(Press-News.org) CAMBRIDGE, MA -- Environmental scientists are increasingly using enormous artificial intelligence models to make predictions about changes in weather and climate, but a new study by MIT researchers shows that bigger models are not always better.
The team demonstrates that, in certain climate scenarios, much simpler, physics-based models can generate more accurate predictions than state-of-the-art deep-learning models.
Their analysis also reveals that a benchmarking technique commonly used to evaluate machine-learning techniques for climate predictions can be distorted by natural variations in the data, like fluctuations in weather patterns. This could lead someone to believe a deep-learning model makes more accurate predictions when that is not the case.
The researchers developed a more robust way of evaluating these techniques, which shows that, while simple models are more accurate when estimating regional surface temperatures, deep-learning approaches can be the best choice for estimating local rainfall.
They used these results to enhance a simulation tool known as a climate emulator, which can rapidly simulate the effect of human activities onto a future climate.
The researchers see their work as a “cautionary tale” about the risk of deploying large AI models for climate science. While deep-learning models have shown incredible success in domains such as natural language, climate science contains a proven set of physical laws and approximations, and the challenge becomes how to incorporate those into AI models.
“We are trying to develop models that are going to be useful and relevant for the kinds of things that decision-makers need going forward when making climate policy choices. While it might be attractive to use the latest, big-picture machine-learning model on a climate problem, what this study shows is that stepping back and really thinking about the problem fundamentals is important and useful,” says study senior author Noelle Selin, a professor in the MIT Institute for Data, Systems, and Society (IDSS) and the Department of Earth, Atmospheric and Planetary Sciences (EAPS).
Selin’s co-authors are lead author Björn Lütjens, a former EAPS postdoc who is now a research scientist at IBM Research; senior author Raffaele Ferrari, the Cecil and Ida Green Professor of Oceanography in EAPS and director of the MIT Program in Atmospheres, Oceans, and Climate; and Duncan Watson-Parris, assistant professor at the University of California at San Diego. Selin and Ferrari are also co-principal investigators of the Bringing Computation to the Climate Challenge project, out of which this research emerged. The paper appears today in the Journal of Advances in Modeling Earth Systems.
Comparing emulators
Because the Earth’s climate is so complex, running a state-of-the-art climate model to predict how pollution levels will impact environmental factors like temperature can take weeks on the world’s most powerful supercomputers.
Scientists often create climate emulators, simpler approximations of a state-of-the art climate model, which are faster and more accessible. A policymaker could use a climate emulator to see how alternative assumptions on greenhouse gas emissions would affect future temperatures, helping them develop regulations.
But an emulator isn’t very useful if it makes inaccurate predictions about the local impacts of climate change. While deep learning has become increasingly popular for emulation, few studies have explored whether these models perform better than tried-and-true approaches.
The MIT researchers performed such a study. They compared a traditional technique called linear pattern scaling (LPS) with a deep-learning model using a common benchmark dataset for evaluating climate emulators.
Their results showed that LPS outperformed deep-learning models on predicting nearly all parameters they tested, including temperature and precipitation.
“Large AI methods are very appealing to scientists, but they rarely solve a completely new problem, so implementing an existing solution first is necessary to find out whether the complex machine-learning approach actually improves upon it,” says Lütjens.
Some initial results seemed to fly in the face of the researchers’ domain knowledge. The powerful deep-learning model should have been more accurate when making predictions about precipitation, since those data don’t follow a linear pattern.
They found that the high amount of natural variability in climate model runs can cause the deep learning model to perform poorly on unpredictable long-term oscillations, like El Niño/La Niña. This skews the benchmarking scores in favor of LPS, which averages out those oscillations.
Constructing a new evaluation
From there, the researchers constructed a new evaluation with more data that address natural climate variability. With this new evaluation, the deep-learning model performed slightly better than LPS for local precipitation, but LPS was still more accurate for temperature predictions.
“It is important to use the modeling tool that is right for the problem, but in order to do that you also have to set up the problem the right way in the first place,” Selin says.
Based on these results, the researchers incorporated LPS into a climate emulation platform to predict local temperature changes in different emission scenarios.
“We are not advocating that LPS should always be the goal. It still has limitations. For instance, LPS doesn’t predict variability or extreme weather events,” Ferrari adds.
Rather, they hope their results emphasize the need to develop better benchmarking techniques, which could provide a fuller picture of which climate emulation technique is best suited for a particular situation.
