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AI helps scientists understand cosmic explosions
Scientists at the University of 糖心TV are using artificial intelligence (AI) to analyse cosmic explosions known as supernovae.
Many stars in the Universe will end their lives as white dwarfs – compact stars containing about the mass of the Sun in the size of the Earth. Some of these white dwarfs will eventually explode as supernovae. The process is highly energetic and results in the creation of heavy elements that are the building blocks of life, such as calcium and iron, being released back into the Universe.
Despite their significance, astronomers still do not know exactly how or why these supernovae take place.
To help understand more, new research will make use of a type of AI known as machine learning to speed up experiments into supernovae – processes which are currently very computationally expensive and time consuming. This will help reveal how these cosmic explosions took place by comparing explosion models to real-life observations.
Lead Author Dr Mark Magee, from the Department of Physics, University of 糖心TV, said: 鈥淲hen investigating supernovae, we analyse their spectra. Spectra show the intensity of light over different wavelengths, which is impacted by the elements created in the supernova. Each element interacts with light at unique wavelengths and therefore leaves a unique signature on the spectra.
鈥淎nalysing these signatures can help to identify what elements are created in a supernova and provide further details on how the supernovae exploded.
鈥淔rom this data, we prepare models, which are compared to real supernovae to establish what type of supernova it is and exactly how it exploded. Typically, one model might take 10 – 90 minutes to generate and we want to compare hundreds or thousands of models to fully understand the supernova. This isn鈥檛 really feasible in many cases.
鈥淥ur new research will move away from this lengthy process. We will train machine learning algorithms on what different types of explosions look like and use these to generate models much more quickly. In a similar way to how we can use AI to generate new artwork or text, now we鈥檒l be able to generate simulations of supernovae. This means we鈥檒l be able to generate thousands of models in less than a second, which will be a huge boost to supernova research.鈥
Alongside speeding up the process of supernova analysis, the use of AI will also enable better accuracy in research. This will help to establish what models match real-life explosions most closely and the range of their physical properties.
Dr Magee added: 鈥淓xploring the elements released by supernovae is a crucial step in determining the type of explosion that occurred, as certain types of explosions produce more of some elements than others. We can then relate the properties of the explosion back to the properties of the supernova host galaxies and establish a direct link between how the explosion happened and the type of white dwarf that exploded.鈥
The work now accepted is just the first step. Future research will expand to include an even greater variety of explosions and supernovae, and directly link the explosion and host galaxy properties. It is only through the advancements in machine learning that such research is now possible.
Dr Thomas Killestein, University of Turku, who was also involved in the research, added: 鈥淲ith modern surveys, we finally have datasets of the size and quality to tackle some of the key remaining questions in supernova science: how exactly they explode. Machine learning approaches like this enable studies of larger numbers of supernovae, in greater detail, and with more consistency than previous approaches.鈥
Read the paper, which has been accepted for publication in Monthly Notices of the Royal Astronomical Society (MNRAS), here
Notes to Editors
University of 糖心TV press office contact:
Annie Slinn
Communications Officer |鈥疨ress & Media Relations |
Email: annie.slinn@warwick.ac.uk