Radar Data Analyses for a Single Rainfall Event and Their Application for Flow Simulation in an Urban Catchment Using the SWMM Model
Abstract
:1. Introduction
2. Materials and Methods
2.1. Description of the Studied Area
2.2. The SWMM Model for the Studied Area
- The values of Manning’s coefficient for impervious and pervious surfaces (N-Imperv and N-Perv) were found to be, in most cases, equal to 0.012 and 0.13 s·m−1/3, respectively (in relation to areas used as forest and arable land, they were 0.25 and 0.15, respectively);
- The values of the depression storage depth for impervious and pervious areas (Dstore-Imperv and Dstore-Perv) were equal to 1.5 and 2.5 mm (only for forest areas and arable land was the surface retention depth 5.0 mm).
- For the parameter of %Zero Imperv (percent of impervious area with no depression storage), we chose the value of zero.
- The dimensionless parameter CN associated with the maximum potential retention of the catchment was equal to 77 for forest areas, while for other types of land use, it was characterized by CN = 87.
- the existing rain gauges at the Okęcie and Ursynów rainfall station (assigned to two rainfall cells with an area of 1 km2, which correspond to appropriate pixels on the map in the SRI radar product);
- virtual rain gauges, in which the rainfall depths were estimated on the basis of radar data (assigned to 64 rainfall cells covering the area of the catchment);
- subcatchments, which had been distinguished in the catchment in order to account for the spatial diversity of land use in the catchment and the share of impermeable surfaces connected with this (4565 objects);
- open channels, watercourses and drainage pipes (2271 objects);
- road culverts and bridges;
- retention tanks, pumps and valves used to regulate flow, working together with the tanks.
2.3. Methods of Radar Data Analysis
3. Results and Discussion
3.1. Radar Reflectivity-Rainfall Rate Relationships
3.2. Comparison of Radar Estimates with Rain Gauge Measurements
3.3. Simulation of Flow Using Different Rainfall Data
- Scenario 1: directly on the basis of data from the SRI radar product (values of the intensity of rainfall in a given node of a pixel which had been calculated based on the a and b coefficients determined by Marshall and Palmer) for 66 rain gauges, which correspond to the pixels on SRI product maps (including for 64 virtual and 2 existing rain gauges at the Okęcie and Ursynów rainfall stations, located in cells with a surface area of 1 km2 covering the area of the analyzed catchment);
- Scenario 2: upon applying Z-R relationship (Equation (2)) and calculational values of radar reflectivity for 66 rain gauges (obtained for one specified node in 66 pixels, the location of which in each pixel corresponded to that established in two pixels for nodes located closest in terms of the points at which the Okęcie and Ursynów rainfall stations are located);
- Scenario 3: on the basis of data from the SRI product for 66 rain gauges and correction coefficient amounting to 3.6;
- Scenario 4: upon applying Z-R relationship (Equation (3)) and calculational values of radar reflectivity for 66 rain gauges (values of the median established in 66 pixels on the basis of data for four nodes in each pixel);
- Scenario 5: upon applying Z-R relationship (Equation (2)) and calculational values of radar reflectivity (established in two pixels for the node located nearest to the points at which the existing rainfall stations are located) for rain gauges in Okęcie and Urysnów rainfall stations (the point rainfall depths established for these rain gauges were uniformly distributed over two adequate areas in the catchment);
- Scenario 6: on the basis of data from the SRI radar product for 2 rain gauges at existing rainfall stations and a correction coefficient amounting to 3.6 (the rainfall inputs were assumed to be uniformly distributed over two areas).
4. Conclusions
- Rainfall totals for the analyzed events obtained directly from the SRI radar product (in which the values of rainfall rate are calculated based on parameters a and b determined by Marshall and Palmer) were much lower than the rainfall totals measured for these events at rainfall stations. The values of the relative error ranged from −89.6 to −56.9%. The results of this analysis indicate that a calibration step that compares radar estimated rainfall and rain gauge rainfall is necessary. Respective values of relative error, ranging from −88.9 to −40.2%, were calculated for parameters of the hydrograph simulated in response to rainfall depths obtained from the SRI product.
- Based on rainfall depths measured at rainfall stations and obtained from the SRI radar product for the analyzed events (in individual time intervals of rainfall duration), an average value of the ratio between these data amounting to 3.6 was determined. Rainfall totals calculated for individual events applying this correction coefficient and data from the SRI product were characterized by an absolute value of the relative error median of 20%. The obtained values of the NSE coefficient indicate a very good level of performance.
- The Z-R relationships (2) and (3) determined in this study, the application of which require the identification of calculational values of radar reflectivity on the basis of data in one and four nodes of a given radar map pixel, offer better rainfall rate estimation in the investigated area as compared to Marshall-Palmer’s relationship (the values of coefficients a and b determined by Marshall and Palmer differ significantly from those established in this work). The values of the median of relative error, determined in the analysis using these relationships for events in two rainfall stations, were between 11.6% and 18.1%, respectively. The calculated rainfall totals were both underestimated and overestimated.
