Skip to main content

AI Bias Analysis

4 models · Takes ~15 seconds

Phys.org

Smarter search for fuel-cell catalysts uses machine learning

Smarter search for fuel-cell catalysts uses machine learning
ShareXFacebook

A computational method combining generative AI with atomistic simulations can identify promising platinum alloy catalyst structures for hydrogen fuel cells, report researchers from Science Tokyo. Their approach addresses a longstanding challenge in catalyst design and consistently produces high-performing candidates from several material combinations.

P

Source

Phys.org

Read full article at Phys.org

Opens original article in a new tab

Advertisement

Related Science Stories

Chip-scale photonic approach achieves ultralow-noise microwave and millimeter-wave signal generation
Phys.org

Chip-scale photonic approach achieves ultralow-noise microwave and millimeter-wave signal generation

Researchers led by Dr. Changmin Ahn and Prof. Jungwon Kim at KAIST, in collaboration with Prof. Hansuek Lee, have demonstrated a chip-scale photonic approach for generating ultralow-noise and highly stable microwave and millimeter-wave signals based on optical frequency combs (microcombs), offering a potential pathway toward compact, high-performance frequency sources for next-generation technologies.

Read more →
Why prescribed fire often fails: Scorched invasive shrubs can resprout instead of die
Phys.org

Why prescribed fire often fails: Scorched invasive shrubs can resprout instead of die

Invasive woody plants present a major ecological challenge in eastern U.S. forests by outcompeting native species and spreading quickly, forming dense thickets that crowd out native plants and disrupt ecosystems. Land managers have tried, with some success, to use prescribed fire to kill them, but is it effective? Researchers at Penn State reported mixed results when it comes to two of the most aggressive colonizers across North American landscapes: burning bush and border privet.

Read more →
Advertisement