Evaluation and Improvement of the Quality of Ground-Based Microwave Radiometer Clear-Sky Data
Abstract
:1. Introduction
2. Data and Clear-Sky Samples
2.1. Data
2.2. Scheme to Obtain the Clear-Sky Samples
- (1)
- Based on the relevant cloud physics literature [28,29], clouds are divided into ten types, with each cloud type having four possible cloud base heights, four thicknesses, and five possible cloud water concentrations, so that a parameter space comprising 800 possible cloud parameter combinations was constructed, as shown in Table 2.
- (2)
- The 1976 US standard atmosphere was adopted and a relative humidity of 95% was set at each height in cloud layers as defined in Table 2 to form a cloudy layer for the simulation calculation of the cloud contribution to the brightness temperature measurement.
- (3)
- The sensitivity of the cloud contribution in each channel to cloud water concentration and cloud thickness is analyzed for each channel, which gives the result that Channels 2, 7, and 10 are the best channels for cloud identification, and the estimated water concentration and cloud thickness based on regression for the three channels are noted as and , respectively. The standard deviation of residuals for each channel is also obtained from regression analysis, so that one has and , respectively.
- (4)
- The weighted average
- (5)
- If the cloud parameters inversed from Equation (1a,b) are close to 0, it can be judged that the corresponding time is “clear-sky” time.
3. Error Statistics and Case Analysis of the LV2 Product
- (1)
- From Figure 1a, the LV2 temperature bias was negative overall (solid green line), with a bias of −4 °C at the height of 4.4 km, implying that the retrievals from the radiometer system provided by the manufacture are generally cooler than the RAOB, and the RMSE of the temperature (green dotted line) was greater than 2 °C at each level, even reaching 6 °C at the height of 5.5 km.
- (2)
- Figure 1b shows that the bias of the LV2 water vapor density was positive overall, implying that the retrievals from the radiometer system are generally moister than the RAOB. Further, it must be pointed out that the bias is as large as 2.3 g/m3 near the height of 1.0 km (solid green line) and the RMSE (dotted green line) was 4.0 g/m3, the same order as in the common air.
- (3)
- From Figure 1c, the correlation coefficient between the LV2 temperature and the RAOB, as shown by the solid green line, was close to 1 below 3 km and no less than 0.8 above, but the correlation coefficient between the LV2 water vapor density and the RAOB, as shown by the dotted green line, decreased quickly from 1 at the ground to less than 0.3 at the 2 km height.
4. Correction of Brightness Temperature from TBM to TBO
- (1)
- The simulated value of the brightness temperature was calculated by using a radiation transfer model and the atmospheric profiles in the NCEP FNL, and recorded as TBC.
- (2)
- A fitting relationship between TBC and TBM was established as follows:
- (3)
- The corrected value of brightness temperature would be obtained by
5. Error Statistics and Case Analysis of the Profiles Retrieved from TBO
6. Retrieval Analysis of a Remotely Sensed Inversion Layer Process
- (1)
- During the morning (0800 and 1400 BT), as the ground was heated by the sun, the top of the temperature inversion layer gradually decreased, weakened, and disappeared, as shown Figure 4a. During the afternoon, the ground temperature gradually decreased due to the weakening of solar radiation, and the top of the inversion layer gradually formed, strengthened, and rose.
- (2)
- The water vapor density in the atmosphere decreased substantially with height (Figure 4b). Only when the temperature inversion layer vanished around the period 1100–1600 BT could surface water vapor be transported upward (water vapor density increases gradually at the height of about 1.4 km), forming a weak moisture inversion layer. While the temperature inversion gradually appeared in the afternoon until the next morning, the water vapor transport gradually stopped and returned to a state of decreasing with height.
- (3)
7. Conclusions
- The bias of the temperature and humidity profile obtained by TBO inversion was reduced almost to 0 at each height, and the RMSE was obviously reduced at each height. The RMSE of temperature was less than 2 °C below 5 km, and that of water vapor density was no more than 1.5 g/m3 at the height of 1 km.
- The correlation between the temperature profile obtained by TBO and RAOB was close to 1 below the 3 km height, and obviously improved over the LV2 above. The water vapor density profile obtained by TBO inversion improved the correlation coefficient at each height; in particular, the correlation coefficient around the 3 km height increased from 0.2 to 0.9.