- Relative errors, which were obtained in a similar analysis using three other Z-R relationships (established on the basis of the lowest and highest values of radar reflectivity as well as the average value for data in four nodes of a given pixel), were significantly higher than those calculated in the analysis applying Z-R relationship (Equations (2) and (3)). The absolute values of the median of the relative error calculated on the basis of rainfall totals for events analyzed at individual rainfall stations ranged from 23.4 to 28.0%. As the values of relative error indicate, the method applied to determine the calculational values of radar reflectivity was important.
- In simulations carried out using the SWMM model in reaction to rainfall depths calculated for the analyzed events using the correction coefficient for data from the SRI product and estimated on the basis of the determined Z-R (Equation (2)) relationship, relatively good agreement was achieved between the measured and simulated peak flow and outflow volume values. The values of the relative error were, in most cases, lower than the assumed cut-off level of model acceptance (25%). In this analysis, about 56% of peak flow and outflow volume values obtained from simulations were overpredicted when compared to flow gauge observations. For some events, radar data input resulted in better flow simulations than using rain gauge data input.
- The estimation errors of hydrograph parameters in some cases were not in agreement with values of errors which had been calculated for respective rainfall totals, e.g., when rainfall total error was relatively large and negative, the respective peak flow error was small and positive.
- Using rainfall depths estimated from radar data for only 2 existing rain gauges (cells with 1 km resolution) as well as 66 (including 64 virtual) rain gauges in the catchment, a similar range of relative error values for simulated peak flows and outflow volumes was found, but different values of errors in individual corresponding cases were obtained.
Funding
Acknowledgments
Conflicts of Interest
References
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Date of the Event | Average Intensity (mm·h−1) | Rainfall Totals (mm) | Relative Error (%) | |||||
---|---|---|---|---|---|---|---|---|
Rain Gauges | Rain Gauges | SRI Product | ||||||
O 1 | U 2 | O | U | O | U | O | U | |
1 October 2006 | 17.8 | 14.0 | 14.8 | 7.0 | 3.3 | 1.6 | −77.7 | −77.7 |
6 August 2006 | 6.6 | - | 52.6 | - | 17.6 | - | −66.5 | - |
2 July 2007 | 5.7 | 6.6 | 8.6 | 11.0 | 1.9 | 3.6 | −77.8 | −67.6 |
22 July 2007 | 18.8 | 21.8 | 9.4 | 14.5 | 3.6 | 3.1 | −62.2 | −78.4 |
2 August 2008 | 8.8 | 5.3 | 8.8 | 6.2 | 2.1 | 1.5 | −76.6 | −76.3 |
15 August 2008 | 9.8 | 11.9 | 22.8 | 43.6 | 6.6 | 10.1 | −71.0 | −76.9 |
16 August 2008 | - | 13.0 | - | 15.2 | - | 2.5 | - | −83.6 |
30 May 2009 | - | 9.0 | - | 13.5 | - | 5.0 | - | −62.7 |
16 June 2009 | - | 4.5 | - | 10.5 | - | 2.6 | - | −75.0 |
23 June 2009 | - | 3.9 | - | 7.8 | - | 3.4 | - | −56.9 |
25 June 2009 | - | 14.6 | - | 41.4 | - | 10.1 | - | −75.6 |
5 July 2009 11 a.m. | - | 26.2 | - | 21.8 | - | 2.3 | - | −89.6 |
5 July 2009 1 p.m. | - | 13.4 | - | 33.6 | - | 7.8 | - | −76.9 |
Median value | 9.3 | 12.5 | 12.1 | 14.0 | 3.4 | 3.2 | −73.8 | −76.6 |
Date of the Event | Rainfall Totals (mm) | Relative Error (%) | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
Equation (2) | Equation (3) | SRI 3.6 | Equation (2) | Equation (3) | SRI 3.6 | |||||||
O 1 | U 2 | O | U | O | U | O | U | O | U | O | U | |
1 October 2006 | 15.8 | 5.0 | 16.5 | 4.4 | 11.9 | 4.2 | 6.7 | −29.0 | 11.6 | −36.7 | −19.7 | −40.6 |
6 August 2006 | 61.6 | - | 62.1 | - | 63.5 | - | 17.1 | - | 18.1 | - | 20.6 | - |
