Automatic Calibration of HSPF model with NEXRAD rainfall data for DMIP Jae Ryu Hydrologist, National Drought Mitigation Center University of Nebraska Lincoln,

Slides:



Advertisements
Similar presentations
The Drainage Basin System
Advertisements

Modelling the rainfall-runoff process
A Model for Evaluating the Impacts of Spatial and Temporal Land Use Changes on Water Quality at Watershed Scale Jae-Pil Cho and Saied Mostaghimi 07/29/2003.
U.S. Department of the Interior U.S. Geological Survey Analysis and Comparison of Selected Water-Budget Components of the High Plains, and
NWS Calibration Workshop, LMRFC March, 2009 Slide 1 Sacramento Model Derivation of Initial Parameters.
Introduction to runoff modeling on the North Slope of Alaska using the Swedish HBV Model Emily Youcha, Douglas Kane University of Alaska Fairbanks Water.
The NAM Model. Evaporation Overland flow The excess rainfall is divided between overland flow and infiltration.
Methodology for Evaluating Hydrologic Model Parameters in an Urban Setting: Case Study Using Transferred HSPF Parameters in Midlothian and Tinley Creek.
Sacramento Soil Moisture Accounting Model (SAC-SMA)
Runoff Processes Daene C. McKinney
Hydrological Modeling for Upper Chao Phraya Basin Using HEC-HMS UNDP/ADAPT Asia-Pacific First Regional Training Workshop Assessing Costs and Benefits of.
Some of my current research: Modeling sediment delivery on a daily basis for meso-scale catchments: a new tool: LAPSUS-D By: Saskia Keesstra and Arnaud.
Presented by Jason Afinowicz Biological and Agricultural Engineering Department, Texas A&M University CVEN 689 Applications of GIS to Civil Engineering.
School of Geography FACULTY OF ENVIRONMENT School of Geography FACULTY OF ENVIRONMENT GEOG5060 GIS and Environment Dr Steve Carver
Hydrologic/Watershed Modeling Glenn Tootle, P.E. Department of Civil and Environmental Engineering University of Nevada, Las Vegas
Engineering Hydrology (ECIV 4323)
Utilization of the SWAT Model and Remote Sensing to Demonstrate the Effects of Shrub Encroachment on a Small Watershed Jason Afinowicz Department of Biological.
Application of Stage IV Precipitation Data to Estimate Spatially Variable Recharge for a Groundwater Flow Model Heather Moser Mentor: Dr. William Simpkins.
Impact of Climate Change on Flow in the Upper Mississippi River Basin
Hydrographs and Drainage Basins. Drainage Basins: A drainage basin is the catchment area of a river and its tributaries. The boundary of the catchment.
6/3/2010 ER FFG Conference An Overview of Gridded Flash Flood Guidance; A Spatially Distributed Runoff and Threshold-Runoff Based Approach Erick Boehmler.
Water Harvesting and Groundwater Recharging in India: Potentials and Pitfalls M. Dinesh Kumar, B. R. Sharma, Ankit Patel and OP Singh IWMI-Tata Water Policy.
WaterSmart, Reston, VA, August 1-2, 2011 Steve Markstrom and Lauren Hay National Research Program Denver, CO Jacob LaFontaine GA Water.
Integrated Water Management Modeling Framework in Nebraska Association of Western State Engineers Spring Workshop Salt Lake City, Utah June 9, 2015 Mahesh.
Dr. R.P.Pandey Scientist F. NIH- Nodal Agency Misconception: A DSS takes decisions ---(No)
National Weather Service River Forecast System Model Calibration Fritz Fiedler Hydromet 00-3 Tuesday, 23 May East Prospect Road, Suite 1 Fort.
Hypothesis-Testing Model-Complexity. Hypothesis Testing …..
ELDAS Case Study 5100: UK Flooding
Routing GenRiver 1.0 Distributed process-based model spatial scale: ha,temporal scale: daily Can be used as a tool to explore our understanding.
Streamflow Predictability Tom Hopson. Conduct Idealized Predictability Experiments Document relative importance of uncertainties in basin initial conditions.
These notes are provided to help you pay attention IN class. If I notice poor attendance, fewer notes will begin to appear on these pages 1.
Enhancing the Value of GRACE for Hydrology
