Assimilation of semi-qualitative observations with a stochastic Ensemble Kalman Filter

04/20/2018
by   Abhishek Shah, et al.
0

The Ensemble Kalman filter assumes the observations to be Gaussian random variables with a pre-specified mean and variance. In practice, observations may also have detection limits, for instance when a gauge has a minimum or maximum value. In such cases most data assimilation schemes discard out-of-range values, treating them as "not a number", at a loss of possibly useful qualitative information. The current work focuses on the development of a data assimilation scheme that tackles observations with a detection limit. We present the Ensemble Kalman Filter Semi-Qualitative (EnKF-SQ) and test its performance against the Partial Deterministic Ensemble Kalman Filter (PDEnKF) of Borup et al. (2015). Both are designed to explicitly assimilate the out-of-range observations: the out-of-range values are qualitative by nature (inequalities), but one can postulate a probability distribution for them and then update the ensemble members accordingly. The EnKF-SQ is tested within the framework of twin experiments, using both linear and non-linear toy models. Different sensitivity experiments are conducted to assess the influence of the ensemble size, observation detection limit and a number of observations on the performance of the filter. Our numerical results show that assimilating qualitative observations using the proposed scheme improves the overall forecast mean, making it viable for testing on more realistic applications such as sea-ice models.

READ FULL TEXT

page 1

page 13

research
03/29/2020

An Explicit Probabilistic Derivation of Inflation in a Scalar Ensemble Kalman Filter for Finite Step, Finite Ensemble Convergence

This paper uses a probabilistic approach to analyze the converge of an e...
research
10/27/2017

An iterative ensemble Kalman filter in presence of additive model error

The iterative ensemble Kalman filter (IEnKF) in a deterministic framewor...
research
04/29/2019

Assimilation of semi-qualitative sea ice thickness data with the EnKF-SQ

A newly introduced stochastic data assimilation method, the Ensemble Kal...
research
07/08/2022

Ensemble random forest filter: An alternative to the ensemble Kalman filter for inverse modeling

The ensemble random forest filter (ERFF) is presented as an alternative ...
research
04/28/2023

Reconstructing Cardiac Electrical Excitations from Optical Mapping Recordings

The reconstruction of electrical excitation patterns through the unobser...
research
08/28/2019

Analysis of a localised nonlinear Ensemble Kalman Bucy Filter with complete and accurate observations

Concurrent observation technologies have made high-precision real-time d...
research
10/28/2021

Analysis of COVID-19 in Japan with Extended SEIR model and ensemble Kalman filter

We introduce an extended SEIR infectious disease model with data assimil...

Please sign up or login with your details

Forgot password? Click here to reset