Challenges in Diurnal Humidity Analysis from Cellular Microwave Links (CML) over Germany
Abstract
:1. Introduction
2. Methodology
2.1. Study Region and Data
2.2. Humidity Retrievals from Commercial Microwave Links
2.3. Calibration
2.4. Optimization of RSLom Calculation
2.5. Interpolation
2.6. Analysis Methods
3. Results
3.1. Statistical Evaluation
- All sources (WS-HO, CML-HO, and Rea6) show maximum mean values of humidity during nighttime hours and minimum mean values during daylight hours, as expected from the minimum and maximum values of the PBL heights (PBLH), respectively (see Figure 3). The STD values for all sources are of the order of 20% of the mean values.
- Focusing on correlations, the WS-HO show high correlations with both CML-HO and Rea6, with average values of about 0.84 and 0.85, respectively. During most hours, the correlation was higher between the Rea6 and the WS-HO (17 out of 24 h) than between CML-HO and WS-HO (7 out of 24 h). Notice, however, that during daylight hours, there is a slight advantage for CML-HO (0.87 vs. 0.84). At night, the correlations between Rea6 and the WS-HO are higher than those between CML-HO and WS-HO (0.86 vs. 0.82, respectively).
- The RMSE is smaller in the case of Rea6 than CML-HO for most of the hours (18 h, with averages of 1.49 vs. 1.58, respectively), except during daylight.
- Mean and STD: The CML-HO mean and the STD values are closer to the WS-HO values, on average, than those of Rea6 (10.12 vs. 10.74 vs. 10.04 and 2.26 vs. 2.21 vs. 2.29, respectively), but during the day light hours, the Rea6 mean and the STD are closer to those of WS-HO, which is just the opposite to the correlation and RMSE behavior.
3.2. Mean Diurnal Cycle
- Low CML-HO values can result from inaccurate WS-HOm values used for the calculation of RSLom at night. When we calculate the WS-HOm at 2 m AGL, it can be quite different from ~30 AGL humidity, especially at night with low inversion. This seems to improve when we used the second method for calibration (cali2). When looking into the calibration equations (Figure S1), we notice that the slope of the equation is higher during the night, which means that for high elevation CMLs, we will observe lower CML-HO values. When we take one diurnal equation instead of the hourly equations, this effect is improved. This conjecture can explain some of the deviations, but not all of them.
- An additional factor contributing to low CML-HO at night is an interference that can be caused by near-surface strong stratification of the atmosphere and the interaction between the electromagnetic waves and the changes in the characteristics of the atmosphere layers at night, when the PBLH is closer to the surface and the inversion is approximately at the CML level. This phenomenon was shown in David et al. [40].
- The strong reduction of the CML-HO at night is observed at many locations and it follows earlier high CML-HO values. For very low inversion layers, the CML could be located within the layer that is characterized by strong gradients of temperature and moisture, and therefore disable the CML-HO retrieval.
3.3. Inter-Daily Variability
- Employ the maximum limit for WV in the air as determined by the Clausius–Clapeyron equation. In the current algorithm, we determined the maximum value for true absolute humidity by the maximum value of the temperature for the whole period. If we choose the maximum temperature for a shorter period or instantaneously from a nearby weather station, or even a model, we expect to reduce the error caused by water on the antenna or in the air.
- Exclude rain events [42,43] and correct wet antenna attenuation (WAA) by the proposed methods for estimate the wet antenna effect [33,34,35,36]. This could be done based on the attenuation itself compared to dry periods, or by additional information from the stations. There are some methods for wet antenna estimation and the results can change between different locations and CMLs characteristics. Alternatively, during the rain events and for several hours afterwards, to allow for complete drying, they can be removed to reduce the errors due to WAA.
4. Discussion and Conclusions
- The best method to retrieve the CML-HO for getting the finest temporal resolution is to calibrate the CMLs calculating RSLm for 24 hour intervals. In addition, when applying one median equation for RSLm for all hours of the day, instead of separate equations for each hour of the day, there is an insignificant improvement, especially in the RMSE at night.
- Some of the most significant differences between CML-HO and WS-HO can be associated with:
- ○
- WAA (water on the antenna) due to rain or condensation.
- ○
- LWC, which might cause significant attenuation due to water in the air or WAA.
- ○
- PBLH, which affects the humidity vertical profile and might create large differences between the weather station (2 m AGL) and the CML (~30 m AGL) when the inversion layer is closer to the surface, especially at night.
- The height differences between stations and CML can be large. Hence, the verification of CML-HO with respect to WS-HO may lead to differences due to true different humidity at the CML and at the station.
