Short Wave

How scientists predict big winter storms

10 min
Jan 28, 20264 months ago
Listen to Episode
Summary

This episode explores how advanced computer weather models enable meteorologists to predict major winter storms days in advance. The discussion highlights the critical role of continuous, granular data collection from satellites, weather stations, and balloons, while raising concerns about potential threats to these systems from budget cuts to agencies like NOAA and NASA.

Insights
  • Modern weather prediction capability represents a 50-year advancement in computational modeling and data infrastructure that was impossible five decades ago
  • Data quality is more critical than computing power for accurate weather forecasting—plentiful, granular, and continuous measurements are essential
  • Government investment in Earth observation satellites and data collection infrastructure since the late 1970s has been foundational to current forecasting accuracy
  • Proposed budget cuts to NOAA, NASA, and atmospheric research labs could degrade future storm prediction capabilities and early warning systems
  • Multiple weather models using weighted averages provide more reliable forecasts than single-model predictions
Trends
Increasing lead time for extreme weather predictions due to improved computational models and data infrastructureGrowing reliance on government-maintained data sets and publicly funded satellite networks for weather sciencePotential degradation of weather forecasting capability due to government budget constraints and staffing cutsIntegration of multi-source data (satellites, weather stations, radar, ships, planes) into unified forecasting systemsLong-term data continuity becoming critical for identifying patterns in extreme weather eventsRisk to scientific infrastructure from policy changes affecting NOAA, NASA, and atmospheric research institutions
Topics
Computer weather modeling and predictionWinter storm forecasting and early warning systemsEarth observation satellites and data collectionWeather balloon and atmospheric measurement systemsClimate science data infrastructureNOAA and National Weather Service operationsExtreme weather pattern predictionGovernment funding for scientific researchData quality requirements for climate modelingMulti-model weather forecast averagingAtmospheric layers and cloud estimationLong-term climate data setsReal-time weather monitoring systemsTropical storm predictionWildfire weather impacts
Companies
National Oceanic and Atmospheric Administration (NOAA)
Federal agency managing weather data sets and forecasting systems facing proposed budget cuts that could impact predi...
NASA
Space agency operating Earth observation satellites that collect continuous weather and climate data used in forecast...
National Weather Service
Federal agency providing weather forecasts and warnings, recently impacted by staffing shortages affecting weather ba...
National Center for Atmospheric Research
Federally supported Colorado research lab facing potential dismantling under current administration budget proposals
Stony Brook University
Institution where climate scientist Kevin Reed conducts research on weather prediction and storm forecasting
People
Kevin Reed
Climate scientist at Stony Brook University discussing advances in computer weather models and storm prediction capab...
Rebecca Hirscher
NPR Climate Reporter providing expert analysis on weather modeling, data infrastructure, and impacts of budget cuts o...
Regina Barber
Host of Shortwave podcast conducting interview on winter storm prediction and weather science
Quotes
"The fact that we're talking about an event in New York City where I am, right? That's happening in a few days from now. You know, that wasn't something we could do 50 years ago."
Kevin ReedEarly segment
"The ability that we are able to predict them days in advance is centered on the fact that the United States has made large efforts in coordinated observations of the Earth system so that we can build better and better models."
Kevin ReedEarly segment
"Garbage in garbage out is important for our health, also true. I think in many fields of science, especially things where you have a large number of observations."
Rebecca HirscherMid-episode
"As the weather gets more and more extreme, it will be difficult to keep up this level of accurate early forecast if scientists and data are stymied in the ways that they could be if all of these cuts were to go through."
