Abstract

This paper investigates the sensitivities of the Weather Research and Forecasting (WRF) model simulations to different parameterization schemes (atmospheric boundary layer, microphysics, cumulus, longwave and shortwave radiations and other model configuration parameters) on a domain centered over the inter-mountain western United States (U.S.). Sensitivities are evaluated through a multi-model, multi-physics and multi-perturbation operational ensemble system based on the real-time four-dimensional data assimilation (RTFDDA) forecasting scheme, which was developed at the National Center for Atmospheric Research (NCAR) in the United States. The modeling system has three nested domains with horizontal grid intervals of 30 km, 10 km and 3.3 km. Each member of the ensemble system is treated as one of 48 sensitivity experiments. Validation with station observations is done with simulations on a 3.3-km domain from a cold period (January) and a warm period (July). Analyses and forecasts were run every 6 h during one week in each period. Performance metrics, calculated station-by-station and as a grid-wide average, are the bias, root mean square error (RMSE), mean absolute error (MAE), normalized standard deviation and the correlation between the observation and model. Across all members, the 2-m temperature has domain-average biases of −1.5–0.8 K; the 2-m specific humidity has biases from −0.5–−0.05 g/kg; and the 10-m wind speed and wind direction have biases from 0.2–1.18 m/s and −0.5–4 degrees, respectively. Surface temperature is most sensitive to the microphysics and atmospheric boundary layer schemes, which can also produce significant differences in surface wind speed and direction. All examined variables are sensitive to data assimilation.

Highlights

  • Mesoscale numerical weather prediction (NWP) models provide very valuable weather forecast guidance for lead times of hours to days

  • (observation mean subtracted from forecast mean), mean absolute error (MAE), root mean square, mean absolute error (MAE), root mean square error (RMSE), normalized standard deviation (forecast’s standard deviation/observation’s standard error (RMSE), normalized standard deviation (Std) and the correlation (Cor) between forecasts and observations

  • The model outputs are linear interpolated to the observation point and height adjustment for temperature with empirical linear interpolated to the observation point and height adjustment for temperature with empirical lapse rate (6.5 K/km)

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Summary

Introduction

Mesoscale numerical weather prediction (NWP) models provide very valuable weather forecast guidance for lead times of hours to days. The WRF model is currently in operational use at the United States (U.S.) at National Centers for Environmental Prediction (NCEP) and other national meteorological centers, as well as in real-time forecasting configurations at laboratories, universities and private companies. The system used in this study is an operational system developed for weather forecast for the Western United States. This study will provide useful information for parameter setting for WRF simulation in the complex terrain area similar to the western United States of America (USA). The sensitivity of surface variables to the ABL scheme, cumulus parameterization, microphysics and boundary/initial condition will be investigated. Control run with YSU ABL scheme, Kain–Fritsch cumulus scheme, single momentum 6-class microphysics, Dudhia Shortwave.

Evaluation of the Sensitivities of the System
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11. Averages
Conclusions
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