Cloud Physical and Climatological Factors for the Determination of Rain Intensity
Abstract
:1. Introduction
Block Rains
2. Materials and Methods
2.1. Data
- National types of instruments with different error types. There are weighing instruments, tipping buckets, drop-counting devices and laser-based instruments (distrometers), among others.
- Various national strategies are applied for the choice of the site of the instruments in relation to surrounding buildings/vegetation. It is particularly difficult to place instruments in urban areas due to sheltering and wind tunnel effects from surrounding buildings [18].
- Differences in the methods for the allocation of rains in blocks (during 5 min, 10 min …) and for the coupling of the block rains to the return period [22].
- The type of method of extreme value analysis results in different estimates of the return period of block rains.
- Grid-based values of climatological variables, in this study gridded data (“E-obs data”) over parts of Europe [16], have been used to estimate climate norms at locations with rain intensity data. This means that some data are smoothed over a region and other data concern specific geographical locations.
2.2. Development of an Expression Related to Intense Rainfall
2.2.1. First Approach Based on Cloud Physics
2.2.2. Second Approach by Involvement of Climatological Parameters
- The general efficiency of the formation of precipitation at a specific place is connected with the level of the annual rainfall amount. This parameter scales the climate from dry, desert-like conditions to abundant extreme tropical/monsoon precipitation. In the formula below, this parameter is denoted below as: RY (‘Rain amount for the Year’).
- The months with the highest rainfall amounts indicate when the largest instability of the atmosphere occurs. The two months with the most precipitation were selected and are denoted below as: R2, (‘Rain sum/2 months’).
- The air temperature is of importance for the water vapor-holding capacity of the atmosphere. The average temperature was selected from the two months with the largest rainfall sum and is denoted below as: T2, (Average Temperature/2 months).
3. Results
3.1. The Developed Formula R in Comparison with the Outcome from Extreme Value Analysis
3.2. The Geographical Distribution of Rain Intensity by Use of Climatological Data as Predictors
- The factor An, regarding the national influence on the rain intensity estimates, has to be determined by matching the formula for R with the available EVA data from the studied country. A preliminary value of An can be set to 1.0.
- It is important to process the climatological data (temperature and precipitation) to climate normals, which generally is achieved on a routine basis in most countries.
- The predictors T2, R2 and RY (see steps 1–3 in Section 2.2.2) are evaluated for each climate station from the data on climate norms.
- With predetermined information on the duration and period of return (example: 5 min and 50 years), the formula R is processed by use of the values on the three predictors at each geographical point represented by the respective climate station.
- If more information is needed, then step 4 continues by selecting new predetermined values of the duration and period of return and processing the set of climate stations with formula R again.
3.3. The Equation for R and Estimates of Probable Maximum Precipitation (PMP)
3.4. The Change of Rainfall Intensity Due to Climate Change
4. Conclusions
- 1.
- The use of a mathematical expression R using climate norms as predictors for the estimation of extreme rainfall seems feasible: the variance in data from the extreme value analysis is explained by independent estimates up to about 90%.Numerical property. The coefficients in the formula are connected with climatological predictors: when the climate changes, the predictors (T2, R2, RY) will change, but the coefficients in formula R are expected to be relatively unchanged.Application domain. The application space of the formula, R, covers regions with a climatological normal temperature within at least +7 to +32 °C during the wettest two months, and within at least 300 mm to 2100 mm of the normal annual rainfall. The duration time of R covers 5 min to 24 h.
- 2.
- A key problem when processing rain intensity data is the fact that these data are influenced by a multitude of error sources, summarized in Section 2.1 of the present article. To reduce this problem, a screening technique by use of a national factor An, determined by regression, plays an important role in reducing and cleaning systematic errors.
- 3.
- Equation R increases the potential to estimate the appropriate return period and the connected rainfall depth for heavy and intense rainfall. Applications connected with the probable maximum precipitation then have an increased potential to be improved. The notation “PMPny“ is introduced just to accentuate the importance of the recurrence period for intense rainfall when planning investments in urban discharge systems or other infrastructure. This ability of the relationship R to estimate the return period of heavy rainfall results in an improved potential for savings in energy, investment and environmental costs of building infrastructure.
- 4.
- The effect of climate warming and changes of the rainfall amount is estimated by use of the equation R. It is concluded that an increase of 1 to 5 °C indicates on average an increase of 5.9% of the rainfall amount for each warming degree. This estimate concerns the most intense part of the rainfall (contained in the so-called ‘block rains’). It should be pointed out that the presented estimates are independent of the results obtained by dynamic models.