Rebecca HirscherLate segment
Full Transcript
Support for NPR and the following message come from the William and Flora Hulett Foundation. Investing in creative thinkers and problem solvers who help people, communities, and the planet flourish. More information is available at Hulett.org. You're listening to Shortwave from NPR. Hello from freezing cold Washington DC. I'm Regina Barber. And I'm NPR Climate Reporter Rebecca Hirscher. And it's super cold where you are too, right Becky? Oh my gosh, yes. Let me check my window thermometer here. Yeah, it is 14 degrees right now in Baltimore. Oh wow, wow. I don't even want to check for here. It's gross. It's cold. There's like eight inches of snow outside plus a couple of ice. We got hit by this storm. Yeah, I mean, me, you tens of millions of other people, like this is a big one. Well, if you wanted a snowy winter, you are getting it to not. The storm stretches over 2300 miles with more than 40 years. It is windy. It is pelleting about half the United States population today, shoveling, scraping, and slogging their way through heavy snow. Yeah, at least 29 states were affected by this storm. It knocked out electricity for hundreds of thousands of people. And listen, winter storms happen. It's a thing. Yeah, in the winter. Yes, as a climate reporter, one thing that was interesting to me about this storm was how much warning we got. Like, I've been preparing for almost a week before any snow even fell, which is a lot of lead time. Now that you mentioned it, I did start hearing about the storm a long time before it arrived. Was there more warning than usual? Well, that's what's interesting to me. You know, this is actually par for the course of these days, getting a lot of warning, but it didn't used to be that way. So last week, I called up this climate scientist named Kevin Reed at Stony Brook University to talk about the storm. And he said this thing that was kind of interesting. I mean, the fact that we're talking about an event in New York City where I am, right? That's happening in a few days from now. You know, that wasn't something we could do 50 years ago. And that's because there have been these pretty amazing advances in computer weather models. The ability that we are able to predict them days in advance is centered on the fact that that the United States has made large efforts in coordinated observations of the Earth system so that we can build better and better models. So today on the show, we're taking a closer look at those models, how they work, what they tell us, and why this storm felt like a slow moving train in a good way. I'm Regina Barber and you're listening to shortwave from NPR. This message comes from Wise, the app for international people using money around the globe. You can send, spend, and receive an up to 40 currencies with only a few simple taps. Be smart, get Wise. Download the Wise app today or visit Wise.com, TZNC's Apply. Support for NPR and the following message come from the William and Flora Hullitt Foundation, investing in creative thinkers and problem solvers who help people, communities, and the planet flourish. More information is available at hullitt.org. Okay, so today we're talking about the winter storm that just walloped like half the United States with NPR climate reporter Rebecca Hirscher. A lot of us knew this storm was coming for almost a week before it actually arrived. What allows meteorologists to give this kind of early warning, Becky? So really good computer models aren't the key. And there are a bunch of them, like I don't know, Gina, are you a weather nerd at all? Or are you more of a functional weather consumer? Look at your phone and see if it's going to rain. Put on jacket. Yeah, I'm very functional. I look like I'm like, whoa, we can do it. But like, no, I'm not a weather nerd. You're not like asking more questions and googling it. No, no, no. That's fine. Very reasonable way to consume the weather. So this might be you to you. There are lots of weather models. They have different names, usually acronyms or nicknames. Like you'll see the European model. It sounds very fancy. Yeah. And the weather forecast that you see on your phone or on TV are usually based on a bunch of these models. Okay, so like an average of all these models? Yeah, like a weighted average. Okay. Some models are better at predicting different types of weather or they can handle different scales, like a whole region versus zooming in on your specific city. Anyway, we could go down a whole rabbit hole on these models. But for our purposes, it's just important to know that there are a bunch of them. And the better the models are, the better the weather forecast is going to be. Right. Because these computer models, kind of model how the atmosphere actually works in real life. Exactly. And in real life, there is a lot going on in the atmosphere, as Kevin explained. The way we estimate clouds, for example, in the processes that go into them and how that then links to wind and temperature. So there are a lot of elements that the computer model has to get right. But if you can get it right, then you can ask that model questions. Basically say, hey, we're seeing this kind of wind, these kinds of temperatures, this atmospheric pressure, it's this time of year, what do you think's going to happen next? And it gives you some scenarios with probabilities. Like usually when the conditions are like this, it'll snow later this week, but there's a chance it could rain instead. You know, the better the model, the more accurate those predictions are going to be. Yeah, no, I had friends that were meteorologists and it was fascinated to me that it was basically every field of science that goes into other predictions. Totally. So