Historical
Runoff Potential in Eastern
Pre-Development and Post-Development Runoff Comparisons
Term Report
Eric Major
GIS in Water Resources 2010
Created For Dr. David G.
Tarboton,
Dr. David R. Maidment, and Dr.
Ayse Irmak
The Eastern portions of
Figure 1: Study Area of Project in
Eastern
The datasets that were utilized in this project include the 30-meter National Elevation Dataset (NED) and the National Land Cover Datasets from USGS Seamless Server. A shapefile dataset obtained from the National Resource Conservation Service (NRCS) of the irrigated and agricultural areas, and stream flowlines, waterbodies, and watershed boundaries from NHD Plus data shown below in Figure 2. The two watersheds included in the study were the Middle Bear to the North and the Little Bear on the South, shown with outlines in red below.
Figure 2: DEM and Flowlines in
Watersheds in
Before adding any land cover or soil type data and methodology, the DEM and NHD Flowlines were clipped by the Extract by Mask tool in GIS using both watersheds as the boundary. Once these data were clipped to a smaller area, the DEM reconditioning could take place with an ultimate goal of defining streamlines and catchments. The NHD Flowlines were inspected and compared to base maps and were found to have gaps and assumptions that did not work well with this analysis. For example, several of the canal systems were shown as stream lines that had missing reaches, dead ends, and disconnected streams with their actual destinations. Therefore, the DEM was used to define stream lines using the following steps illustrated by layouts showing each layer and feature class produced in ArcMap 10.
DEM reconditioning began by the Fill function to remove pits and then followed by the Flow Direction tool to assign a flow direction to the grid. From this Flow Direction raster, the Flow Accumulation tool in the Spatial Analyst Tool set was used to calculate cells and areas flowing to each other. Figure 3 shows the Flow Accumulation raster with lighter colored cells having a higher value than the dark or no flow cells.
Figure 3: Flow Accumulation Raster Example
Once Flow Accumulation was completed, Streams were defined using the Raster Calculator tool and a threshold of 1000 by the map algebra expression (“FlowAccumulation”>1000) creating a raster named Stream1000. The delineated streams were then divided into segments by the Stream Link tool with an unique value for each link that would later be used to define catchmenst. Stream networks and stream links in the study area are sampled below in Figure 4 and unique catchments found by the Watershed tool are shown in Figure 5.
Figure 5: Catchment Rasters Figure 4: Stream Networks and
Links
It was observed that in the flatter areas were the majority of the development was taking place had catchments that were very long and not very wide. This is obviously not exactly correct as canals and storm water systems bisect these catchments. More discussion on this observation will follow later in the report. The catchment raster was used to create polygons of each catchment with a unique identifying number or ID. The Raster to Polygon tool created catchments shown below in orange in Figure 6. The both watersheds held part of the study area, so only a selection of Catchment Polygons inside of the project area were used in further runoff calculations.
Figure 6: Study Area Catchment Polygons
Now that a catchment data set was selected for study and identifying ID numbers and areas were available in attribute tables, more data about the specific land uses, impervious areas, and soil types could be added to the map. The soil data shown in Figure 7 was obtained through the NRCS Soil Data Mart and was interpreted using a Web Soil Survey also from the NRCS. It was useful to know the soil descriptions and abbreviations to link data populated in attribute tables in GIS with Hydrologic Soil Group classifications given in the Custom Soil Report (NRCS 2009). These classifications were necessary for SCS runoff calculations and Curve Number development. Table 1 shows a few samples of soil types and descriptions with the assigned Hydrologic Soil Group used in the SCS Curve Number calculation.
Figure 7: Study Area Soil Data Raster (NRCS 2010).
Table 1: Soil Type Abbreviations, Descriptions, and Hydrologic Soil Groups
Using data obtained from the USDA – NRCS Geo-Spatial Data Gateway,
a raster from the National Land Cover Data set was imported into the map with a
30 by 30 meter cell size (Homer 2004).
Figures 8 below shows the raster and accompanying legend for land cover
in the study area.
Figure 8: 2001 National Land Cover
Dataset for
Once land cover classification was available, a determined hydrologic condition was matched to the different cover types. Table 2 contains the SCS Curve Numbers assigned to each land cover type, with the corresponding ID found in each grid cell attribute (NRCS 1986). As discussed in the previous section, the Hydrologic Soil Group (HSG) give a varied Curve Number for each cover type and is important in accurately calculating the Curve Numbers for the SCS runoff calculations.
Table 2: Runoff
Curve Numbers for
After catchments were defined with soil data and land cover data imported and classified, GIS tools were utilized to assign a Composite Curve Number (CCN), or weighted average Curve Number for each catchment. For the SCS Method calculations, a CCN is necessary to find runoff potential for a given precipitation event. The first GIS tool useful for summing all land cover and soil attributes per catchment was the Tabulate Area tool, with Figure 9 shown below as an example of input rasters, fields, and class fields. Using the Catchment ID as the identifier, the output table given by this tool gave values for the area of each land cover type (or soil type) in the catchment. Figures 9 and 10 are examples of land cover tables and Figures 11 is similar for the soil data.