“With an improved climate emulation benchmark, we could use more complex machine-learning methods to explore problems that are currently very hard to address, like the impacts of aerosols or estimations of extreme precipitation,” Lütjens says.
Ultimately, more accurate benchmarking techniques will help ensure policymakers are making decisions based on the best available information.
The researchers hope others build on their analysis, perhaps by studying additional improvements to climate emulation methods and benchmarks. Such research could explore impact-oriented metrics like drought indicators and wildfire risks, or new variables like regional wind speeds.
###
This research is funded, in part, by Schmidt Sciences, LLC, and is part of the MIT Climate Grand Challenges team for “Bringing Computation to the Climate Challenge.”
END
Simpler models can outperform deep learning at climate prediction
New research shows the natural variability in climate data can cause AI models to struggle at predicting local temperature and rainfall
2025-08-26
ELSE PRESS RELEASES FROM THIS DATE:
Expert on catfishes publishes updated volume on catfish biology and evolution
2025-08-26
LAWRENCE — Few people on Earth know as much about catfishes as University of Kansas researcher Gloria Arratia, who serves as editor and contributor to the just-published first volume of “Catfishes: A Highly Diversified Group” (CRC Press, 2025), a two-volume reference. While the first volume focuses on the fascinating anatomy of catfishes, the second will focus on their evolution and genetic relationships.
Arratia’s new work, co-written by Roberto Reis of Pontifícia Universidade Católica do Rio Grande do Sul in Brazil, reflects the latest understanding of the family tree of Siluriformes (the scientific name for catfishes), ...
Inaugural editorial: the Energy and Environment Nexus
2025-08-26
Introducing Energy & Environment Nexus (E&E Nexus) – a pioneering, open-access platform dedicated to the critical intersection of energy systems and environmental challenges. We explicitly prioritize research exploring the dynamic interplay between energy and the environment, where innovation meets impact.
E&E Nexus Scope Spans Key:
????Interdisciplinary Science of Energy & Environment
????Renewable Energy & Low-Carbon Technologies
????Energy Materials & Nanotechnology
????Solid Waste Resource Utilization
????Pollution Control & ...
As World Alzheimer’s Month approaches, supporting personhood for family members with dementia is key
2025-08-26
One of the great challenges faced by families coping with Alzheimer’s disease and other forms of dementia is learning how to communicate effectively with the person impacted by the disease while also upholding their personhood, or sense of personal value.
A new study from UConn researcher Amanda Cooper – published in time for World Alzheimer’s Month in September and World Alzheimer’s Day on Sept. 21 - offers concrete recommendations on what to do and what not to do to support personhood for a family member living with dementia.
“These ...
Acosta to examine moisture-driven polar ice growth & its impact on global sea level
2025-08-26
Paul Acosta, Assistant Research Professor, Atmospheric, Oceanic and Earth Sciences (AOES), College of Science, will receive funding for the project: “Collaborative Research: Mechanisms of moisture-driven ice growth: a warm Miocene data-model comparison.”
He and his collaborators will use state-of-the-art isotope-enabled general circulation and ice sheet models to test a suite of hypothesized mechanisms for precipitation-driven Antarctic ice growth during the Middle Miocene (17-15 Ma).
The proposed ...
Mount Sinai scientists identify three potent human antibodies against mpox, paving the way for new protective therapies
2025-08-26
A team from the Microbiology Department at the Icahn School of Medicine at Mount Sinai has discovered three powerful monoclonal antibodies from a person who had previously been infected with mpox (formerly known as monkeypox).
These antibodies, which target the viral protein A35, blocked viral spread in laboratory in vitro tests and, most importantly, protected rodents from severe disease and fully prevented death. The findings, published August 22 in Cell, also reveal that humans previously infected with mpox carry high levels of these protective antibodies in their blood, ...
Smarter robot planning for the real world
2025-08-26
Self-driving vehicles, drones, and robotic assistants are transforming industries including transportation, logistics, and health care. With new developments in hardware, AI, and machine learning, these autonomous agents can sense their surroundings with greater accuracy, understand complex environments, and engage in sophisticated reasoning.
But despite such advancements, deploying robots in dynamic, real-world settings—and getting them to do what we want—remains difficult.
“The overarching problem deals with robot capabilities,” says Cristian-Ioan Vasile, an assistant professor of mechanical engineering and mechanics in Lehigh University’s ...