like what makes a model good? Is it about computing power? That is one element. Yeah, but the most crucial requirement is good data. So have you heard the saying garbage in garbage out? Yes, that's relates to my food intake, right? Gross. Yes, it does. I guess. No, garbage in garbage out important for our health, also true. I think in many fields of science, especially things where you have a large number of observations. So for weather models, you need good data and good data looks like plentiful, granular, continuous data. And I'll go through each one of those. Okay. Right. So first, plentiful. The atmosphere is so complicated. There are layers of clouds, there are currents of air and moisture and changing temperatures and interactions with the land and the water underneath. If you want to capture all of that in a computer, you need a lot of measurements, which brings us to number two granular. You need to know what's happening all over the place. And not just in one dimension, like down on the land or in one layer of the atmosphere, you need to have weather stations all over the world and you also need to have measurements from the air column, you know, weather blue measurements radar measurements from planes, 100 percent measurements from ships and the oceans, satellite data, look down from space, all of it. And that leads us to the last requirement. Your data needs to be continuous. It can't stop. It won't stop. Yeah, the most valuable data for weather models and this is true of a lot of climate science as well are data sets that cover a really long period of time, like decades, particularly if you're looking for patterns in extreme weather because the more extreme the weather, the less often it happens. So you need to be able to look over a long periods of time to understand what conditions happen that lead to that type of weather. Yeah, I mean, that makes sense. Like if a giant winter storm only hits five or ten years, that's going to be tough for a computer model to predict. And I can see how you'd need like a lot of continuous granular data to see that coming. So given that we had all of this lead time for this storm, I'm guessing that that type of data is available. Yeah, I mean, it's not perfect. But there have been huge investments in data collection in the last 50 years or so, really starting in the late 70s, early 80s when Earth observing satellites started collecting continuous data about the planet. And at this point, there are a lot of data sets that go back 50 years or more, all the different computer models they use all that data. And where does all this data live? Oh, I'm so glad you asked. A lot of it is here becoming a weather note already. Happening. A lot of it is maintained by governments because the satellites and the boolies and the balloons that collect this information, a lot of them are publicly funded. Yeah, it makes sense. But here in the US, some of that data is under threat right now because of budget and staff cuts that the Trump administration is pursuing. So the National Weather Service, you might remember this was interrupted pretty badly last year by mass staffing shortages, which led to missed launches of weather balloons. For example, the administration is trying to cut the budgets of agencies like NASA and the National Oceanic and Atmospheric Administration, NOAA, both of which employ people who manage these continuous data sets and make them available and useful to scientists. Oh, wow. Yeah. There's also a federally supported research lab in Colorado called the National Center for Atmospheric Research. The administration is moving to dismantle that lab, the White House Office of Management and Budget didn't respond to questions that we asked them about that plan. But it all adds up to a lot of headwinds for the kind of data and research that feeds these computer models and that in turn spit out weather forecasts many days in advance so that you and I and millions of other people can get over to Home Depot and time to buy shovels and hand-warmers so this lead time that we got for this storm is this not maybe going to be the norm if this data is no longer readily available? I would say that as the weather gets more and more extreme, it will be difficult to keep up this level of like accurate early forecast if scientists and data are stymied in the ways that they could be if all of these cuts were to go through. It's not happening right now but it's something that could happen for sure if we don't see the kind of government investment in this type of data that we have in the past. Wow. Well the next time there's a big storm we're going to have you back on and we'll see how well we predicted it. If I have power? Yeah, if you have power. Thanks for coming to talk with us today. Of course you're welcome. If you like this episode follow us on the MPR app or wherever else you're listening from. It helps us out and helps you never miss a show. Speaking of, if you're interested in weather science check out our episodes on better storm prediction in the tropics and how the Santa Anna wins impact the California fire season this time of year. We'll link to them in our show notes. This episode was produced by Hanachan and it was edited by our showrunner Rebecca Ramirez. Tyler Jones and Rebecca Hersher checked the facts. The audio engineer was Robert Rodriguez. News clips were from CBS Boston, Fox weather, Fox 4 Dallas Fort Worth, and PBS News Network. I'm Regina Barber. Thank you, Fullers News shortwave from MPR. Support for NPR and the following message come from the William and Flora Hullitt Foundation. Investing in creative thinkers and problem solvers who help people, communities, and the planet flourish. More information is available at hullitt.org.