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
Abbreviation | Definition |
AGL | Above Ground Level |
AMSL | Above Mean Sea Level |
BL | Boundary Layer |
cali1 | Calibration method 1: linear equations were calculated for each hour of the day |
cali2 | Calibration method 2: a single linear equation was calculated for all hours of the day together |
CML | Commercial Microwave Links |
CML-HO | CML humidity observations |
DWD | Germany’s National Meteorological Service, Deutscher Wetterdienst |
LC | land cover |
LWC | Liquid Water Content |
LT | Local Time |
NWP | Numerical Weather Prediction |
PBL | Planetary Boundary Layer |
PBLH | PBL heights |
QE | Quantization Error |
Rea6 | COSMO-REA6 reanalysis |
RMSE | Root Mean Square Error |
RSL | Received Signal Level |
STD | Standard Deviation |
TSL | Transmit Signal Level |
WAA | Wet Antenna Attenuation |
WS-HO | Weather station humidity observations |
WV | Water Vapor |
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Number | Name | Elevation [m] |
---|---|---|
1 | Berleburg, Bad-Stenzel | 610 |
2 | Andernach | 75 |
3 | Blankenrath | 417 |
4 | Bonn-Roleber | 159 |
5 | Büchel (Flugplatz) | 477 |
6 | Burgwald-Bottendorf | 293 |
7 | Dillenburg | 314 |
8 | Frankfurt/Main | 100 |
9 | Frankfurt/Main-Westend | 124 |
10 | Gießen/Wettenberg | 203 |
11 | Hilgenroth | 295 |
12 | Hümmerich | 328 |
13 | Kahl/Main | 107 |
14 | Kleiner Feldberg/Taunus | 826 |
15 | Köln-Bonn | 92 |
16 | Lennestadt-Theten | 286 |
17 | Löhnberg-Obershausen | 230 |
18 | Marburg-Biedenkopf | 187 |
19 | Marienberg, Bad | 547 |
20 | Montabaur | 265 |
21 | Nauheim, Bad | 149 |
22 | Neuenahr, Bad-Ahrweiler | 111 |
23 | Neunkirchen-Seelscheid-Krawinkel | 195 |
24 | Reichshof-Eckenhagen | 350 |
25 | Remscheid-Lennep | 345 |
26 | Siegen (Kläranlage) | 229 |
27 | Waldems-Reinborn | 380 |
28 | Wiesbaden-Auringen | 263 |
29 | Nastätten | 268 |
30 | Runkel-Ennerich | 168 |
31 | Offenbach-Wetterpark | 119 |
32 | Meinerzhagen-Redlendorf | 380 |
Hour | Corr_CML_Stations | Corr_Rea6S_Stations | RMSE_CML_Stations | RMSE_Rea6_Stations | Mean_Stations | Mean_CML | Mean_Rea6 | STD_Stations | STD_CML | STD_Rea6 |
---|---|---|---|---|---|---|---|---|---|---|
SUM# | 7 | 17 | 6 | 18 | 12 | 12 | 6 | 18 | ||
MEAN | 0.84 | 0.85 | 1.58 | 1.49 | 10.74 | 10.12 | 10.04 | 2.21 | 2.26 | 2.29 |
MEAN 9-17 | 0.87 | 0.84 | 1.53 | 1.55 | 10.49 | 9.76 | 9.78 | 2.38 | 2.24 | 2.29 |
MEAN 18-8 | 0.82 | 0.86 | 1.61 | 1.46 | 10.89 | 10.34 | 10.19 | 2.10 | 2.27 | 2.29 |
MEAN 6-21 (DAYLIGHT) | 0.853 | 0.852 | 1.59 | 1.54 | 10.67 | 9.85 | 9.89 | 2.31 | 2.25 | 2.30 |
MEAN 22-5 (NIGHT) | 0.81 | 0.86 | 1.56 | 1.40 | 10.89 | 10.67 | 10.33 | 2.01 | 2.26 | 2.27 |
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Rubin, Y.; Rostkier-Edelstein, D.; Chwala, C.; Alpert, P. Challenges in Diurnal Humidity Analysis from Cellular Microwave Links (CML) over Germany. Remote Sens. 2022, 14, 2353. https://doi.org/10.3390/rs14102353
Rubin Y, Rostkier-Edelstein D, Chwala C, Alpert P. Challenges in Diurnal Humidity Analysis from Cellular Microwave Links (CML) over Germany. Remote Sensing. 2022; 14(10):2353. https://doi.org/10.3390/rs14102353
Chicago/Turabian StyleRubin, Yoav, Dorita Rostkier-Edelstein, Christian Chwala, and Pinhas Alpert. 2022. "Challenges in Diurnal Humidity Analysis from Cellular Microwave Links (CML) over Germany" Remote Sensing 14, no. 10: 2353. https://doi.org/10.3390/rs14102353
APA StyleRubin, Y., Rostkier-Edelstein, D., Chwala, C., & Alpert, P. (2022). Challenges in Diurnal Humidity Analysis from Cellular Microwave Links (CML) over Germany. Remote Sensing, 14(10), 2353. https://doi.org/10.3390/rs14102353