Evaluation of Hourly Precipitation Characteristics from a Global Reanalysis and Variable-Resolution Global Model over the Tibetan Plateau by Using a Satellite-Gauge Merged Rainfall Product
Abstract
:1. Introduction
2. Materials and Methods
2.1. Description of the Selected Case
2.2. GRIST Model and Its Configuration
2.3. Datasets
- The density of the rain-gauge stations is relatively sparse over the TP. To better understand the observed spatial distribution of precipitation characteristics, diurnal cycle, and the elevation dependence of precipitation, we used a merged satellite-gauge gridded hourly dataset for China (China Merged Precipitation Analysis; CMPA) with a horizontal resolution of 0.1 [44] that was developed by the National Meteorological Information Center of the China Meteorological Administration. Initially, the hourly precipitation measurements from nearly 30,000 automatic weather stations over China are interpolated into 0.1 × 0.1 grids. The raw Climate Prediction Center’s morphing technique (CMORPH [45]) estimates are then resampled and summed into 0.1 × 0.1 grids and hourly accumulation. The resampled CMORPH data are calibrated based on the probability density function technique and merged with gauge data using an improved optimum interpolation technique. The final CMPA estimate covers a period from January 2008 to the present. This merged precipitation estimate combines the advantages of both the raw satellite-based data and the gauge observations over Mainland China [46].
- The Global Precipitation Measurement (GPM), which is led by the National Aeronautics and Space Administration and the Japan Aerospace Exploration Agency, provides the next generation of rainfall products at a temporal resolution of 30 min and spatial resolution of 0.1 [47,48]. The GPM core satellite carries a dual-frequency precipitation radar (DPR) and a conical-scanning multi-channel GPM Microwave Imager, which largely extends the sensor packages and expands the frequency of sensors. In addition, GPM has increased the orbital inclination of 65 from 35 of Tropical Rainfall Measuring Mission (TRMM), to afford wider coverage of important climate zones [49]. These upgraded sensors are used together with other sensors on the constellation satellites to develop the new Day-1 Integrated Multi-satellitE calibration algorithm for GPM (IMERG). IMERG is also utilized in this study to represent uncertainties among different observations.
- ERA5 is the fifth generation European Center for Medium-Range Weather Forecast (ECMWF) atmospheric reanalysis of the global climate, with a horizontal resolution of 0.25. ERA5 global reanalysis combines observations and models via 4D-Var data assimilation to provide a consistent record of the atmosphere, land, and ocean surfaces from 1979 [50]. Observations are assimilated in 12 h windows (09–21 UTC, and 21–09 UTC) within ECMWF’s Integrated Forecasting System (IFS) Cy41r2, with the atmosphere coupled to land and ocean. ERA5 has a finer spatiotemporal resolution (0.25 and hourly) than its predecessor, ERA-Interim, for capturing weather systems, as well as an improved representation of global precipitation. Furthermore, the diurnal cycle of convection is improved due to changes to the closure of CAPE [51], such that land-based precipitation now maximizes in the late afternoon rather than midday [50].
- The Global 30 Arc Second Elevation (GTOPO30) dataset produced by the Earth Resources Observation Systems (EROS) Data Center of the U.S. Geological Survey was used to obtain the terrain height. Elevations in GTOPO30 are regularly spaced at 30-arc seconds. For this study, data were interpolated into the CMPA grids (0.1× 0.1).
2.4. Methodology
3. Results
3.1. Spatial Pattern of Hourly Precipitation Characteristics
3.2. Elevation Dependence of Hourly Precipitation Characteristics
4. Discussion
5. Conclusions
- The precipitation of IMERG generally has a good consistency with CMPA, although its diurnal peak occurs 1–2 h earlier. This kind of difference in the diurnal variations exhibits different behaviors at different altitudes. Compared with CMPA, IMERG depicts the same midnight peak in low-altitude regions (namely the Sichuan Basin) but shows less nocturnal precipitation over the TP. Therefore, the difference between the precipitation phase of IMERG and CMPA in YTRV (EPTP) diminishes (increases) with altitude.
- ERA5 could well represent the spatial distribution of the precipitation amount and its variations changing with altitudes (especially in a large-scale terrain such as EPTP). However, in terms of the diurnal variations, as well as the hourly precipitation frequency and intensity, there is a notable difference between ERA5 and CMPA. Over the TP, ERA5 failed to reproduce the diurnal phase and the amplitude of precipitation. The precipitation frequency in ERA5 has a near-uniform peak at local noon time above 1000 m, while the diurnal amplitude of precipitation intensity is small. ERA5 significantly overestimates (underestimates) the frequency (intensity) of precipitation at various altitudes because it frequently generates weak precipitation and underestimates the frequency of heavy precipitation.