LL-III physics-based distributed hydrologic model in Blue River Basin and Baron Fork Basin Li Lan (State Key Laboratory of Water Resources and Hydropower.
Application of GIS and Terrain Analysis to Watershed Model Calibration for the CHIA Project Sam Lamont Robert Eli Jerald Fletcher.
Effects of Biases in NEXRAD Precipitation estimates and Sub-Basin Resolution in the Hydrologic Modeling of Blue River Basin Using a Semi-distributed Hydrologic.
Assessing the impacts of climate change on Atbara flows using bias-corrected GCM scenarios SIGMED and MEDFRIEND International Scientific Workshop Relations.
Patapsco/Back River SWMM Model Part I - Hydrology Maryland Department of the Environment.
CE 424 HYDROLOGY 1 Instructor: Dr. Saleh A. AlHassoun.
Gridded Rainfall Estimation for Distributed Modeling in Western Mountainous Areas 1. Introduction Estimation of precipitation in mountainous areas continues.
Engineering Hydrology (ECIV 4323)
GeoResources Institute AN RPC EVALUATION OF THE WATERSHED MODELING PROGRAM HSPF TO NASA EXISTING DATA, SIMULATED FUTURE DATA STREAMS, AND MODEL (LIS) DATA.
The SWAT Model Mauro Di Luzio, TAES-BREC Blackland Research and Extension Center, Temple, TX Jeff Arnold, USDA-ARS Grassland Research and Extension Center,
The NOAA Hydrology Program and its requirements for GOES-R Pedro J. Restrepo Senior Scientist Office of Hydrologic Development NOAA’s National Weather.
The Drainage Basin System
Additional data sources and model structure: help or hindrance? Olga Semenova State Hydrological Institute, St. Petersburg, Russia Pedro Restrepo Office.
Description of WMS Watershed Modeling System. What Model Does Integrates GIS and hydrologic models Uses digital terrain data to define watershed and sub.
A Soil-water Balance and Continuous Streamflow Simulation Model that Uses Spatial Data from a Geographic Information System (GIS) Advisor: Dr. David Maidment.
AOM 4643 Principles and Issues in Environmental Hydrology.
Parameterisation by combination of different levels of process-based model physical complexity John Pomeroy 1, Olga Semenova 2,3, Lyudmila Lebedeva 2,4.
Surface Water Surface runoff - Precipitation or snowmelt which moves across the land surface ultimately channelizing into streams or rivers or discharging.
Modeling Stream Flow of Clear Creek Watershed-Emory River Basin Modeling Stream Flow of Clear Creek Watershed-Emory River Basin Presented by Divya Sharon.
NOAA’s National Weather Service National River Forecast Verification System NOAA Science Advisory Board Meeting July 16, 2003 Gary Carter Director, Office.
Hydrologic Objects for Modeling: One Viewpoint Thomas A. Evans US Army Corps of Engineers Hydrologic Engineering Center.
U.S. Department of the Interior U.S. Geological Survey U.S. Department of the Interior U.S. Geological Survey Scenario generation for long-term water budget.
CE 374 K – Hydrology Second Quiz Review Daene C. McKinney.
DIRECT RUNOFF HYDROGRAPH FOR UNGAUGED BASINS USING A CELL BASED MODEL P. B. Hunukumbura & S. B. Weerakoon Department of Civil Engineering, University of.
TOP_PRMS George Leavesley, Dave Wolock, and Rick Webb.
Comparisons of Simulation Results Using the NWS Hydrology Laboratory's Research Modeling System (HL-RMS) Hydrology Laboratory Office of Hydrologic Development.
1 WaterWare description Data management, Objects Monitoring, time series Hydro-meteorological data, forecasts Rainfall-runoff: RRM, floods Irrigation water.
Introduction. The Hanford Site.
Predicting the hydrologic implications of land use change in forested catchments Dennis P. Lettenmaier Department of Civil and Environmental Engineering.
Runoff.
Engineering Hydrology (ECIV 4323)
Term Project Presentation CEE6440 GIS in Water Resources Seungbin Hong
Calibration.
Slides excerpted from the Ecosystem Services module
Hydrology CIVL341.
Engineering Hydrology (ECIV 4323)
Hydrology CIVL341 Introduction
Engineering Hydrology (ECIV 4323)
Presentation transcript:

