Scientists unveil new and improved ‘skinny donut’ black hole image

Scientists unveil new and improved ‘skinny donut’ black hole image
This picture, released by Institute for Advanced Study, shows the M87 supermassive black hole as it was originally imaged by the EHT in 2019 (L) and the newly generated image using the PRIMO algorithm technology (R). (AFP)
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Updated 13 April 2023
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Scientists unveil new and improved ‘skinny donut’ black hole image

Scientists unveil new and improved ‘skinny donut’ black hole image
  • The M87 black hole image stems from data collected by seven radio telescopes at five locations on Earth

WASHINGTON: The 2019 release of the first image of a black hole was hailed as a significant scientific achievement. But truth be told, it was a bit blurry — or, as one astrophysicist involved in the effort called it, a “fuzzy orange donut.”
Scientists on Thursday unveiled a new and improved image of this black hole — a behemoth at the center of a nearby galaxy — mining the same data used for the earlier one but improving its resolution by employing image reconstruction algorithms to fill in gaps in the original telescope observations.
Hard to observe by their very nature, black holes are celestial entities exerting gravitational pull so strong no matter or light can escape.
The ring of light — that is, the material being sucked into the voracious object — seen in the new image is about half the width of how it looked in the previous picture. There is also a larger “brightness depression” at the center — basically the donut hole — caused by light and other matter disappearing into the black hole.
The image remains somewhat blurry due to the limitations of the data underpinning it — not quite ready for a Hollywood sci-fi blockbuster, but an advance from the 2019 version.
This supermassive black hole resides in a galaxy called Messier 87, or M87, about 54 million light-years from Earth. A light year is the distance light travels in a year, 5.9 trillion miles (9.5 trillion km). This galaxy, with a mass 6.5 billion times that of our sun, is larger and more luminous than our Milky Way.
“I affectionately refer to the previous image as the ‘fuzzy orange donut,’ and have been referring to this image as the ‘skinny donut,’ which sounds incredibly unappetizing. We’ve also discussed ‘diet donut,’ which is equally unappetizing,” said astrophysicist Lia Medeiros of the Institute for Advanced Study in Princeton, New Jersey, lead author of the research published in the Astrophysical Journal Letters.
The study’s four authors are members of the Event Horizon Telescope (EHT) project, the international collaboration begun in 2012 with the goal of directly observing a black hole’s immediate environment. A black hole’s event horizon is the point beyond which anything — stars, planets, gas, dust and all forms of electromagnetic radiation — gets swallowed into oblivion.
Medeiros said she and her colleagues plan to use the same technique to improve upon the image of the only other black hole ever pictured — released last year showing the one inhabiting the Milky Way’s center, called Sagittarius A*, or Sgr A*.
The M87 black hole image stems from data collected by seven radio telescopes at five locations on Earth that essentially create a planet-sized observational dish.
“The EHT is a very sparse array of telescopes. This is something we cannot do anything about because we need to put our telescopes on the tops of mountains and these mountains are few and far apart from each other. Most of the Earth is covered by oceans,” said Georgia Tech astrophysicist and study co-author Dimitrios Psaltis.
“As a result, our telescope array has a lot of ‘holes’ and we need to rely on algorithms that allow us to fill in the missing data,” Psaltis added. “The image we report in the new paper is the most accurate representation of the black hole image that we can obtain with our globe-wide telescope.”
The machine-learning technique they used is called PRIMO, short for “principal-component interferometric modeling.”
“This is the first time we have used machine learning to fill in the gaps where we don’t have data,” Medeiros said. “We use a large data set of high-fidelity simulations as a training set, and find an image that is consistent with the data and also is broadly consistent with our theoretical expectations. The fact that the previous EHT results robustly demonstrated that the image is a ring allows us to assume so in our analysis.”