Close Menu
clearpathinsight.org
  • AI Studies
  • AI in Biz
  • AI in Tech
  • AI in Health
  • Supply AI
    • Smart Chain
    • Track AI
    • Chain Risk
  • More
    • AI Logistics
    • AI Updates
    • AI Startups

Physical AI does not replace farmers. It keeps them active

April 22, 2026

Supply Chain Risk and Resilience

April 22, 2026

How AI is helping Fonterra work differently within the cooperative

April 22, 2026
Facebook X (Twitter) Instagram
Facebook X (Twitter) Instagram
clearpathinsight.org
Subscribe
  • AI Studies
  • AI in Biz
  • AI in Tech
  • AI in Health
  • Supply AI
    • Smart Chain
    • Track AI
    • Chain Risk
  • More
    • AI Logistics
    • AI Updates
    • AI Startups
clearpathinsight.org
Home»AI in Technology»AI breakthrough could replace rare earth magnets in electric vehicles
AI in Technology

AI breakthrough could replace rare earth magnets in electric vehicles

February 20, 2026053 Mins Read
Share Facebook Twitter Pinterest Copy Link LinkedIn Tumblr Email Telegram WhatsApp
Follow Us
Google News Flipboard
Modern electric vehicle at charging station.webp.webp
Share
Facebook Twitter LinkedIn Pinterest Email Copy Link

Scientists at the University of New Hampshire are using artificial intelligence to accelerate the search for advanced magnetic materials. Their work produced a searchable resource containing 67,573 magnetic compounds, including 25 materials that had not previously been recognized as magnets capable of remaining magnetic at high temperatures.

“By accelerating the discovery of sustainable magnetic materials, we can reduce reliance on rare earth elements, lower the cost of electric vehicles and renewable energy systems, and strengthen the U.S. manufacturing base,” said Suman Itani, lead author and doctoral student in physics.

A massive database of magnetic materials

The new resource, called the Northeast Materials Database, makes it easier for scientists to explore materials essential to modern technology. Magnets are essential components of smartphones, medical devices, generators, electric vehicles and many other everyday systems. However, today’s strongest magnets rely on rare earth elements that are expensive, widely imported and increasingly difficult to obtain. Despite the large number of known magnetic compounds, no entirely new permanent magnets have been identified in this pool.

The study, published in Natural communicationsdescribes how the team developed an AI system capable of reading scientific articles and extracting important experimental data. This information was then used to train computer models to determine whether a material is magnetic and to calculate the temperature at which it loses its magnetism. The results have been organized into a comprehensive, searchable database.

Reduce the need for rare earth elements

Researchers have long understood that many magnetic materials likely remain unknown. Yet testing all possible combinations of elements, which could number in the millions, would take a huge amount of time and money in the laboratory.

“We are tackling one of the toughest challenges in materials science – discovering sustainable alternatives to permanent magnets – and we are optimistic that our experimental database and growing AI technologies will make this goal achievable,” said Jiadong Zang, professor of physics and co-author.

Expanding the role of AI in science and education

The research team also includes co-author Yibo Zhang, a postdoctoral researcher in physics and chemistry. Looking ahead, scientists believe the large language model used in this project could serve purposes beyond building this database, particularly in higher education. For example, the technology could convert images into modern rich text formats, helping to update and preserve library collections.

The project received support from the Office of Basic Energy Sciences, Division of Materials Sciences and Engineering, US Department of Energy.

Follow on Google News Follow on Flipboard
Share. Facebook Twitter Pinterest LinkedIn Tumblr Email Copy Link

Related Posts

HII partners with GrayMatter Robotics to integrate physical AI into manned and unmanned shipbuilding

April 9, 2026

To succeed with AI, you need to master the basics

April 9, 2026

Retailers are integrating AI into their stores in different ways

April 9, 2026
Add A Comment
Leave A Reply Cancel Reply

Categories
  • AI Applications & Case Studies (70)
  • AI in Business (413)
  • AI in Healthcare (327)
  • AI in Technology (401)
  • AI Logistics (52)
  • AI Research Updates (131)
  • AI Startups & Investments (338)
  • Chain Risk (98)
  • Smart Chain (116)
  • Supply AI (108)
  • Track AI (70)

Physical AI does not replace farmers. It keeps them active

April 22, 2026

Supply Chain Risk and Resilience

April 22, 2026

How AI is helping Fonterra work differently within the cooperative

April 22, 2026

How supply chain disruptions are reshaping the future of startups

April 22, 2026

Subscribe to Updates

Get the latest news from clearpathinsight.

Topics
  • AI Applications & Case Studies (70)
  • AI in Business (413)
  • AI in Healthcare (327)
  • AI in Technology (401)
  • AI Logistics (52)
  • AI Research Updates (131)
  • AI Startups & Investments (338)
  • Chain Risk (98)
  • Smart Chain (116)
  • Supply AI (108)
  • Track AI (70)
Join us

Subscribe to Updates

Get the latest news from clearpathinsight.

We are social
  • Facebook
  • Twitter
  • Pinterest
  • Instagram
  • YouTube
  • Reddit
  • Telegram
  • WhatsApp
Facebook X (Twitter) Instagram Pinterest
© 2026 Designed by clearpathinsight

Type above and press Enter to search. Press Esc to cancel.