Stochastic Parameterization using Compressed Sensing: Application to the Lorenz-96 Atmospheric Model

06/26/2021
by   Amartya Mukherjee, et al.
0

Growing set of optimization and regression techniques, based upon sparse representations of signals, to build models from data sets has received widespread attention recently with the advent of compressed sensing. This paper deals with the parameterization of the Lorenz-96 model with two time-scales that mimics mid-latitude atmospheric dynamics with microscopic convective processes. Compressed sensing is used to build models (vector fields) to emulate the behavior of the fine-scale process, so that explicit simulations become an online benchmark for parameterization. We apply compressed sensing, where the sparse recovery is achieved by constructing a sensing/dictionary matrix from ergodic samples generated by the Lorenz-96 atmospheric model, to parameterize the unresolved variables in terms of resolved variables. Stochastic parameterization is achieved by auto-regressive modelling of noise. We utilize the ensemble Kalman filter for data assimilation, where observations (direct measurements) are assimilated in the low-dimensional stochastic parameterized model to provide predictions. Finally, we compare the predictions of compressed sensing and Wilk's polynomial regression to demonstrate the potential effectiveness of the proposed methodology.

READ FULL TEXT

page 16

page 17

research
05/30/2019

Recovery of binary sparse signals from compressed linear measurements via polynomial optimization

The recovery of signals with finite-valued components from few linear me...
research
09/21/2015

A Bayesian Compressed Sensing Kalman Filter for Direction of Arrival Estimation

In this paper, we look to address the problem of estimating the dynamic ...
research
08/30/2021

Algebraic compressed sensing

We introduce the broad subclass of algebraic compressed sensing problems...
research
10/27/2019

Compressed Sensing with Probability-based Prior Information

This paper deals with the design of a sensing matrix along with a sparse...
research
10/01/2019

Blind calibration for compressed sensing: State evolution and an online algorithm

Compressed sensing, allows to acquire compressible signals with a small ...
research
03/23/2018

Deep Convolutional Compressed Sensing for LiDAR Depth Completion

In this paper we consider the problem of estimating a dense depth map fr...
research
07/01/2018

Fast Fourier-Based Generation of the Compression Matrix for Deterministic Compressed Sensing

The primary goal of this work is to review the importance of data compre...

Please sign up or login with your details

Forgot password? Click here to reset