- The evolution of a temperature inversion process has been taken as an example for the application of the high temporal resolution information from the radiometer. The TBO inversion results with a time resolution of 2 min clearly reflected the evolution of the inversion layer and humidity stratification within the 12 h during 0000–1200 UTC (0800–2000 BT). The top of the inversion layer gradually decreased, weakened, and disappeared between 0000 and 0600 UTC (0800–1400 BT) due to the gradual warming of the ground, and in the afternoon, the top of the inversion layer gradually formed, strengthened, and rose due to the gradual cooling of the ground. In this process, the water vapor density decreased substantially with height, and only when the inversion layer vanished during 0300–0800 UTC (1100–1600 BT) could surface water vapor density be transported upward (water vapor density increases gradually at the height of about 1.4 km), gradually forming a weak moisture inversion layer. When the temperature inversion gradually appeared in the afternoon, the water vapor transport gradually stopped and returned to a state of decreasing with height. This evolution of temperature inversion was not visible in the twice-daily radiosonde data.
- The improvement of the correlation and reduction of bias and RMSE after the correction of brightness temperatures by NCEP FNL as described above is reasonable and understandable because the data source of the NCEP FNL includes both radiosondes and satellites, but is absolutely independent of a ground-based radiometer. Therefore, the approach presented by this paper is a valuable reference for the reprocessing of the historical observations that have been accumulated for years by less-calibrated radiometers.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Channel Index | Frequency (GHz) | Case 1 TBM, TBC, TBO (K) | Case 2 TBM, TBC, TBO (K) | Case 3 TBM, TBC, TBO (K) | Case 4 TBM, TBC, TBO (K) |
---|---|---|---|---|---|
1 | 22.23 | 29.1, 16.9, 12.5 | 23.9, 11.8, 11.0 | 75.4, 71.4, 69.7 | 16.6, 13.2, 14.7 |
2 | 22.50 | 28.9, 17.0, 12.2 | 23.6, 11.9, 10.8 | 75.7, 72.1, 70.4 | 15.2, 13.3, 15.3 |
3 | 23.03 | 30.5, 16.6, 10.3 | 25.4, 11.8, 10.0 | 71.3, 69.3, 66.1 | 12.6, 13.1, 14.2 |
4 | 23.83 | 28.9, 15.2, 10.7 | 23.2, 11.3, 9.3 | 65.4, 60.4, 57.0 | 10.9, 12.3, 13.3 |
5 | 25.00 | 22.9, 13.4, 8.2 | 20.3, 10.6, 8.8 | 49.1, 47.9, 44.3 | 9.8, 11.2, 11.9 |
6 | 26.23 | 20.1, 12.3, 7.2 | 17.3, 10.2, 7.6 | 38.9, 39.4, 35.8 | 11.2, 10.7, 11.6 |
7 | 28.00 | 25.3, 11.8, 7.4 | 23.2, 10.3, 8.6 | 33.6, 33.4, 28.5 | 12.7, 10.6, 11.8 |
8 | 30.00 | 29.1, 12.1, 7.4 | 27.2, 10.9, 8.8 | 31.6, 31.0, 25.5 | 11.0, 11.1, 11.7 |
9 | 51.20 | 108.3, 109.5, 108.4 | 108.5, 107.9, 108.6 | 132.5, 130.1, 132.7 | 102.5, 108.4, 108.9 |
10 | 51.76 | 129.3, 127.9, 127.3 | 127.7, 125.2, 125.9 | 151.1, 148.6, 150.0 | 121.0, 126.3, 127.3 |
11 | 52.28 | 148.4, 152.1, 152.9 | 145.1, 147.9, 149.1 | 174.8, 173.3, 176.6 | 141.4, 149.9, 150.1 |
