Assessing Fire Damage and Erosion Potential in Forestland Affected by the Cerro Grande Wildfire of 2000 Rachel Anne Rebecca November 21, 2000.

Slides:



Advertisements
Similar presentations
InVEST Sediment Retention Model Estimate the amount of watershet erosion and sedimentation and its economic impact on hydropower production and water quality.
Advertisements

Soil Erosion Estimation TSM 352 Land and Water Management Systems.
©2003 Institute of Water Research, all rights reserved Water Quality Modeling for Ecological Services under Cropping and Grazing Systems Da Ouyang Jon.
An open source version of the Nonpoint-Source Pollution and Erosion Comparison Tool Climate Tools Café Webinar Dave Eslinger, Ph.D. 3 May, 2012.
Developing a GIS-Based Soil Erosion Potential Model for the Jemez Watershed – Using the Revised Universal Soil Loss Equation (RUSLE) Josh Page CE 547 –
1 Technical Service Provider Training National Association of Independent Crop Consultants January 20-23, 2010 Wyndham Orlando Resort 8001 International.
Bringing Marginal Land Into Production Don Day Extension Associate - Energy.
ESTIMATION OF SOIL USING GIS:A CASE STUDY OF TAITA HILLS PRESENTER:EVANS ARABU UNIVERSITY OF NAIROBI.
Catastrophic Event. An event that results from Earth processes and that can cause damage and endanger human life Weather Geologic –tornadoearthquake –hurricane.
Erosion Control Short Course Monday, April 23, 2012 San Luis Obispo City/County Library Ron Harben, Project Director California Association of Resource.
IDENTIFYING GULLIES IN BOLIN CREEK WATERSHED Christina Hurley Alyssa James Carly Buch Nicole Meyer.
Raster Based GIS Analysis
Alpine Space Climate change and the need for adaptation Final Conference CLISP, Vienna 8 September 2011 Sabine McCallum.
Land Chapter 14. Land Use, Land Cover  _________________: farming, mining, building cities and highways and recreation  ___________________: what you.
Geographical & Environmental Modelling Dr Nigel Trodd Coventry University.
New IPWG member: Indonesia Center for Remote Sensing Contact Person: Dr. Ketut Wikantika (Director-CRS) Source:
Long-term changes in Mediterranean vegetation in Israel and California Yohay Carmel Faculty of Agricultural Engineering The Technion -- Israel Institute.
Soil Erosion Assessment using GIS and RUSLE model
Factors that Influence Erosion
Soil Conservation: Soil Conservation: towards sustainable agriculture.
Soil Erosion: Causes, Control & Estimation AGME Fundamentals of Agricultural Systems Technology Photos courtesy of NRCS of USDA.
Impervious Cover and Erosion: Brushy Creek, Round Rock, Texas GRG 360-G Spring 2004 Beau Barnett Brett Franco.
Updating Erosion Hazard Ratings in a Post-fire Assessment A GIS Tool for Soil Scientists.
FNR 402 – Forest Watershed Management
Introduction Soil erosion research is a capital-intensive and time-consuming activity. However, the advent of computer technology leads to a new approach.
U.S. Department of the Interior U.S. Geological Survey Sue Haseltine Associate Director for Biology U.S. Geological Survey David Schad Chair, Association.
Mapping Flash Flood Potential in Indiana Evan Bentley 03/02/2011.
Effect of Fire on Soil ability to Sustain Plant Life Becca Gentile and Erica Garroutte.
Predicting Sediment and Phosphorus Delivery with a Geographic Information System and a Computer Model M.S. Richardson and A. Roa-Espinosa; Dane County.
Model Parameter Estimation Experimant (MOPEX). Science Issues What models are most appropriate for different climatic and physiographic regions? What.
1 RUSLE 2 Wisconsin Website da.gov/technical/cons plan/rusle Judy Derricks-WI RUSLE2 MANAGER.
Level IB: Advanced Fundamentals Seminar
STRATIFICATION PLOT PLACEMENT CONTROLS Strategy for Monitoring Post-fire Rehabilitation Treatments Troy Wirth and David Pyke USGS – Biological Resources.
Development and Land Use Change: Central Potomac River Watershed
CE 513. Erosion in the Fall Creek Watershed Rick Faber.
Soil Movement in West Virginia Watersheds A GIS Assessment Greg Hamons Dr. Michael Strager Dr. Jingxin Wang.
InVEST Analysis Lafarge Ecosystem Services Project Avoided Reservoir Sedimentation Results Lafarge Presque Isle Quarry.
Ex_Water Yield Model Data needs 1.Soil depth,an average soil depth value for each cell. The soil depth values should be in millimeters (Raster) Source:
Lab 13 - Predicting Discharge and Soil Erosion Estimating Runoff Depth using the Curve Number method –Land use or cover type –Hydrologic condition –Soil.
Estimating Soil Erosion From Water Using RUSLE By: Andrea King USDA-Natural Resource Conservation Service.
Brad Barber Project Manager for SCFA Texas Forest Service Brad Barber Project Manager for SCFA Texas Forest Service.
Lab 13 - Predicting Discharge and Soil Erosion Estimating Runoff Depth using the Curve Number method –Land use or cover type –Hydrologic condition –Soil.
Data Sources for GIS in Water Resources by David R. Maidment, David G. Tarboton and Ayse Irmak GIS in Water Resources Fall 2011.
The Effects of Vegetation Loss on the Two Elk Creek Watershed as a Result of the Proposed Vail Category III Ski Area Development CE 394 K.2 By Dave Anderson.
™ Nutrient Management Planning ¨ Will these be mandated in your state?  An emerging national issue is how to account for agricultural non-point source.
During the 20 th century, thematic maps have been an ever useful tool for correlating data sets and representing relevant information. Recent technological.
Building an OpenNSPECT Database for Your Watershed Shan Burkhalter and Dave Eslinger National Oceanic and Atmospheric Administration (NOAA) Office for.
Data Sources for GIS in Water Resources by David R. Maidment, David G
THIRD MEETING SADMO LISBON, PORTUGAL, 7 SEPTEMBER WATER RESOURCES INDICATORS AND STATISTICAL ANALYSIS OF THE HYDROLOGICAL DATA EAST OF GUADIANA.
David Rounce. Outline Why Erosion Potential RUSLE Model Process of Project Relevance.
Soil type Vegetation type / Forest density Land Use Fire activity Slopes Support NWS Flash Flood Warning Program: Development of Flash Flood Potential.
Spatial Analysis.
Colorado River Water Resources Vulnerability Project for Hill Country Conservancy Daniel Zavala Araiza.
Agricultural Land Use as it Relates to Land Slope James Plourde, Dr. Bryan Pijanowski Human-Environment Modeling & Analysis Laboratory Purdue University.
NASA BAER Project: Improving Post-Fire Remediation Through Hydrological Modeling NASA Applied Science Program Applied Sciences Program - Wildfires.
SOIL EROSION ASSESSMENT Measurement of Water Erosion Universal Soil Loss Equation (USLE) - predict annual soil loss by water – Wischmeier and Mannering,
Soil Loss For Moody Creek, Idaho CEE 6440 GIS in Water Resources By: Ren Bagley.
Lower Siuslaw River Watershed
Spatial Data Models.
Soil ASSESSMENT Values at Risk Soil Productivity
Hydrologic Modeling for Watershed Analysis and River Restoration
Soil Erodibility Prof. Dr. EHSANULLAH. Soil Erodibility Prof. Dr. EHSANULLAH.
Teachers David Tarboton David R. Maidment
Data Sources for GIS in Water Resources by David R
Evaluating Increased Erosion Potential due to Wildfires
Natural Resources Conservation Service
Physical Features in Texas
Provo River Watershed Modeling with WMS Ryan Murdock.
Sediment and Erosion Control Plans
Chapter 3 Soil Erosion and Its Controls
Presentation transcript:

Assessing Fire Damage and Erosion Potential in Forestland Affected by the Cerro Grande Wildfire of 2000 Rachel Anne Rebecca November 21, 2000

Smoke Plume from the Fire at Los Alamos, NM May 2000

The Cerro Grande Fire of 2000 Introduction

Where? The fire scorched a large area in the Jemez Mountains. Bandelier National Monument, Santa Fe National Forest, Los Alamos National Laboratory Lands, and Various Native American Reservations were all affected. 47,650 acres burned Fires are NOT rare in this area- La Mesa Fire of 1977, Dome Fire 1996

Source: Unknown

Source:National Park Service

Factors of Erosion 1)Vegetative Cover 2)Soil Type and Composition 3)Land Use/Land Cover 4)Climate 5)Geology 6)Elevation/Slope 7) Density of Large Animals

RUSLE EQUATION (Revised Universal Soil Loss Equation) A = R K LS C P Where A is the predicted average annual soil loss in tons per acre; R is the rainfall-runoff erosivity factor; K is the soil erodibility factor; L is the slope length factor; S is the slope steepness factor; C is the cover-management factor; P is the support practice factor.

Goals of Projects 1)To find GIS data that can be used to measure each variable in the RUSLE equation 2)Process and analyze the data 3)In each dataset (ex: climate or soils, etc.), assign a erosivity number to each range of values (ex: amount of yearly precipitation) with higher numbers assigned to values of greater erosivity Example: 500mm/yr- 5; 400 mm/year- 4 because generally areas of higher annual precipitation will be more prone to erosion and runoff

4)Once the erosivity numbers are determined for each data layer, the erosivity numbers for each cell are going to be added up and that final number will determine a total erosion potential for each individual cell. 5)The erosion potential of the entire burned area will be mapped. 6) This will hopefully show in map form what areas are most prone to accelerated erosion from the fire.

Datasets Used 1)Rainfall/Runoff- Climate Data from NMRGIS and USDA Water and Climate Center 2)Soil Erodibility- SSURGO soil dataset 3)Slope- Digital Elevation Model from NMRGIS 1:100,000 4)Cover- Vegetation, Land Use/Land Cover Maps from GAPAnalysis Program and EPA 5) USGS Digital Raster Graphics

Limitations 1)Much of data has coarse resolution 2)Very general- soil erosion is much more complex than this model can allow for 3)Data Analysis takes awhile