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Operational Drought Monitoring and Forecasting at the USDA-NRCS. Tom Pagano Tom.Pagano@por.usda.gov 503 414 3010. Monitoring networks Data products Seasonal forecasts Soil moisture Challenges Frontiers. Monitoring networks. 1906. 2005. Manual Snow Surveys
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Operational Drought Monitoring and Forecasting at the USDA-NRCS Tom Pagano Tom.Pagano@por.usda.gov 503 414 3010
Monitoring networks Data products Seasonal forecasts Soil moisture Challenges Frontiers
1906 2005 Manual Snow Surveys Metal tube inserted into snow and weighed to measure water content. +300,000 snow course measurements as of June 2008
Snotel (SNOw TELemetry) network Automated, remote stations Primary variables: Snow water Precipitation Temperature Also: Snow depth Soil moisture SNOTEL and Snow course records often spliced together
Snowcourse (solid) and SNOTEL (hashed) active station installation dates Number of sites Active year
Soil climate analysis network (SCAN) Soil moisture/energy balance emphasis Short period of record (some from 1990s) Data available but few products
Manual snow-course SNOTEL SCAN
CSV flat files Google Earth
Location Forecasts are coordinated with the National Weather Service (NWS). Both agencies publish identical numbers.
Historical Average Location Time Period Forecasts are coordinated with the National Weather Service (NWS). Both agencies publish identical numbers.
Historical Average Location Time Period “The” Forecast Water Volume Error Bounds Forecasts are coordinated with the National Weather Service (NWS). Both agencies publish identical numbers.
Seasonal water supply volume forecasts (available in a variety of formats) NRCS formats:
Seasonal water supply volume forecasts (available in a variety of formats) NRCS formats:
Basic Forecasting Methods Statistical regression S Fork Rio Grande, Colo Apr-Jul streamflow % avg May 1 snowpack % avg
Basic Forecasting Methods Statistical regression Simulation modeling S Fork Rio Grande, Colo Snow Rainfall Heat Apr-Jul streamflow % avg Snowpack Runoff Soil water May 1 snowpack % avg
Principal Components Regression (Garen 1992) Prevents compensating variables. Filters “noise”.
Principal Components Regression (Garen 1992) Prevents compensating variables. Filters “noise”. Z-Score Regression (Pagano 2004) Prevents compensating variables. Aggregates like predictors, emphasizing best ones. Does not require serial completeness. Relative contribution of predictors
Daily forecast updates Existing seasonal forecasts issues once per month Why not develop 365 forecast equations/year and automate the guidance? We currently do Apr-Jul Streamflow = a * April 1 Snowpack + b Why not something like Apr-Jul Streamflow = a * April 8 Snowpack + b
Period of record range (10,30,70,90 percentile) 1971-2000 avg Period of record median
Period of record range (10,30,70,90 percentile) 1971-2000 avg Period of record median Official coordinated outlooks
Daily Update Forecasts Period of record range (10,30,70,90 percentile) 1971-2000 avg Period of record median Official coordinated outlooks
Expected skill Daily forecast 50% exceedence Official forecasts
SWSI Methodology varies by state Available 8 Western states Rescaled percentile of [reservoir + streamflow] Calibrated on observed, forced with streamflow forecasts (real-time variance too low) No consistent calibration period
Soil moisture and runoff efficiency
Expansion of soil moisture to SNOTEL network (data starts ~2003)
Blue Mesa Basin, Colorado Soil Moisture 2001-2008 (According to the Univ Washington Model- top 2 layers)
Blue Mesa Basin, Colorado Soil Moisture 2001-2008 (According to the Univ Washington Model- top 2 layers) (According to Park Cone Snotel- ~0-30” depth) Snotel does poorly in frozen soils, so that has been censored Model resembles snotel, but also remember we’re comparing basin average with point measurement
What influence humans? Does it matter? Blue Mesa For each site, all measurements Jan-Jun, Jul-Dec are averaged by year. Station half-year data then converted into standardized anomaly (o-avg(o))/std(o) vs period of record for the half year. Multiple stations are then averaged.
Spring precipitation, especially the sequencing with snowmelt is also important Rainfall Snowmelt Rainfall mixed with snowmelt “normal” Runoff April July
Spring precipitation, especially the sequencing with snowmelt is also important Rainfall Snowmelt Rainfall mixed with snowmelt “normal” Runoff Rainfall boosting snowmelt Larger volumes Snowmelt and rainfall separate Not enough “momentum” to produce big volumes April July All these interactions are tough to “cartoonize”; Simulation models can handle this… but still it’s tough to predict beyond 1-2 weeks.
Spring precipitation, especially the sequencing with snowmelt is also important Rainfall Snowmelt Rainfall mixed with snowmelt “normal” Runoff Rainfall boosting snowmelt Larger volumes Snowmelt and rainfall separate Not enough “momentum” to produce big volumes Even then, however, high heat and no rain can lead to “pouring sunshine” April July All these complex interactions are tough to “cartoonize”; Simulation models can handle this… but still it’s tough to predict beyond 1-2 weeks.
Seasonality/lag of drought in snowmelt regions Precipitation and impacts can be separated by months. Highly managed systems How to separate drought from poor planning or overbuilding? Also: Humans react to forecasts e.g. evacuating reservoirs Regional/local vulnerability Whose drought? Stickiness of drought When is the drought over? Never… (also risk of “Drought fatigue”)
Seasonality/lag of drought in snowmelt regions Precipitation and impacts can be separated by months. Highly managed systems How to separate drought from poor planning or overbuilding? Also: Humans react to forecasts e.g. evacuating reservoirs Regional/local vulnerability Whose drought? Stickiness of drought When is the drought over? Never… (also risk of “Drought fatigue”) Incomplete understanding of natural system (esp soil moist, sublim) Can we even close the water balance? Institutional and infrastructure barriers Limited agency resources, increasing restrictions Non-stationarity Could climate change be the new normal?
The future may have more and better: Products from and understanding of soil moisture data Automation and “smart” objectification of forecast process Quantification and use of anecdotal evidence Forecast transparency (i.e. access to raw guidance)
The future may have more and better: Products from and understanding of soil moisture data Automation and “smart” objectification of forecast process Quantification and use of anecdotal evidence Forecast transparency (i.e. access to raw guidance) Communication of uncertainty, especially graphically Understanding of local user vulnerabilities Consolidation of data from multiple networks: universal, uniform access and multi-agency products Understanding of the “long view”: how relevant is data from 10, 50, 100, 500 years ago?
Variable“Significance” Snow 60-90 Fall precip 5-20 Winter precip 30-60 Spring precip 10-25 Baseflow 5-15 Soil Moisture 5-10 Temperature 10-25 Wind 5-20 Radiation 5-15 Relative humidity 5-10 Source:1972 Engineering Handbook
Daily forecast Skill: (Correlation)2 Variance Explained January 1
Daily forecast Skill: (Correlation)2 Variance Explained April 1