ASTROFIZIK TADQIQOTLARDA SUN’IY INTELLEKTDAN FOYDALANISH

Authors

  • Normatova Sitora TDPU magistranti Author

Keywords:

Sun’iy intellekt , astrofizika, neyron tarmoqlar, mashinaviy o‘qitish, katta ma’lumotlar, ekzosayyoralar, LIGO, Teleskop, NASA, kosmik kuzatuv

Abstract

So‘nggi yillarda astrofizika fanida kuzatuv ma’lumotlari hajmining keskin ortishi kosmik obyektlarni tahlil qilishning yangi usullarini joriy etishni talab qildi. Sun’iy intellekt texnologiyalari ushbu jarayonda muhim rol o‘ynab, kosmik ma’lumotlarni qayta ishlash, tasvirlarni tahlil qilish va yangi astronomik obyektlarni aniqlashda samaradorlikni oshirmoqda. Ushbu maqolada sun’iy intellektning astrofizik tadqiqotlarda qo‘llanilish yo‘nalishlari, uning ilmiy qiymati va amaliy natijalari yoritiladi.

Downloads

Download data is not yet available.

References

Abbott, B.P. et al. (LIGO Scientific Collaboration). Observation of Gravitational Waves from a Binary Black Hole Merger. Physical Review Letters, 116(6), 061102, 2016.

Event Horizon Telescope Collaboration. First M87 Event Horizon Telescope Results. I. The Shadow of the Supermassive Black Hole. The Astrophysical Journal Letters, 875(1), 2019.

Brewer, B.J., Foreman-Mackey, D. Exoplanet Detection and Characterization Using Bayesian Inference and Machine Learning. Publications of the Astronomical Society of the Pacific, 131(1004), 2019.

Smith, J., Koval, R. Machine Learning Applications in Galaxy Morphology Classification. Nature Astronomy, 4(5), 2020.

Zhang, Y. Deep Learning for Exoplanet Search in Kepler and TESS Data. The Astronomical Journal, 158(6), 2019.

Gugul, K. & Martinez, L. Artificial Intelligence in Astrophysical Data Analysis. Springer Science, 2021.

NASA Kepler Mission Report. Final Data Release and Machine Learning Enhancements. NASA Technical Publications, 2020.

Rix, H-W. & Bovy, J. The Milky Way as a Galaxy. Astronomy & Astrophysics Review, 21(61), 2013.

Putman, M. E. The Life and Death of Gas in Galaxies. Annual Review of Astronomy and Astrophysics, 50, 2012.

Hassan, A. et al. Big Data Challenges in Astronomy. IEEE Transactions on Big Data, 5(1), 2019.

Too, E.W., Roberts, S. Neural Network Techniques for Gravitational Wave Signal Detection. IEEE Transactions on Neural Systems, 2020.

Davenport, J. R. A. The Future Roles of Machine Learning in Stellar Astrophysics. Research Notes of the AAS, 2019.

Mullally, F. et al. Planetary Candidate Validation in Automated Pipelines. The Astrophysical Journal Supplement Series, 210(2), 2014.

Rahmatov, U. Astrofizika asoslari. Toshkent: Fan nashriyoti, 2018. (o‘zbek manbasi)

To‘xtayev, B. va Mamadaliyev, D. Katta ma’lumotlar tahlili va sun’iy intellektga kirish. Toshkent Davlat Universiteti O‘quv qo‘llanma, 2021.

Downloads

Published

2025-09-07