts, and is better able to deal with
non-uniform data than standard methods.
A weakness of our transition density model is that, since it is trained by maximum
likelihood rather than Bayesian inference, its predictions come without uncertainty
quantification. This is especially concerning in regions where little data is available
and point estimates of statistics such as diffusivity cannot be trusted. With this mo-
tivation we discuss state-of-the-art methods in approximate Bayesian inference and
their effectiveness in building Bayesian neural networks. We highlight deficiencies
in current methods and identify the key challenges in providing uncertainty quan-
tification with neural network models. We illustrate these issues both in a simple
one-dimensional problem and in a Bayesian version of our transition density model.
This item appears in the following Collection(s)