Automatic Calibration of HSPF model with NEXRAD rainfall data for DMIP Jae Ryu Hydrologist, National Drought Mitigation Center University of Nebraska Lincoln, NE The Distributed Model Intercomparison Project (DMIP-2) Workshop Hydrology Laboratory, Office of Hydrologic Development, National Weather Service, Silver Spring, Maryland – USA September 10-12, 2007

Outline 1.Hydrological Simulation Program- Fortran (HSPF) 2.Methodology (Data and Analysis) 3.Key hydrologic parameters for HSPF 4.Calibration Efforts 5.Results and future work

HSPF Hydrological Simulation Program-Fortran (HSPF)-Stanford Watershed Model (Crawford and Linsley 1966) Lumped model-homogeneous land segments in each delineated sub-basins Better Assessment Science Integrating Point and Nonpoint Sources (BASINS) – EPA 1996 GIS capability- Semi-distributed model (hspf)

HSPF (Hydrologic Cycle) UZS LZS A copy available at my desk!!

Methodology Forcing data (8km x 8km) – Hourly Nexrad (4km x 4km) and NARR-a (Poevap-32km x 32km) Pseudo-Station network – Elk River (30), Illinois River (44), and Blue River (19)

Methodology (Cont’d) BASINS Data (GIS) DEM, STATSGO, Stream network (NHD), Land Cover, etc. Watershed Delineation Tools Delineate sub-basins

Key Hydrologic Parameters –AGWETP: Fraction of remaining potential evapotranspiration from active groundwater –AGWRC: Base groundwater recession rate –BASETP: The fraction of potential evapotranspiration from baseflow –CEPSC: Interception storage capacity –DEEPFR: Fraction of groundwater inflow to deep recharge –INFILT: Infiltration rate –IRC: Interflow recession parameter –KVARY: Variable groundwater recession flow –LZETP: Lower zone evapotranspiration parameter –LSUR: Length of the assumed overland flow –LZSN: Lower zone nominal soil moisture storage –NSUR: Manning’s roughness for overland flow –UZSN: Upper zone nominal soil moisture storage

Calibration Procedure (Cont’d) Annual Water Balance – Adjust Evaporation by multiplying factors to minimize the differences between observed and simulated flow Seasonal Water Balance (interflow and groundwater)– Adjust physical hydrologic parameters as well as monthly parameters (e.g. monthly intercept storage capacity parameter (inches), monthly lower zone evaporation parameters at start in each month Peak and low flows – Adjust physical hydrologic parameters (e.g. infiltration and percolation rate)

Auto Calibration Parameter Estimation (PEST) Software – a module built in HSPF Model Independent Parameter Estimator– Minimize the bias between observed and simulated flows by many runs Enhancements and improvement of PEST – Difficulty of hourly calibration, non-physical based parameter estimator, but still promising in terms of saving time and efforts

Results Hydrograph for the Illinois River at Baron for wettest water year (October Spetember 30, 1999)

Results Hydrograph for the Illinois River at Siloam for wettest water year (October Spetember 30, 1999)

Results Hydrograph for the Illinois River at Tahlequah for wettest water year (October Spetember 30, 1999)

Results Exeedance Probability of observed and simulated flow with/without calibration over the calibration period at Tahlequah

Results (Cont’d) Absolute Peak Error 76.15% Vs %

Results (Cont’d)

Conclusion HSPF is well suited to DMIP2 Obviously, calibrated flow outperfomed uncalibrated flows PEST works well, but enhancemenent and improvement needed Ready to simulate Western Basin

Question?!#%

BASINS 4 (April 12, 2007) (Sierra-Nevada)