March 01, 2017

High-Resolution Ensemble Forecasts: The Critical Missing Element of U.S. Operational Numerical Weather Prediction

There has been a lot of discussion of how U.S. global numerical weather prediction has fallen behind others, such as the European Center and the UK Met Office.  A serious problem that the National Weather Service is finally giving some attention.

But perhaps the greatest weakness of U.S numerical weather prediction doesn't regard global prediction, but rather forecasting in our own nation.

A deficiency that undermines the ability of the National Weather Service (NWS) and the private sector to forecast severe thunderstorms, flash flooding, heavy precipitation in terrain, and other critical weather features.  A gap in NWS capabilities that is costing lives and resulting in large and unnecessary economic losses.

The deficiency?

The lack of a high-resolution ensemble prediction system over the U.S.




Why does the U.S.  need a high resolution ensemble system?

All numerical weather forecasts possess uncertainty, either due to uncertainty in the initial conditions of the forecasts, in the descriptions of physical processes (model physics), or in the approximations used in solving the equations.

This uncertainty must be estimated and communicated to the public.  For example, instead of saying the forecast for tomorrow is 63F, we must tell folks the probabilities of various temperature ranges.  Instead of saying it will snow or not, we must tell people the probabilities for snow of various amounts.  This is called probabilistic prediction.

Fortunately, meteorologists have developed a technology to make probabilistic forecasts: ensemble prediction, in which forecasts models are run many times, each time a little differently.  We can slightly vary the initial conditions, or how we describe cloud processes or other physics in the model, or by varying how we solve the equations.


The resolution of an ensemble system is important and is closely related to the spacing of the grid points on which the forecasts equations are solved.  When the grid points are close together, resolution is higher, and vice versa.

One of the most critical forecast problems deals with convection and thunderstorms, associated with cumulus and cumulonimbus clouds.  These are the systems producing severe thunderstorms, tornadoes, hail and lightning.  here is deep experience showing that demonstrates that forecasts models should have grid spacing of 3-4 km or less to have a chance of simulating and predicting these critical weather features.

Similar grid spacings are needed to get mountain weather right, such as flow through gaps (like the Columbia Gorge or the Fraser River Valley) or heavy precipitation associated with fronts and terrain.   The critical details of hurricanes (like their eye wall circulations) also require high resolution.

In short, to produce ensemble forecasts of critical weather features, the National Weather Service needs to run an ensemble of at least 3-4 km grid spacing, and 2-3 km would be better.  I am not the only one saying this.  A long list of National Academy of Sciences reports (see below), national workshops, and advisory committees have recommended exactly this.  A large (30-50 members) ensemble at 2-4 km grid spacing, run several times a day is required. (each of the separate ensemble forecasts is called a member)


What is the National Weather Service Actually Doing?

Today, the National Weather Service is running two operational ensemble systems:  a 21 member GEFS ensemble (35 km grid spacing) and a 26 member SREF ensemble (26 members, 16 km grid spacing).  The resolution of these ensemble systems is not even close to what is needed for local weather prediction.   And their deficiencies don't end there.  GEFS is too small and is underdispersive, which means the forecasts frequently do not encompass truth.  SREF is the combination of two different models that often produce distinctly different solutions, and again often does not encompass the truth.

And now a bit of dirty meteorological laundry.   The National Weather Service knows they need a high resolution ensemble system at convection-allowing resolutions (again 2-4 km).  But they have not been ready to invest in doing it right.  So what did they do?   Kludge together a collection of forecasts run by different groups into a small stop-gap ensemble system:  the Storm-Scale Ensemble of Opportunity (SSEO) run out of the NOAA/NWS Storm Prediction Center.

SSEO is made up of 7 members with grid spacing of 4-5 km and run by several organizations.   It is too small, with a poor design, and not reliable.   But it is better that nothing.

Somewhat embarrassing for the National Weather Service, a major U.S. research organization, the National Center for Atmospheric Research, is running a 10-member ensemble at 3-km grid spacing, once a day (see below).  It is a hit with both the research and operational communities, with NWS forecasters using and citing it heavily.  It is not clear how long NCAR will continue this wonderful service.

