Read the Beforeitsnews.com story here. Advertise at Before It's News here.
Profile image
By Universe Today (Reporter)
Contributor profile | More stories
Story Views
Now:
Last hour:
Last 24 hours:
Total:

Astronomers Find 116,000 New Variable Stars

% of readers think this story is Fact. Add your two cents.


What do two guys from Ohio, the GAIA mission, a worldwide network of ground-based telescopes, machine learning, and citizen scientists all have to do with each other? Thanks to this interesting combo of people and computers, astronomers now have more than 116,000 new variable stars to study. Until now, they knew of about 46,000 of these stars in the Milky Way Galaxy. They had observed maybe 10,000 or so in other galaxies. The discovery gives astronomers even more chances to study variables and understand why they behave the way they do.

A time-lapse of the star Polaris, which is a Cepheid variable star, showing the cycle of its brightness changes. Courtesy TimWether CC BY-SA 4.0

Ohio State University astronomer Collin Christy and Ph.D. student Tharindu Jayasinghe recently published a paper discussing their discovery of this new trove of variable stars. Christy described the importance of these objects to astronomers. “Variable stars are sort of like a stellar laboratory,” he said in a press release statement. “They’re really neat places in the universe where we can study and learn more about how stars actually work and the little intricacies that they all have.”

Combing through Data to Find Variable Stars

It turns out variables can be somewhat elusive. That’s partly because lots of things flicker in the Universe. Supernovae flare up quickly and fade. Novae do the same thing. These don’t happen on a predictable basis, though. Variables, however, brighten and dim quite regularly. Some are bright and quite obvious, like the star Polaris (our North Star) or the variable Algol in the constellation Perseus. Others, like the Sun, change in brightness so slightly that their activity takes special techniques to measure. So, what’s a good way to sort variables out from the other things that go “blink” in the night?

It helps to start out with data about a lot of stars. Christy and collaborator Jayasinghe accessed a catalog of stellar information from the space-based GAIA mission. They also used data from the 2 Micron All Sky Survey (2MASS) and ALLWISE (a wide-field infrared data repository from the WISE mission). That gave them a huge database of stars to sift through looking for targets. It also presented a big challenge. “If you want to look at millions of stars, it’s impossible for a few humans to do it by themselves. It’ll take forever,” said Jayasinghe. “So we had to bring something creative into the mix, like machine learning techniques.”

Handling that much survey data is a process tailor-made for machine learning and artificial intelligence. Computers can run through data fairly quickly, but they need good data. The human touch was still necessary because some of the data were bad, which confused the machine learning algorithms.

Separating JUNK from Variables

Citizen scientists stepped in to help identify information about objects that weren’t variable stars. This data became known as the “JUNK data.” Christy noted this phase of the project was absolutely essential. “Having people tell us what our bad data looks like is super useful because initially, the algorithm would look at the bad data and try to make sense of it,” Christy said.

Eventually, between sorting out the JUNK data and running verified information through machine learning, the astronomers had about 400,000 variables to observe. The team turned to the All-Sky Automated Survey for Supernovae (ASAS-SN) telescope network to observe the variable star candidates. The survey’s ground-based telescopes were fitted with blue-sensitive g-band filters to look for the variables. More than half were already known to astronomers, but an amazing 116,027 of them turned out to be new discoveries.

The ASAS-SN deployed telescopes like this in the search for new variable stars. Courtesy ASAS-SN Survey.

The JUNK datasets now modify and improve the algorithms in the machine learning program. “This is the first time that we’re actually combining citizen science with machine learning techniques in the field of variable star astronomy,” said Jayasinghe. “We’re expanding the boundaries of what you can do when you put those two together.”

Variable Stars: Some Background

It turns out most stars are variables. Astronomers want to know why. Variability is a major clue to activity inside or on the surface of a star throughout its life. It might swell and then shrink on a regular schedule. That, of course, changes its luminosity. It could have a big star spot that causes the star to look dim as it rotates. Stars that vary due to those processes are called “intrinsic” variables.

A star could also change brightness due to something happening around it. It might go dim because something is orbiting it. That could be a nearby companion star. Or, it might have a huge planet that blocks the star’s light as it orbits. Such a star is called an “extrinsic” variable because something outside of it is causing its brightness to vary.

Studying and Classifying Variable Stars

Astronomers study variables using several methods. Of course, they look at them in visible light. They can also use photometry (which measures brightness fluctuations). Spectroscopy (which breaks the light from a variable into its component wavelengths) gives information about the star’s temperature, rotation rate, and other characteristics. These and other techniques allow astronomers to classify variables into a number of subsets, such as Cepheids, Miras, eclipsing binaries, double stars, and others.

The variable star Mira (red star upper right) varies in brightness over more than 100 days. It’s a pulsating red giant that will eventually become a planetary nebula. Courtesy ESO/Digital Sky Survey.

There is also a large group of amateur observers who measure the changing brightness of variables. These folks regularly produce very competent data sets tracking maximum and minimum brightnesses of such stars. Many of these citizen scientists are affiliated with the American Association of Variable Star Observers (AAVSO). Some also work as part of a citizen science program affiliated with the ASAS-SN survey.