- GRIST has a greater resemblance to the CMPA, in terms of the spatial distribution of precipitation frequency and intensity, as well as the elevation dependence, compared with ERA5. Although the precipitation frequency in GRIST also tends to peak at noon time, the diurnal cycle of the precipitation intensity at different altitudes is comparable to CMPA, which contributes to its diurnal phase of the precipitation amount with a smaller bias than that of ERA5. In addition, the hourly precipitation frequency–intensity structure at various altitudes has also been well simulated in GRIST, although there is a larger overestimation (underestimation) of the frequency of light precipitation (heavy precipitation) as the altitude increases, which results in a negative bias of precipitation intensity, and a positive bias of amount and frequency over the TP.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Domain | Vertical levels | 30 |
Horizontal resolution | 3.5–50 km | |
Time | Simulation period | 27 July 2014–1 September 2014 |
Time steps | Dycore = 4 s, Tracer = 20 s | |
Forcing strategy | Initial conditions | ERA5 |
SST | ERA5 | |
Run start time | 00:00 UTC | |
Run duration | 36 days | |
Physical scheme | Radiation | RRTMG [38] |
Convection | Tiedtke-Betchtold [39,40] | |
Microphysics | WSM6 [41] | |
Land model | Noah-MP [42] | |
Boundary layer | YSU [43] |
Statistic Index | Equation 1 | Perfect Value |
---|---|---|
MB (Mean Bias) | 0 | |
RMSE (Root Mean Square Error) | 0 | |
CORR (Spatial Correlation Coefficient) | 1 |
Variables | Metrics | CMPA | IMERG | ERA5 | GRIST |
---|---|---|---|---|---|
Amount (mm/h, except CORR) | Mean | 0.09 | 0.12 | 0.19 | 0.18 |
MB | / | 0.03 | 0.10 | 0.08 | |
RMSE | / | 0.08 | 0.17 | 0.17 | |
CORR | / | 0.85 | 0.77 | 0.75 | |
Frequency (%, except CORR) | Mean | 8.69 | 13.52 | 37.24 | 24.43 |
MB | / | 4.83 | 28.55 | 15.73 | |
RMSE | / | 9.01 | 33.10 | 21.32 | |
CORR | / | 0.85 | 0.84 | 0.83 | |
Intensity (mm/h, except CORR) | Mean | 0.90 | 0.75 | 0.45 | 0.60 |
MB | / | −0.15 | −0.45 | −0.30 | |
RMSE | / | 0.47 | 0.64 | 0.56 | |
CORR | / | 0.89 | 0.88 | 0.87 |
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Chen, T.; Li, J.; Zhang, Y.; Chen, H.; Li, P.; Che, H. Evaluation of Hourly Precipitation Characteristics from a Global Reanalysis and Variable-Resolution Global Model over the Tibetan Plateau by Using a Satellite-Gauge Merged Rainfall Product. Remote Sens. 2023, 15, 1013. https://doi.org/10.3390/rs15041013
Chen T, Li J, Zhang Y, Chen H, Li P, Che H. Evaluation of Hourly Precipitation Characteristics from a Global Reanalysis and Variable-Resolution Global Model over the Tibetan Plateau by Using a Satellite-Gauge Merged Rainfall Product. Remote Sensing. 2023; 15(4):1013. https://doi.org/10.3390/rs15041013
Chicago/Turabian StyleChen, Tianru, Jian Li, Yi Zhang, Haoming Chen, Puxi Li, and Huizheng Che. 2023. "Evaluation of Hourly Precipitation Characteristics from a Global Reanalysis and Variable-Resolution Global Model over the Tibetan Plateau by Using a Satellite-Gauge Merged Rainfall Product" Remote Sensing 15, no. 4: 1013. https://doi.org/10.3390/rs15041013
APA StyleChen, T., Li, J., Zhang, Y., Chen, H., Li, P., & Che, H. (2023). Evaluation of Hourly Precipitation Characteristics from a Global Reanalysis and Variable-Resolution Global Model over the Tibetan Plateau by Using a Satellite-Gauge Merged Rainfall Product. Remote Sensing, 15(4), 1013. https://doi.org/10.3390/rs15041013