Performance Analysis of a Strong Constraint 4DVar and 4DEnVar on
Regional Ionosphere Imaging
Abstract
Data assimilation (DA) techniques have recently gained traction in the
ionospheric community, particularly at regional operational centers
where more precise data are becoming prevalent. At centre stage is the
argument over which technique or scheme merits realization. At 4DSpace,
we have in-house developed and assessed the performance of two regional
flavors of short-term forecast strong constraint four-dimensional (4D,
space and time) variational (SC4DVar) DA schemes; the orthodox
incremental (SC4DVar-Inc) and ensemble-based (SC4DEnVar) approach.
SC4DVar-Inc is bottled-necked by expensive Tangent Linear Models (TLMs)
and model Ad-joints (MAs), while SC4DEnVar design mitigates these
limitations. Both schemes initialize from the same background
(IRI-2016), and electron densities forward propagated (30-min) by a
Gauss Markov filter- the densities take on a log-normal distribution to
assert the mandatory ionosphere density positive definiteness.
Preliminary assimilation is performed only with ubiquitous Global
Navigation Satellite System observables from ground-based receivers,
with a focus on moderately stable mid-latitudes, specifically the
Japanese archipelago and neighboring areas. Using a simulation analysis,
we find that under model space localization, 30 member Ensembles are
sufficient for regional SC4DEnVar. Verification of reconstructions is
with independent observations from ground-based ionosonde and satellite
radio occultations: the performance of both schemes is fairly adequate
during the quiet period when the background has a better estimation of
the hmF2. SC4DVar-Inc is slightly better over areas densely populated
with measurements, but SC4DEnVar estimates the overall 3D ionosphere
picture better, particularly in remote areas and during severe
conditions. These results warrant SC4DEnVar as a better candidate for
precise short-time regional forecasts.