
When you buy through links on our articles, Future and its syndication partners may earn a commission.
Astronomers have discovered over 100 new worlds beyond the solar system hiding in data collected by NASA's exoplanet-hunting spacecraft TESS (Transiting Exoplanet Survey Satellite), and it's thanks to artificial intelligence. The technique also identified a further 2,000 or so candidate extrasolar planets, or exoplanets, around half of which were hitherto undetected.
Considering that there are around 6,000 exoplanets currently in NASA's exoplanet catalog, confirming those candidate worlds would represent a major boost in our hunt for planets around other stars. The innovative new AI program behind this discovery is called RAVEN, and was developed by researchers at the University of Warwick in the U.K.
TESS spots exoplanets by recording the tiny dips in starlight they cause when they pass in front of the face of the parent star, a passage called a "transit." RAVEN studied TESS observations of over 2.2 million stars collected during the NASA spacecraft's first four years, hunting for planets so close to their home stars that they complete an orbit in just 16 Earth days. The AI pipeline could therefore help to confirm how common these tight-orbit planets are and the kind of systems in which they are most often found.
"This represents one of the best characterized samples of close-in planets and will help us identify the most promising systems for future study," team leader Marina Lafarga Magro of the University of Warwick said in a statement.
RAVEN's eagle eye is scanning the Neptunian desert
Since the first exoplanets were discovered in the mid-1990s, the exoplanet catalog has burgeoned to over 6,000 confirmed entries, but thousands of candidates identified by exoplanet-hunting space missions like TESS, Kepler and CHEOPS (Characterizing Exoplanet Satellite) remain unconfirmed.
That is because scientists need to determine whether small dips in starlight are actually caused by transiting exoplanets or if they have another, non-planetary cause. This means making these confirmations more rapidly and confidently is a major challenge that astronomers are eager to ease.
"The challenge lies in identifying if the dimming is indeed caused by a planet in orbit around the star or by something else, like eclipsing binary stars, which is what RAVEN tries to answer," RAVEN head developer Andreas Hadjigeorghiou of the University of Warwick said in the statement. "Its strength stems from our carefully created dataset of hundreds of thousands of realistically simulated planets and other astrophysical events that can masquerade as planets."
Hadjigeorghiou developer explained that the team trained machine learning models to identify patterns in the data that can tell astronomers the type of event that has been detected, something that AI models excel at. RAVEN is designed to handle the whole exoplanet-detection process in one go — from detecting the signal to vetting it with machine learning and then statistically validating it. That means that it has an additional edge over other contemporary tools that only focus on specific parts of this process, Hadjigeorghiou said.
"RAVEN allows us to analyze enormous datasets consistently and objectively," senior team member and University of Warwick researcher David Armstrong said in the statement. "Because the pipeline is well-tested and carefully validated, this is not just a list of potential planets — it is also reliable enough to use as a sample to map the prevalence of distinct types of planets around sun-like stars."
Within the candidate close-in planets, researchers could then determine the types of planets and their populations in detail. This revealed that around 10% of stars like the sun host a close-in planet, validating findings made by TESS's exoplanet-hunting predecessor Kepler.
RAVEN was also able to help researchers determine just how rare close-in Neptune-size worlds are, finding that they occur around just 0.08% of sun-like stars. This absence of these worlds close to their parent star is referred to as the "Neptunian desert" by astronomers.
"For the first time, we can put a precise number on just how empty this 'desert' is," leader of the Neptunian desert study team, Kaiming Cui of the University of Warwick said in the statement. "These measurements show that TESS can now match, and in some cases surpass, Kepler for studying planetary populations."
The RAVEN results demonstrate the power of AI to search through vast swathes of astronomical data to spot subtle effects.
The team's research was published across three papers in the journal Monthly Notices of the Royal Astronomical Society and is also available on the paper repository site arXiv.
LATEST POSTS
- 1
The most effective method to Decisively Use Open Record Rewards - 2
Nurturing Hacks: Astuteness from Experienced Mothers and Fathers - 3
Ober Gabelhorn glacier reveals remains of man missing for over three decades - 4
Europe pledges over €15bn for clean energy for Africa - 5
NASA astronauts to return from space early due to an 'unexpected medical issue.' What happened — and when are they coming home?
Iranian-backed militias escalate in Iraq, targeting Kurdistan Region president Nechirvan Barzani
Senior's Manual for Obtaining a Hyundai Ioniq EV: Tips
Where should we send a real 'Hail Mary' spacecraft? A new study has the answers
Hubble Space Telescope spies dusty debris from two cosmic collisions
Canada's Friendly Sunshine Coast City Is An Outdoor Playground Perfect For Hiking And Paddling
Blue Origin launches New Glenn rocket on company's first NASA-scale science mission
Japanese H3 rocket fails during launch of navigation satellite (video)
Hundreds of Intact Dinosaur Eggs Emerge From 72-Million-Year Time Capsule
Nature: 10 High priority Setting up camp Spots In Europe