Optimization of biosafety laboratory management via an AI-driven intelligent system
2025-08-26
ChatGPT and other generative AI models have achieved notable progress in natural language processing and generation, showing great potential in the medical field, such as automatically generating medical exam questions and answers, acting as personalized learning assistants, supporting course design, and aiding in medical imaging analysis. These models are also expected to be pivotal in training biosafety laboratory researchers by providing interactive learning experiences.
In this study, a dataset of 62 text-based and 8 image-based biosafety questions was collected ...
Mouse neurons that identify friends in need and friends indeed
2025-08-26
A special set of neurons directs mice’s attention to or away from their peers, depending on the situation. The Kobe University discovery has implications for finding causes for neuropsychiatric conditions such as autism spectrum disorder or schizophrenia.
Social interactions abound with decisions: How much time do we spend with a friend? Do we prioritize time with a friend who looks distressed? Like for all behavior, there are specialized clusters of neurons in the brain that are responsible for fine-tuning such complex behavior, and it is known that developmental defects in these areas are related ...
Why the foam on Belgian beers lasts so long
2025-08-26
Summertime is beer time – even if the consumption of alcoholic beers is declining in Switzerland. And for beer lovers, there is nothing better than a head of foam topping the golden, sparkling barley juice. But with many beers, the dream is quickly shattered, and the foam collapses before you can take your first sip. There are also types of beer, however, where the head lasts a long time.
ETH researchers led by Jan Vermant, Professor of Soft Materials, have now discovered just why this is the case. Their study has just been published in the journal Physics of Fluids. The ...
On tap: What makes beer foams so stable?
2025-08-26
WASHINGTON, August 26, 2025 – Beer is one of the world’s most popular drinks, and one of the clearest signs of a good brew is a big head of foam at the top of a poured glass. Even brewers will use the quality of foam as an indicator of a beer having completed the fermentation process. However, despite its importance, what makes a large, stable foam is not entirely understood.
In Physics of Fluids, from AIP Publishing, researchers from ETH Zurich and Eindhoven University of Technology investigated the stability of beer foams, examining multiple types of beer at different stages of the fermentation process.
Like ...
LAST 30 PRESS RELEASES:
Maternal health program cuts infection deaths by 32%
Use of head CT scans in ERs more than doubles over 15 years
Open spaces in cities may be hotspots for coyote-human interaction
Focused ultrasound passes first test in treatment of pediatric brain cancer
Beef vs. plant-based meat: UT Austin study finds diet alters breast milk composition in under a week
Two new studies from Schneider Electric and the Boston University Institute for Global Sustainability reveal 95 barriers and 50 risks slowing decarbonization in the building sector
Women authors underrepresented among retracted medical papers
Is it light or humidity? Scientists identify the culprits of emerald green degradation in masterpieces
Bandage-like device brings texture to touchscreens
Rocks on faults can heal following seismic movement
Researchers find microplastics in 100 per cent of donkey faecal samples tested
New clues to why some women experience recurrent miscarriage
New data on donor selection in allogeneic stem cell transplantation – young age is gaining in importance
High blood pressure in adolescence a silent risk of atherosclerosis later in life
New study reveals central America’s “five great forests” are lifelines for North America’s migratory birds
American Physical Society to launch new open access journal on AI and machine learning in scientific research
Administrative staff are crucial to university efficiency, but only in teaching-oriented institutions
Studies suggest ambient AI saves time, reduces burnout and fosters patient connection
Lost signal: How solar activity silenced earth's radiation
Genetically engineered fungi are protein packed, sustainable, and taste similar to meat
Tiny antennas to bring electrical power to the un-powerable nanoparticles
Pause and rewind: how the brain keeps time to control action
Lung cancer deaths prevented and life-years gained from lung cancer screening
Physical activity over the adult life course and risk of dementia in the Framingham heart study
Trends in prevalence of adverse childhood experiences among children
Surface-only superconductor is the strangest of its kind
Stereotactic radiosurgery for craniopharyngioma management
Study questions water safety beliefs
Bacteria ‘pills’ could detect gut diseases — without the endoscope
National Cancer Institute grants support efforts to understand how fluid flow drives deadly brain cancer
[Press-News.org] Simpler models can outperform deep learning at climate predictionNew research shows the natural variability in climate data can cause AI models to struggle at predicting local temperature and rainfall