ISSIQLIK ELEKTR STANSIYALARI ISHINI SUN’IY INTELLEKT ORQALI BASHORAT QILISH VA YAXSHILASH

ISSIQLIK ELEKTR STANSIYALARI ISHINI SUN’IY INTELLEKT ORQALI BASHORAT QILISH VA YAXSHILASH

Authors

  • Ixtiyorjon Axmadjonov
  • Dilnoza Umurzakova

DOI:

https://doi.org/10.5281/zenodo.19995465

Keywords:

energiya tizimlari, elektr stansiyalari, mashinani o‘rganish, sun’iy intellekt, energiyani optimallashtirish

Abstract

Ushbu maqolada issiqlik elektr stansiyalari faoliyatini bashorat qilish va takomillashtirishda sun’iy intellekt
(SI) hamda mashinani o‘rganish (ML) metodologiyalarining qo‘llanilishi tahlil qilingan. So‘nggi o‘n yilliklarda energiya
ta’minotining strategik ahamiyati ortib, ko‘mir, gaz, quyosh va shamol kabi manbalarga asoslangan elektr stansiyalari
texnologiyalari izchil rivojlanib bormoqda. Mashinani o‘rganish metodlari energetika sohasida muhim ahamiyat kasb etib,
energiya tizimlari samaradorligini oshirishga xizmat qilmoqda. Maqolada neyron tarmoqlar, qaror daraxtlari va regressiya
tahlili kabi algoritmlar orqali energiya tizimlari faoliyatini bashorat qilish imkoniyatlari ko‘rib chiqiladi. Sun’iy intellekt va
energiya tizimlarining uyg‘unligi ekologik hamda ijtimoiy samaradorlikni oshirish bilan birga, ilm-fan va sanoat hamkorligini
rivojlantirishga xizmat qiladi. Tadqiqotning asosiy maqsadi energiya jarayonlarini optimallashtirish, barqaror yechimlarni
qo‘llab-quvvatlash va global hayot sifatini yaxshilashdan iborat

Author Biographies

Ixtiyorjon Axmadjonov

Fargʻona davlat texnika universiteti,
Kompyuter muhandisligi va sunʻiy intellekt kafedrasi assistenti

Dilnoza Umurzakova

Fargʻona davlat texnika universiteti,
Kompyuter muhandisligi va sunʻiy intellekt kafedrasi dotsenti

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Published

2026-04-01
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