AI Models Exoplanet Atmospheres
This is a news story, published by ScienceDaily, that relates primarily to LMU Munich news.
physics news
For more physics news, you can click here:
more physics newsScienceDaily news
For more news from ScienceDaily, you can click here:
more news from ScienceDailyAbout the Otherweb
Otherweb, Inc is a public benefit corporation, dedicated to improving the quality of news people consume. We are non-partisan, junk-free, and ad-free. We use artificial intelligence (AI) to remove junk from your news feed, and allow you to select the best science news, business news, entertainment news, and much more. If you like physics news, you might also like this article about
exoplanetary atmospheres. We are dedicated to bringing you the highest-quality news, junk-free and ad-free, about your favorite topics. Please come every day to read the latest exoplanet research news, observed exoplanets news, physics news, and other high-quality news about any topic that interests you. We are working hard to create the best news aggregator on the web, and to put you in control of your news feed - whether you choose to read the latest news through our website, our news app, or our daily newsletter - all free!
exoplanet atmospheresScienceDaily
•Astrophysics: AI shines a new light on exoplanets
79% Informative
Researchers from LMU Munich have made an important breakthrough in the analysis of exoplanet atmospheres.
Using physics-informed neural networks (PINNs), they have managed to model the complex light scattering in the atmospheres of distant planets with greater precision than has previously been possible.
The method opens up new opportunities for the analysis.
It could significantly improve our understanding of these distant worlds.
VR Score
89
Informative language
98
Neutral language
24
Article tone
formal
Language
English
Language complexity
76
Offensive language
not offensive
Hate speech
not hateful
Attention-grabbing headline
not detected
Known propaganda techniques
not detected
Time-value
long-living
External references
no external sources
Source diversity
no sources
Affiliate links
no affiliate links