YANCHISH JARAYONINI INTELLEKTUAL BOSHQARISH TIZIMLARI

Authors

  • Boyeva Oqila Husanovna Navoiy davlat Konchilik va Texnologiyalar universiteti, dotsenti Author
  • G`aybulloyeva Munisaxon Shuxrat qizi Navoiy davlat Konchilik va Texnologiyalar universiteti 1-kurs magistri Author

Keywords:

yanchish jarayoni, intellektual boshqaruv, raqamli texnologiyalar, sun’iy intellekt,energiya samaradorligi.

Abstract

Ushbu maqolada tog‘-kon va metallurgiya sanoatidagi yanchish jarayonini samarali boshqarish uchun intellektual tizim ishlab chiqish yondashuvi taklif etilgan. Shuningdek raqamli texnologiya,sun’iy intellekt va klassik boshqaruv usullarining integratsiyasi orqali jarayonning asosiy parametrlarini real vaqt rejimida optimallashtirish mexanizmi taklif qilingan. Yaratilgan matematik model yanchish jarayoni samaradorligini energiya sarfi, zarracha o‘lchami va yuklama tezligi kabi ko‘rsatkichlar bilan bog‘laydi.Tadqiqot natijalari ishlab chiqarish barqarorligini oshirish, energiya sarfini kamaytirish va avariya holatlarini
oldini olishda amaliy ahamiyatga ega.

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Published

2025-12-30