12 | 52.80 | 179.3, 182.4, 184.5 | 173.3, 176.3, 177.9 | 204.2, 204.4, 206.5 | 170.2, 179.5, 179.5 |
13 | 53.34 | 212.7, 216.3, 217.7 | 201.9, 208.3, 206.1 | 238.7, 238.6, 240.0 | 203.8, 212.6, 212.6 |
14 | 53.85 | 244.4, 244.8, 246.7 | 234.1, 235.8, 236.1 | 268.3, 267.0, 268.1 | 234.8, 240.7, 240.7 |
15 | 54.40 | 263.7, 263.4, 264.0 | 253.6, 254.7, 253.8 | 286.8, 285.8, 285.9 | 256.5, 259.5, 259.8 |
16 | 54.94 | 271.2, 270.1, 271.1 | 262.5, 262.5, 262.3 | 294.4, 293.4, 293.7 | 265.2, 266.8, 267.5 |
17 | 55.50 | 270.8, 271.5, 270.0 | 268.0, 265.5, 267.2 | 297.5, 296.2, 296.8 | 268.6, 269.3, 270.6 |
18 | 56.02 | 272.2, 271.5, 271.5 | 268.4, 266.9, 267.7 | 298.2, 297.5, 297.7 | 269.5, 270.3, 271.5 |
19 | 56.66 | 272.2, 271.1, 271.3 | 269.0, 267.9, 268.2 | 298.6, 298.3, 298.0 | 270.3, 270.9, 272.4 |
20 | 57.29 | 271.0, 270.9, 270.1 | 269.9, 268.5, 269.1 | 299.0, 298.8, 298.4 | 271.3, 271.3, 273.4 |
21 | 57.96 | 271.1, 270.7, 270.0 | 269.6, 268.8, 268.7 | 299.2, 299.1, 298.7 | 271.2, 271.5, 273.4 |
22 | 58.80 | 270.9, 270.5, 269.7 | 270.2, 269.1, 269.1 | 298.7, 299.3, 298.5 | 271.4, 271.6, 273.8 |
Cloud Type | Cloud Base Height (m) | Cloud Thickness (m) | Cloud Water Concentrate (g/m3) | Total Number of Combinations |
---|---|---|---|---|
Cumulus | 500, 1000, 1500, 2000 | 100, 500, 1000, 2000 | 0.4, 0.6, 0.8, 1.0, 1.2 | 80 |
Cumulonimbus | 500, 1000, 1500, 2000 | 3000, 4000, 6000, 8000 | 1.2, 1.6, 2.0, 2.8, 4.0 | 80 |
Stratocumulus | 500, 1000, 2000, 2500 | 100, 500, 1000, 2000 | 0.2, 0.4, 0.6, 0.8, 1.0 | 80 |
Stratus | 50, 200, 400, 800 | 100, 300, 500, 700 | 0.1, 0.2, 0.4, 0.6, 0.8 | 80 |
Nimbostratus | 500, 1000, 1500, 2000 | 500, 1000, 2000, 3000 | 0.2, 0.4, 0.6, 0.8, 1.0 | 80 |
Alostratus | 2000, 3000, 4000, 6000 | 100, 500, 1000, 2000 | 0.1, 0.2, 0.4, 0.6, 0.8 | 80 |
Altocumulus | 2000, 3000, 4000, 6000 | 100, 500, 1000, 2000 | 0.1, 0.2, 0.4, 0.6, 0.8 | 80 |
Cirrus | 4500, 6000, 8000, 10,000 | 500, 1000, 2000, 3000 | 0.1, 0.2, 0.3, 0.4, 0.5 | 80 |
Cirrostratus | 4500, 6000, 8000, 9000 | 500, 1000, 2000, 3000 | 0.1, 0.2, 0.3, 0.4, 0.5 | 80 |
Cirrocumulus | 4500, 6000, 7000, 8000 | 500, 1000, 2000, 3000 | 0.1, 0.2, 0.3, 0.4, 0.5 | 80 |
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Li, Q.; Wei, M.; Wang, Z.; Chu, Y. Evaluation and Improvement of the Quality of Ground-Based Microwave Radiometer Clear-Sky Data. Atmosphere 2021, 12, 435. https://doi.org/10.3390/atmos12040435
Li Q, Wei M, Wang Z, Chu Y. Evaluation and Improvement of the Quality of Ground-Based Microwave Radiometer Clear-Sky Data. Atmosphere. 2021; 12(4):435. https://doi.org/10.3390/atmos12040435
Chicago/Turabian StyleLi, Qing, Ming Wei, Zhenhui Wang, and Yanli Chu. 2021. "Evaluation and Improvement of the Quality of Ground-Based Microwave Radiometer Clear-Sky Data" Atmosphere 12, no. 4: 435. https://doi.org/10.3390/atmos12040435
APA StyleLi, Q., Wei, M., Wang, Z., & Chu, Y. (2021). Evaluation and Improvement of the Quality of Ground-Based Microwave Radiometer Clear-Sky Data. Atmosphere, 12(4), 435. https://doi.org/10.3390/atmos12040435