Ensemble using different Planetary Boundary Layer schemes in WRF model for wind speed and direction prediction over Apulia region
Articolo
Data di Pubblicazione:
2017
Abstract:
The Weather Research and Forecasting mesoscale model (WRF) was used to simulate hourly 10m
wind speed and direction over the city of Taranto, Apulia region (south-eastern Italy). This area is characterized
by a large industrial complex including the largest European steel plant and is subject to a Regional Air Quality
Recovery Plan. This plan constrains industries in the area to reduce by 10% the mean daily emissions by diffuse
and point sources during specific meteorological conditions named wind days. According to the Recovery Plan,
the Regional Environmental Agency ARPA-PUGLIA is responsible for forecasting these specific meteorological
conditions with 72 h in advance and possibly issue the early warning.
In particular, an accurate wind simulation is required. Unfortunately, numerical weather prediction models
suffer from errors, especially for what concerns near-surface fields. These errors depend primarily on uncertainties
in the initial and boundary conditions provided by global models and secondly on the model formulation, in
particular the physical parametrizations used to represent processes such as turbulence, radiation exchange, cumulus
and microphysics. In our work, we tried to compensate for the latter limitation by using different Planetary
Boundary Layer (PBL) parameterization schemes. Five combinations of PBL and Surface Layer (SL) schemes
were considered.
Simulations are implemented in a real-time configuration since our intention is to analyze the same configuration
implemented by ARPA-PUGLIA for operational runs; the validation is focused over a time range extending
from 49 to 72 h with hourly time resolution. The assessment of the performance was computed by comparing the
WRF model output with ground data measured at a weather monitoring station in Taranto, near the steel plant.
After the analysis of the simulations performed with different PBL schemes, both simple (e.g. average) and more
complex post-processing methods (e.g. weighted average, linear and nonlinear regression, and artificial neural
network) are adopted to improve the performances with respect to the output of each single setup. The neural
network approach comes out as the most promising method.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
WRF model; air quality
Elenco autori:
Miglietta, Mario
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