Difference between revisions of "Astronomy"

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|description=Helpful resources for your journey with artificial intelligence; videos, articles, techniques, courses, profiles, and tools  
 
|description=Helpful resources for your journey with artificial intelligence; videos, articles, techniques, courses, profiles, and tools  
 
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}}
[http://www.youtube.com/results?search_query=planet+space+asteroid+satellite+artificial+intelligence+deep+learning Youtube search...]
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[http://www.youtube.com/results?search_query=planet+galaxy+space+asteroid+satellite+Dark+Matter+earth+moon+universe+artificial+intelligence+deep+machine+learning Youtube search...]
[http://www.google.com/search?q=planet+space+asteroid+satellite+deep+machine+learning+ML ...Google search]
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[http://www.google.com/search?q=planet+galaxy+space+asteroid+satellite+Dark+Matter+earth+moon+universe+artificial+intelligence+deep+machine+learning ...Google search]
[http://news.google.com/search?q=planet+space+asteroid+satellite+artificial+intelligence News search...]
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[http://news.google.com/search?q=planet+galaxy+space+asteroid+satellite+Dark+Matter+earth+moon+universe+artificial+intelligence+deep+machine+learning News search...]
  
 
* [[Capabilities]]  
 
* [[Capabilities]]  
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<youtube>ZyjCqQEUa8o</youtube>
 
<youtube>ZyjCqQEUa8o</youtube>
  
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= Dark Matter =
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[http://www.youtube.com/results?search_query=Dark+Matter+artificial+intelligence+deep+machine+learning Youtube search...]
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[http://www.google.com/search?q=Dark+Matter+artificial+intelligence+deep+machine+learning ...Google search]
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[http://news.google.com/search?q=Dark+Matter+artificial+intelligence+deep+machine+learning News search...]
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* [http://phys.org/news/2019-05-cosmogan-neural-network-dark.html CosmoGAN: Training a neural network to study dark matter | Kathy Kincade - Lawrence Berkeley National Laboratory]
  
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<youtube>vAtzPKKBqUw</youtube>
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<youtube>lCxYejIzJus</youtube>
  
<youtube>lxqfnLlNibk</youtube>
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= Galaxy Evolution =
<youtube>YPkeSnVwg9k</youtube>
 
 
<youtube>QAdKthUOG5g</youtube>
 
<youtube>QAdKthUOG5g</youtube>
<youtube>UOWXRBX-z4s</youtube>
 
<youtube>W4PkmcWuaio</youtube>
 
 
<youtube>2ncpI5T7BOQ</youtube>
 
<youtube>2ncpI5T7BOQ</youtube>
<youtube>vAtzPKKBqUw</youtube>
 
<youtube>lCxYejIzJus</youtube>
 
  
 
= Galaxies =
 
= Galaxies =
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* [http://www.universetoday.com/147501/machine-learning-just-classified-over-half-a-million-galaxies/ Machine Learning Just Classified Over Half a Million Galaxies | Andy Tomaswick - Universe Today] ...scientists trained the algorithm using images of spiral-patterned galaxies similar to the Milky Way. When used on the test set, the algorithm accurately classified 95.7 percent of galaxies.  
 
* [http://www.universetoday.com/147501/machine-learning-just-classified-over-half-a-million-galaxies/ Machine Learning Just Classified Over Half a Million Galaxies | Andy Tomaswick - Universe Today] ...scientists trained the algorithm using images of spiral-patterned galaxies similar to the Milky Way. When used on the test set, the algorithm accurately classified 95.7 percent of galaxies.  
  
= Dark Matter =
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<youtube>lxqfnLlNibk</youtube>
* [http://phys.org/news/2019-05-cosmogan-neural-network-dark.html CosmoGAN: Training a neural network to study dark matter | Kathy Kincade - Lawrence Berkeley National Laboratory]
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<youtube>UOWXRBX-z4s</youtube>
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<youtube>W4PkmcWuaio</youtube>
  
 
= Planets =
 
= Planets =
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<youtube>jnJnKQ6BBZU</youtube>
 
<youtube>jnJnKQ6BBZU</youtube>
 
<youtube>V_rcLEBW1ro</youtube>
 
<youtube>V_rcLEBW1ro</youtube>
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<youtube>YPkeSnVwg9k</youtube>
  
 
= Earth =
 
= Earth =

Revision as of 08:52, 27 August 2020

Youtube search... ...Google search News search...

Dark Matter

Youtube search... ...Google search News search...

Galaxy Evolution

Galaxies

Galaxy Classification

Planets

Earth

Surface

Man-made (artificial) Satellites

  • Inside GNSS; covers the global navigation satellite systems: GPS, Galileo, GLONASS, BeiDou, regional and augmentation systems and related technologies. ...Subscribe


Asteroids


Collision Avoidance in Space


Challenge: Today, active collision avoidance among orbiting satellites has become a routine task in space operations, relying on validated, accurate and timely space surveillance data. For a typical satellite in Low Earth Orbit, hundreds of alerts are issued every week corresponding to possible close encounters between a satellite and another space object (in the form of conjunction data messages CDMs). After automatic processing and filtering, there remain about 2 actionable alerts per spacecraft and week, requiring detailed follow-up by an analyst. On average, at the European Space Agency, more than one collision avoidance manoeuvre is performed per satellite and year. In this challenge, you are tasked to build a model to predict the final collision risk estimate between a given satellite and a space object (e.g. another satellite, space debris, etc). To do so, you will have access to a database of real-world conjunction data messages (CDMs) carefully prepared at ESA. Learn more about the challenge and the data.


Results: Spacecraft collision avoidance procedures have become an essential part of satellite operations. Complex and constantly updated estimates of the collision risk between orbiting objects inform the various operators who can then plan risk mitigation measures. Such measures could be aided by the development of suitable machine learning models predicting, for example, the evolution of the collision risk in time. ...This paper describes the design and results of the competition and discusses the challenges and lessons learned when applying machine learning methods to this problem domain. Spacecraft Collision Avoidance Challenge: design and results of a machine learning competition | T. Uriot, D. Izzo, L. Simoes, R. Abay, N. Einecke, S. Rebhan, J. Martinez-Heras, F. Letizia, J. Siminski, and K. Merz


Simulation