Improving trajectory calculations using deep learning inspired single image superresolution

06/07/2022
by   Rüdiger Brecht, et al.
0

Lagrangian trajectory or particle dispersion models as well as semi-Lagrangian advection schemes require meteorological data such as wind, temperature and geopotential at the exact spatio-temporal locations of the particles that move independently from a regular grid. Traditionally, this high-resolution data has been obtained by interpolating the meteorological parameters from the gridded data of a meteorological model or reanalysis, e.g. using linear interpolation in space and time. However, interpolation errors are a large source of error for these models. Reducing them requires meteorological input fields with high space and time resolution, which may not always be available and can cause severe data storage and transfer problems. Here, we interpret this problem as a single image superresolution task. We interpret meteorological fields available at their native resolution as low-resolution images and train deep neural networks to up-scale them to higher resolution, thereby providing more accurate data for Lagrangian models. We train various versions of the state-of-the-art Enhanced Deep Residual Networks for Superresolution on low-resolution ERA5 reanalysis data with the goal to up-scale these data to arbitrary spatial resolution. We show that the resulting up-scaled wind fields have root-mean-squared errors half the size of the winds obtained with linear spatial interpolation at acceptable computational inference costs. In a test setup using the Lagrangian particle dispersion model FLEXPART and reduced-resolution wind fields, we demonstrate that absolute horizontal transport deviations of calculated trajectories from "ground-truth" trajectories calculated with undegraded 0.5 winds are reduced by at least 49.5 interpolation of the wind data when training on 2 to 1 (4 to 2) resolution data.

READ FULL TEXT

page 7

page 9

research
09/18/2023

Machine Learning for enhancing Wind Field Resolution in Complex Terrain

Atmospheric flows are governed by a broad variety of spatio-temporal sca...
research
07/30/2022

Resolution enhancement of placenta histological images using deep learning

In this study, a method has been developed to improve the resolution of ...
research
06/09/2021

Neural UpFlow: A Scene Flow Learning Approach to Increase the Apparent Resolution of Particle-Based Liquids

We present a novel up-resing technique for generating high-resolution li...
research
05/14/2018

Cycle-Dehaze: Enhanced CycleGAN for Single Image Dehazing

In this paper, we present an end-to-end network, called Cycle-Dehaze, fo...
research
10/15/2021

Exploratory Lagrangian-Based Particle Tracing Using Deep Learning

Time-varying vector fields produced by computational fluid dynamics simu...
research
11/19/2020

Stochastic Tropical Cyclone Precipitation Field Generation

Tropical cyclones are important drivers of coastal flooding which have s...

Please sign up or login with your details

Forgot password? Click here to reset