Supplementary Materials
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Symbol | Explanation and Requirements—Temperature and Rainfall Values are 30-Year Climatological Norms |
---|---|
R | Rainfall amount in mm |
Coefficients, see Table 2 below | |
The temperature average (°C) of the two wettest months. A requirement is that T2 is above zero degrees. | |
The sum of the two wettest rainfall months (mm). | |
The yearly sum of precipitation (mm). | |
Duration in minutes within interval: 5 to 1440 min (24 h). | |
The recurrence period in months. |
An: For reduction of systematic er- rors. An is recommended to be cali- brated with national/regional data. | β and ε affect the general level of the esti- mates | γ influences the maximum estimated val- ues | δ δ also influ- ences the gen- eral level of estimates | ε a stable co- efficient in all tests | ζ Part of ex- ponent for D, dura- tion; see Equa- tion (7) | η Part of ex- ponent for D, duration; see Equa- tion (7) |
Wald 95% confidence interval or ‘best estimate’ if the width of the interval coincides with zero. | 0.002 | 0.4 | 0.928–0.932 | 0.3 | 0.83 0.000026 For PMP 1 or for global rainfall estimates use exponent 0.686 instead of and no Δ-correc- tion |
Dataset | Information on Predictors | Minimum | Maximum | Arithmetic Mean | Standard Deviation | Median |
---|---|---|---|---|---|---|
R1: | Normal temperature during wettest months (°C), “T2”. | 6.8 | 31.6 | 17.8 | 4.4 | 17 |
Normal sum of rainfall during wettest months (mm), “R2”. | 53 | 853 | 258 | 164 | 207 | |
Normal precipitation per year (mm), “RY”. 4132 values/70 locations | 404 | 2104 | 925 | 403 | 810 | |
R2: | Normal temperature during wettest months (°C), “T2”. | 9.7 | 29. | 18.2 | 3.9 | 17 |
Normal sum of rainfall during wettest months (mm), “R2”. | 53 | 871 | 233 | 123 | 208 | |
Normal precipitation per year (mm), “RY”. 4306 values/78 locations | 302 | 2064 | 884 | 415 | 738 |
Country | Explained Variance % | Factor An | Wald 95% Confidence Interval An | Number of Intensity Values |
---|---|---|---|---|
Sweden | 94 | 1.41 | 1.38–1.43 | 575 |
UK | 97 | 1.06 | 1.04–1.08 | 391 |
Norway | 92 | 0.80 | 0.78–0.81 | 809 |
Slovenia | 92 | 1.10 | 1.07–1.12 | 692 |
France | 86 | 1.12 | 1.09–1.15 | 879 |
Germany | 92 | 0.91 | 0.89–0.92 | 1007 |
Place | Country | Latitude | Longitude | T2 | R2 | RY |
---|---|---|---|---|---|---|
Stockholm | Sweden | 59.33 N | 18.06 E | 15.7 | 168 | 514 |
Goteborg | Sweden | 57.71 N | 11.95 E | 15.7 | 207 | 782 |
Växjö | Sweden | 56.88 N | 14.81 E | 15.9 | 189 | 638 |
Cork | Ireland | 51.85 N | −8.49 W | 15.0 | 205 | 1027 |
Askim | Norway | 59.59 N | 11.16 E | 15.2 | 245 | 829 |
As | Norway | 59.67 N | 10.80 E | 15.5 | 235 | 810 |
Gjettum | Norway | 59.91 N | 10.52 E | 15.2 | 247 | 832 |
Herning | Denmark | 56.14 N | 08.97 E | 15.5 | 194 | 732 |
Gdansk | Poland | 54.35 N | 18.65 E | 15.9 | 190 | 569 |
Statistical Parameters | Temperature Change: Degrees CELSIUS: | ||||
---|---|---|---|---|---|
Unit: Percent (%) Relative to the Unchanged Climate. | +1 | +2 | +3 | +4 | +5 |
Minimum | 3.17 | 6.32 | 9.49 | 12.66 | 15.82 |
Maximum | 14.71 | 29.41 | 44.12 | 58.82 | 73.53 |
Arithmetic mean | 5.87 | 11.73 | 17.00 | 23.46 | 29.33 |
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Dahlström, B. Cloud Physical and Climatological Factors for the Determination of Rain Intensity. Water 2021, 13, 2292. https://doi.org/10.3390/w13162292
Dahlström B. Cloud Physical and Climatological Factors for the Determination of Rain Intensity. Water. 2021; 13(16):2292. https://doi.org/10.3390/w13162292
Chicago/Turabian StyleDahlström, Bengt. 2021. "Cloud Physical and Climatological Factors for the Determination of Rain Intensity" Water 13, no. 16: 2292. https://doi.org/10.3390/w13162292
APA StyleDahlström, B. (2021). Cloud Physical and Climatological Factors for the Determination of Rain Intensity. Water, 13(16), 2292. https://doi.org/10.3390/w13162292