Time for the National Weather Service to Act

The National Weather Service has been kicking this can down the road too long and it is time that hey finally build a state-of-science high-resolution ensemble system over the U.S.  A major excuse has been lack of computer power, but recently the NWS has acquired new computers that are running half-empty as I write this.    There is enough spare computer resources to immediately begin a 5-10 member, 3-km ensemble, 2-4 times a day out to 48 hr.

NOAA/NWS leadership must work with the new administration to secure the additional computer resources to build out our national high-resolution ensemble prediction system.   Trump wants to make American great again.  Fine.  Let's start by making America's numerical weather prediction state-of-the-science.   You can call it critical infrastructure.
So let me get a bit more technical.   I propose that the new system will have 50 members, run over the U.S. at 3-km grid spacing.  Ensemble-based data assimilation will be used, with new analyses completed every three hours.  Every 6 hours there will be new 48h forecasts for each member, with physics diversity created by the use of new technology called stochastic physics.

The computer requirements are large, but quite possible (the cost is equivalent to one fighter jet).  Support for this new capability should be bipartisan since everyone will benefit.   There are a lot of red states whose citizens are receiving mediocre quality forecasts  for very active weather (thunderstorms, hurricanes, flash floods) and the proposed system will provide a radical improvement.

A high-resolution ensemble system would improve snow forecasting in the Northwest, heavy rain forecasting in California, thunderstorm forecasting in Nebraska, and coastal storm prediction over the East Coast.    It would lay the groundwork for better use of observations though improved data assimilation.  Every NWS forecaster I have talked to acutely wants it.  Every  relevant advisory committee I have been on recommends it.



The time for delay in building this critically needed weather infrastructure is over.  NOAA and NWS management need to make a high-quality convection-allowing operational ensemble prediction system a reality in this country.



9 comments:

  1. I am confused about what member means here. Can anyone explain?

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  2. Let us hope the so called President makes good on his proposal to spend trillions of dollars on the nation's infrastructure and that a meaningful portion goes to these much needed updates. Write and call your members of Congress.

    ReplyDelete
  3. "NOAA and NWS management need to make a high-quality convection-allowing operational ensemble prediction system a reality in this country."

    You're barking up the wrong tree. That sentence should read "The United States Congress needs to make..." The problem with our federal research agencies by-and-large is not mismanagement, it is a lack of support. It's ridiculous to insinuate (as you do in this blogpost) that the problem is with the administrators of agency. The sword of Damocles that fell as Sequestration following decades of "fiscal conservatism" means that these agencies don't have the resources they need (particularly human resources) to fulfill their mission. We have slowly been amputating fingers from the body of Federal research science. Trump wants to now cut off both hands. And you're sitting here complaining that they can't juggle.

    ReplyDelete
  4. Cameron, it's like a club membership. Every run of the ensemble is a member of that particular ensemble, and once you have all the members in place you can look at the whole group's average, extremes and the like. A golf-club member may shoot a score that matches the club average but have the worst score on the 4th hole - depending on what you want to analyze that member could have different impacts on the whole group.

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  5. So much for making the weather infrastructure "great".
    https://www.washingtonpost.com/news/energy-environment/wp/2017/03/03/white-house-proposes-steep-budget-cut-to-leading-climate-science-agency/

    ReplyDelete
  6. Sorry Cliff, but it's more important to build up our military by transferring $$$ from domestic programs, such as NWS. Under such a plan we may not get the forecasts we deserve, but we'll all sleep well at night knowing that the USA will still be able to deliver a swift boot to the ass of those pesky terrorists. It'll be huge and beautiful!

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  7. http://www.msn.com/en-us/news/politics/white-house-proposes-steep-budget-cut-to-leading-climate-science-agency/ar-AAnLWuN?li=BBnbcA1
    Apparently not spending on weather infrastructure, cutting instead.

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  8. anyone check what Trump is doing to the NOAA budget?

    ReplyDelete

Please make sure your comments are civil. Name calling and personal attacks are not appropriate.

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