
Wide area survey data can be used to study the large-scale structure of the Universe through measurements of gravitational lensing patterns. In gravitational lensing, the gravity of a foreground object, like a cluster of galaxies, can distort the image of a background object, such as a more distant galaxy. Some examples of gravitational lensing are obvious, such as the "Eye of Horus". The large-scale structure, consisting mostly of mysterious "dark" matter, can distort the shapes of distant galaxies as well, but the expected lensing effect is subtle. Averaging over many galaxies in an area is required to create a map of foreground dark matter distributions.
But this technique of looking at many galaxy images runs into a problem; some galaxies are just innately a little funny looking. It is difficult to distinguish between a galaxy image distorted by gravitational lensing and a galaxy that is actually distorted. This is referred to as shape noise and is one of the limiting factors in research studying the large-scale structure of the Universe.
To compensate for shape noise, a team of Japanese astronomers first used ATERUI II, the world's most powerful supercomputer dedicated to astronomy, to generate 25,000 mock galaxy catalogs based on real data from the Subaru Telescope. They then added realist noise to these perfectly known artificial data sets, and trained an AI to statistically recover the lensing dark matter from the mock data.
After training, the AI was able to recover previously unobservable fine details, helping to improve our understanding of the cosmic dark matter. Then using this AI on real data covering 21 square degrees of the sky, the team found a distribution of foreground mass consistent with the standard cosmological model.
"This research shows the benefits of combining different types of research: observations, simulations, and AI data analysis." comments Masato Shirasaki, the leader of the team, "In this era of big data, we need to step across traditional boundaries between specialties and use all available tools to understand the data. If we can do this, it will open new fields in astronomy and other sciences."
These results appeared as Shirasaki et al. "Noise reduction for weak lensing mass mapping: an application of generative adversarial networks to Subaru Hyper Suprime-Cam first-year data" in the June 2021 issue of Monthly Notices of the Royal Astronomical Society.



Reader Comments
cheers
i think that the consciousness one possesses is within and without; however, a.i. is artificial, it's like an organic portal, i.e. no soul.
cheers
It puts a whole new slant of why they might want to push their EGT - if it proves successful, we will have to start referring it by some other acronym, maybe ZGT (Zombie Gene Therapy)
" You can ignore reality, but you cannot ignore the consequences of ignoring reality", as one wise man once said.
These guys are simply using the methodology learned from the AGW crowd and applying it to another field.
Any relation to Robert Jenks of St Johnsburry Vermont?
The admiral and I get along fine.
Ass, mine - supplemented with buttermilk.
Want truth? Call it grant grubbing.
RC
Major fire breaks out at Ocado warehouse after three robots collide - [Link]
There's got to be a witty headline or punch line about that.
Here's a suggestion: RC