Figure 9: Tabulate Area Tool Inputs for Land Cover Areas
Figure 10: Output Table for Land Cover Values per Catchment
Figure 11: Output Table for Soil Type Values per Catchment
Using the output tables for both land cover and soil values in each catchment, the data was sorted in Excel. For this report, an example calculation in Catchment 2597 is used to illustrate the methodology of the CCN calculations for the SCS method (NRCS 1986). Following the direction of the NRCS TR-55 publication, a HSG was assigned by summing the areas of soils falling in each group. Table 3 shows the values given in the output table for this catchment with the total area for each group at the bottom. Using the maximum value as the determining factor, an HSG was assigned to the catchment. In this case, HSG B was the dominant group and is then used in Table 4 to multiply the correct row of Curve Numbers with the areas of each land cover group. These products are then summed and divided by the total area of the catchment to find the weighted CCN. In this case, Catchment 2597 is assigned a CCN of 73.
Table 3: Example Hydrologic Soil Group Areas for Catchment 2597
Table 4: Example CCN Calculation by Land Cover for Catchment 2597
The Soil Conservation Service (SCS) method for runoff calculation in English units is portrayed below in Figure 12 with the given parameters from the TR-55 report. So far, all the inputs are defined for this study area except precipitation.
Figure 12: SCS Equation for Runoff Calculation (NRCS 1986)
To conform to the design standards of the study area, the
Northern Cache Valley Storm Water Design Standards (LCPW 2009) document was
used to find required storm durations and return periods. For these specifications adopted by several
Table 5:
Precipitation Depth per Northern
In the Excel spreadsheet, the calculations for CCN, SCS runoff, and volumes generated from 10, 25, 50, and 100 year storms were arranged in a simple table for export back into ArcGIS as shown in Figure 13 below.
Figure 13: Excel Table for Export
into ArcGIS
With valuable runoff data linked to catchments in the study area, the data in Excel was imported into the GIS project and a tabular join with the attribute table of the Catchment features. Figure 14 shows the Field Calculator used to populate the values in the attribute table fields. Figure 15 shows the final product, an attribute table with values for CCN, runoff for each return period, and a field with runoff volume (depth multiplied by catchment area) for the 100 year event.
Figure 14: Field Calculator for Join Data Population
Figure 15: Complete Attribute Table for Catchments
The computed data for runoff potential can be easily shown in GIS by creating attribute labels for displaying CCNs (Figure 16), runoff depths, and volumes. Rasters were created for runoff depths in each catchment for 10, 25, 50, and 100 year events, with a sampling shown in Figures 17 and 18. The volume of the 100 year event was also reproduced as a raster by the Polygon to Raster tool and is given in Figure 19. The depths ranged from zero to 3 inches of runoff, which is expected as impervious areas have little infiltration and high CCNs.
Figure 16: CCN Values for Study Area Catchments
Figure 17: 10 Year Event Runoff Raster
Figure 18: 100 Year Event Runoff Raster
Figure 19: 100 Year Event Runoff Volume Raster
The runoff potential for the current
land cover and developed areas has been calculated using the SCS Method for
runoff and CCNs have been designated for each catchment area in the eastern
areas in
The current results reflect a trend from runoff depths increasing in developed areas, which can be expected. The land cover data from 2001 is in need of an update and will soon be available through the National Land Cover Dataset. Comparisons between growth in these past 10 years would help illustrate the increase in runoff due to development and more impervious areas. The project is definitely a work in progress and has exciting possibilities for those involved. The process and tools for the runoff calculations in ArcGIS will allow for manipulation of this model to become a valuable asset for stormwater planning and design.
Homer, C. C. Huang, L. Yang, B. Wylie and M. Coan. 2004. Development of a 2001 National
Landcover Database for the
Standards”.
Merwade, Venkatesh. 2010. Creating SCS Curve Number Grid using HEC-GeoHMS. School of
Civil Engineering,
~vmerwade/education/cngrid.pdf
National
Hydrography Dataset Plus (NHDPlus). 2010.
October 2010. http://www.horizon-systems.com/nhdplus/HSC-wth16.php
Natural Resources Conservation Service (NRCS). 2010. Soil Data Mart. Soil Types for UT603:
Natural Resources Conservation Service (NRCS). 2009. Custom Soil Resource Report for Cache
Valley Area, Parts of Cache and
Natural Resources Conservation Service (NRCS). 1986. Urban Hydrology for Small Watersheds.
Technical Release 55. June 1986. pp. 1-164.
Shaw, Chuck.