Improving the Forecasts of Surface Latent Heat Fluxes and Surface Air Temperature in the GRAPES Global Forecast System
<p>Comparison of the 24 h forecasts of latent heat fluxes (W/m<sup>2</sup>) averaged in July 2016. The left panel (<b>a</b>) is the difference between the original GRAPES_GFS experiment (CTL) and ERA interim reanalysis, and the right panel (<b>b</b>) is the difference between the improved GRAPES_GFS experiment (EXP1; with modifications in the parameterizations of surface latent heat fluxes) and the CTL experiment. The 24 h forecasts started from each day during 1–31 July 2016.</p> "> Figure 2
<p>The same as <a href="#atmosphere-14-01241-f001" class="html-fig">Figure 1</a>, but for the latitudinal averages of atmospheric column water vapor content (g/kg) for the 24 h forecasts during 1–31 July 2016.</p> "> Figure 3
<p>Biases for the 2 m air temperature forecasts (°C) at 2000+ weather stations in China. The forecasts started from 12 UTC on 11 March 2019, with the lead times of 12 h (top panels, <b>a</b>,<b>b</b>) and 24 h (bottom panels, <b>c</b>,<b>d</b>). The left panels (<b>a</b>,<b>c</b>) are for the biases of CTL experiment, and the right panels (<b>b</b>,<b>d</b>) are for the biases of improved GRAPES_GFS experiment (EXP2; with modifications in the parameterizations of soil evaporation and roughness length).</p> "> Figure 4
<p>Differences in 2 m air temperature (°C) forecasts between improved GRAPES_GFS experiment (EXP2; with modifications in the parameterizations of soil evaporation and roughness length) and CTL experiment at with different forecast lead times. The forecasts started at 12 UTC on 11 March 2019. (<b>a</b>–<b>d</b>) are the differences for lead times of 12 hours, 24 hours, 108 hours and 120 hours, respectively.</p> "> Figure 5
<p>Root mean squared error (RMSE; °C) of 24 h forecasts of 2 m air temperature for CTL experiment and improved GRAPES_GFS experiment (EXP2; with modifications in the parameterizations of soil evaporation and roughness length). The forecasts started at 12 UTC on each day from 1 March 2019 to 15 April 2019. The forecasts were compared with the observations from 2000+ weather stations in China, and the mean RMSEs were shown.</p> "> Figure 6
<p>Root mean squared error (RMSE; °C) of 2 m air temperature forecasts over northeastern China with lead times from 6 h to 186 h for CTL experiment and improved GRAPES_GFS experiment (EXP3; with parameterizations of soil evaporation, roughness length and the supercooled soil water). The forecasts started at 12 UTC on each day from 1 January 2016 to 31 January 2016, and RMSE for each forecast lead was calculated. The top panel shows the RMSE for CTL and EXP3, while the bottom panel shows the differences in RMSE between EXP3 and CTL. Negative values in the bottom panel show the reduction of RMSE after improving GRAPES_GFS, and the error reduction is significant if it exceeds the uncertainty with 95% confidence level indicated by the vertical bars.</p> "> Figure 7
<p>Biases of 24 h precipitation forecasts (mm) started each day from 16 June 2019 to 30 September 2019 for CTL experiment and improved GRAPES_GFS experiment (EXP4; the model version is the same as EXP3, but for forecasts during summer period). The bias was calculated as the ratio of forecast rainfall events over the observed rainfall events, and the values close to 1 suggested un-biased forecasts. The horizontal axis showed the rainfall thresholds, where the events with daily rainfall larger than the threshold were counted. The forecasts were compared with the observations from 2000+ weather stations in China, and the mean biases were shown.</p> ">
Abstract
:1. Introduction
2. Model Parameterizations and Experimental Design
2.1. GRAPES_GFS
2.2. Improved Parameterizations for the Estimation of Latent Heat Flux
2.3. Improved Parameterization for the Estimation of 2 m Air Temperature
2.4. Experimental Design
- (1)
- EXP1 experiment by using GRAPES_GFS with modified parameterizations of soil evaporation and ocean surface roughness length, where the 24 h forecasts started from each day during 1–31 July 2016;
- (2)
- EXP2 experiment by using GRAPES_GFS with modified parameterizations from EXP1, and land surface roughness lengths for the exchanges in heat and moisture, salinity-related ocean surface vapor pressure, where the 24 h forecasts started from each day during 1 March–15 April 2019;
- (3)
- EXP3 experiment by using GRAPES_GFS with modified parameterizations from EXP1 and EXP2, as well as the supercooled soil water, where the 24 h forecasts started from each day during 1–31 January 2016;
- (4)
- CTL experiments are the same as EXP1–EXP3 but use the original GRAPES_GFS without any modifications in the surface parameterizations mentioned above.
- (5)
- To evaluate the performance of precipitation forecasts, we use the model version same as EXP3 to perform 24 h forecasts during 16 June–30 September 2019. This experiment is denoted as EXP4.
3. Results
3.1. Evaluation of the GRAPES_GFS Forecasts of Latent Heat Fluxes
3.2. Evaluation of the GRAPES_GFS Forecasts of 2 m Air Temperature
4. Conclusions and Discussion
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Liang, M.; Yuan, X.; Wang, W. Improving the Forecasts of Surface Latent Heat Fluxes and Surface Air Temperature in the GRAPES Global Forecast System. Atmosphere 2023, 14, 1241. https://doi.org/10.3390/atmos14081241
Liang M, Yuan X, Wang W. Improving the Forecasts of Surface Latent Heat Fluxes and Surface Air Temperature in the GRAPES Global Forecast System. Atmosphere. 2023; 14(8):1241. https://doi.org/10.3390/atmos14081241
Chicago/Turabian StyleLiang, Miaoling, Xing Yuan, and Wenyan Wang. 2023. "Improving the Forecasts of Surface Latent Heat Fluxes and Surface Air Temperature in the GRAPES Global Forecast System" Atmosphere 14, no. 8: 1241. https://doi.org/10.3390/atmos14081241
APA StyleLiang, M., Yuan, X., & Wang, W. (2023). Improving the Forecasts of Surface Latent Heat Fluxes and Surface Air Temperature in the GRAPES Global Forecast System. Atmosphere, 14(8), 1241. https://doi.org/10.3390/atmos14081241