2 July 2007 | 5.6 | 12.6 | 6.3 | 11.7 | 6.9 | 12.8 | −35.2 | 14.2 | −27.3 | 6.2 | −20.1 | 16.5 |
22 July 2007 | 20.1 | 14.9 | 19.6 | 15.5 | 12.8 | 11.3 | 114 | 3.0 | 109 | 6.8 | 36.1 | −22.3 |
2 August 2008 | 7.0 | 4.2 | 7.4 | 5.7 | 7.4 | 5.3 | −20.2 | −32.9 | −15.5 | −7.7 | −15.7 | −14.7 |
15 August 2008 | 24.7 | 37.2 | 30.2 | 35.6 | 23.8 | 36.2 | 8.1 | −14.6 | 32.5 | −18.3 | 4.4 | −17.0 |
16 August 2008 | - | 10.7 | - | 12.0 | - | 9.0 | - | −29.4 | - | −20.9 | - | −41.1 |
30 May 2009 | - | 20.7 | - | 21.0 | - | 18.2 | - | 53.0 | - | 55.3 | - | 34.5 |
16 June 2009 | - | 8.1 | - | 8.3 | - | 9.5 | - | −23.2 | - | −20.8 | - | −9.8 |
23 June 2009 | - | 10.5 | - | 10.8 | - | 12.1 | - | 34.0 | - | 38.5 | - | 54.9 |
25 June 2009 | - | 46.1 | - | 53.7 | - | 36.3 | - | 11.3 | - | 29.7 | - | −12.3 |
5 July 2009 a | - | 10.1 | - | 12.5 | - | 8.2 | - | −53.7 | - | −42.6 | - | −62.6 |
5 July 2009 b | - | 31.2 | - | 27.1 | - | 27.9 | - | −7.1 | - | −19.4 | - | −16.8 |
Median value | 18.0 | 11.6 | 18.1 | 12.3 | 12.3 | 11.7 | 18.7 | 26.1 | 22.7 | 20.8 | 19.9 | 19.7 |
Date of the Event | Measured Values | Simulated Values | Relative Error (%) | |||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
Peak Flow (m3·s−1) | Volume (m3·103) | Peak Flow (m3·s−1) | Volume (m3·103) | Peak Flow | Volume | |||||||
R 1 | K 2 | R | K | R | K | R | K | R | K | R | K | |
2 July 2007 | 6.06 | 0.76 | 46.0 | 14.7 | 4.95 | 0.80 | 44.8 | 16.8 | −18.3 | 5.3 | −2.5 | 14.5 |
15 August 2008 | 21.51 | 1.31 | 369.2 | 69.5 | 20.84 | 1.44 | 342.6 | 74.5 | −3.2 | 9.7 | −7.2 | 7.2 |
Date of the Event | Simulated Values | Relative Error (%) | ||||||
---|---|---|---|---|---|---|---|---|
Peak Flow (m3·s−1) | Volume (m3·103) | Peak Flow | Volume | |||||
R 1 | K 2 | R | K | R | K | R | K | |
Scenario 1 | ||||||||
2 July 2007 | 0.82 | 0.10 | 6.0 | 1.6 | −86.5 | −87.5 | −87.0 | −88.9 |
15 August 2008 | 2.48 | 0.78 | 47.4 | 16.9 | −88.5 | −40.2 | −87.1 | −75.7 |
Scenario 2 | ||||||||
2 July 2007 | 5.83 | 0.82 | 52.4 | 14.5 | −3.8 | 8.4 | 14.0 | −0.9 |
15 August 2008 | 22.03 | 1.66 | 394.2 | 90.3 | 2.4 | 26.4 | 6.8 | 29.9 |
Scenario 3 | ||||||||
2 July 2007 | 5.35 | 0.77 | 50.2 | 15.5 | −11.7 | 1.7 | 9.1 | 5.7 |
15 August 2008 | 19.68 | 1.64 | 331.8 | 82.2 | −8.5 | 25.3 | −10.1 | 18.3 |
Scenario 4 | ||||||||
2 July 2007 | 5.21 | 1.00 | 56.0 | 19.1 | −14.1 | 31.7 | 21.8 | 30.4 |
15 August 2008 | 22.95 | 1.85 | 441.3 | 94.8 | 6.7 | 40.8 | 19.6 | 36.5 |
Scenario 5 | ||||||||
2 July 2007 | 5.55 | 0.70 | 46.3 | 12.6 | −8.5 | −7.5 | 0.7 | −14.3 |
15 August 2008 | 17.35 | 1.58 | 273.5 | 71.6 | −19.4 | 20.8 | −25.9 | 3.0 |
Scenario 6 | ||||||||
2 July 2007 | 5.40 | 0.78 | 46.6 | 14.9 | −10.9 | 3.4 | 1.3 | 1.6 |
15 August 2008 | 16.90 | 1.55 | 261.0 | 69.3 | −21.4 | 18.2 | −29.3 | −0.2 |
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Barszcz, M.P. Radar Data Analyses for a Single Rainfall Event and Their Application for Flow Simulation in an Urban Catchment Using the SWMM Model. Water 2018, 10, 1007. https://doi.org/10.3390/w10081007
Barszcz MP. Radar Data Analyses for a Single Rainfall Event and Their Application for Flow Simulation in an Urban Catchment Using the SWMM Model. Water. 2018; 10(8):1007. https://doi.org/10.3390/w10081007
Chicago/Turabian StyleBarszcz, Mariusz Paweł. 2018. "Radar Data Analyses for a Single Rainfall Event and Their Application for Flow Simulation in an Urban Catchment Using the SWMM Model" Water 10, no. 8: 1007. https://doi.org/10.3390/w10081007
APA StyleBarszcz, M. P. (2018). Radar Data Analyses for a Single Rainfall Event and Their Application for Flow Simulation in an Urban Catchment Using the SWMM Model. Water, 10(8), 1007. https://doi.org/10.3390/w10081007