Variable Stars: from Bad Luck to Good Science

Variables have been known and observed since antiquity. There’s some interesting evidence that ancient Egyptian skywatchers used the weirdly varying brightness of the star Algol to predict “unlucky” days. Presumably, they used this information to advise the Pharaoh and other members of the nobility. That same variability was noticed by other cultures and many seemed to associate it with a calamity of some kind.

Fast-forward a couple of thousand years, and the scientific nature of variable stars interested astronomers. The first serious studies of variables began in the 1600s and continue to this day. As an example of what we now know, Algol is really an eclipsing binary in a three-star system. Two of the stars orbit a common point, and one regularly passes in front of the other. That causes Algol to periodically brighten and dim.

In the 20th century, astronomer Henrietta Leavitt charted the periods of brightening and dimming of nearly 2,000 variable stars. That included nearly 50 Cepheid variables. (Cepheids are named after the star Delta Cephei, which is the prototype of certain variables that expand and shrink (and thus brighten and dim) on a very regular schedule.) Leavitt used her data to develop the period-luminosity law. That links the luminosity of a pulsating variable to its pulsation period. Using that law, astronomers can use variable stars, especially Cepheids, as “standard candles” to calculate distances in space.

Variable Stars Expand Our Perception of the Universe

Astronomer Edwin Hubble cited Leavitt’s work when he published his observations of a Cepheid variable in the “Andromeda Nebula” (as that galaxy was then known). His discovery established the distance to Andromeda and opened up our understanding of cosmic distances in the Universe. It wouldn’t have been possible without precise studies of variable stars.

Leavitt’s and Hubble’s work basically opened up the cosmos for us. With the combo of machine learning, big surveys, citizen science, and other tools of astronomy, the field of variable star study will continue to expand our understanding of these flickering stellar lights in the dark.

For more Information

Astronomers Identify 116,000 New Variable Stars

Citizen ASAS-SN at Zooniverse

The ASAS-SN Catalog of Variable Stars X: Discovery of 116,000 New Variable Stars Using g-band Photometry

The post Astronomers Find 116,000 New Variable Stars appeared first on Universe Today.


Source: https://www.universetoday.com/156131/astronomers-find-116000-new-variable-stars/


Before It’s News® is a community of individuals who report on what’s going on around them, from all around the world.

Anyone can join.
Anyone can contribute.
Anyone can become informed about their world.

"United We Stand" Click Here To Create Your Personal Citizen Journalist Account Today, Be Sure To Invite Your Friends.

Humic & Fulvic Liquid Trace Mineral Complex

HerbAnomic’s Humic and Fulvic Liquid Trace Mineral Complex is a revolutionary New Humic and Fulvic Acid Complex designed to support your body at the cellular level. Our product has been thoroughly tested by an ISO/IEC Certified Lab for toxins and Heavy metals as well as for trace mineral content. We KNOW we have NO lead, arsenic, mercury, aluminum etc. in our Formula. This Humic & Fulvic Liquid Trace Mineral complex has high trace levels of naturally occurring Humic and Fulvic Acids as well as high trace levels of Zinc, Iron, Magnesium, Molybdenum, Potassium and more. There is a wide range of up to 70 trace minerals which occur naturally in our Complex at varying levels. We Choose to list the 8 substances which occur in higher trace levels on our supplement panel. We don’t claim a high number of minerals as other Humic and Fulvic Supplements do and leave you to guess which elements you’ll be getting. Order Your Humic Fulvic for Your Family by Clicking on this Link , or the Banner Below.



Our Formula is an exceptional value compared to other Humic Fulvic Minerals because...


It’s OXYGENATED

It Always Tests at 9.5+ pH

Preservative and Chemical Free

Allergen Free

Comes From a Pure, Unpolluted, Organic Source

Is an Excellent Source for Trace Minerals

Is From Whole, Prehisoric Plant Based Origin Material With Ionic Minerals and Constituents

Highly Conductive/Full of Extra Electrons

Is a Full Spectrum Complex


Our Humic and Fulvic Liquid Trace Mineral Complex has Minerals, Amino Acids, Poly Electrolytes, Phytochemicals, Polyphenols, Bioflavonoids and Trace Vitamins included with the Humic and Fulvic Acid. Our Source material is high in these constituents, where other manufacturers use inferior materials.


Try Our Humic and Fulvic Liquid Trace Mineral Complex today. Order Yours Today by Following This Link.

Report abuse

    Comments

    Your Comments
    Question   Razz  Sad   Evil  Exclaim  Smile  Redface  Biggrin  Surprised  Eek   Confused   Cool  LOL   Mad   Twisted  Rolleyes   Wink  Idea  Arrow  Neutral  Cry   Mr. Green

    MOST RECENT
    Load more ...

    SignUp

    Login

    Newsletter

    Email this story
    Email this story

    If you really want to ban this commenter, please write down the reason:

    If you really want to disable all recommended stories, click on OK button. After that, you will be redirect to your options page.