SANOAT ISHLAB CHIQARISH JARAYONLARIDA SIFAT NAZORATINI AVTOMATLASHTIRISHDA SUN’IY INTELLEKTNING ROLI

SANOAT ISHLAB CHIQARISH JARAYONLARIDA SIFAT NAZORATINI AVTOMATLASHTIRISHDA SUN’IY INTELLEKTNING ROLI

Authors

  • Nozimbek Rixsiboyev

DOI:

https://doi.org/10.5281/zenodo.20558905

Keywords:

Sun’iy intellekt, sifat nazorati, avtomatlashtirish, kompyuter ko‘rish, chuqur o‘rganish, defektlarni aniqlash, vizual tekshirish, konvolyutsion neyron tarmoqlar, anomaliyalarni aniqlash, tasvirni qayta ishlash, real vaqt tekshirish, Sanoat 4.0, nol defekt, sifat boshqaruvi

Abstract

Ushbu maqolada sanoat ishlab chiqarishida sifat nazoratini avtomatlashtirishda sun’iy intellekt (SI) texnologiyalarining
roli va imkoniyatlari tadqiq qilingan. Tadqiqotda nazariy tahlil, xalqaro amaliyotlarni qiyosiy o‘rganish
hamda kompyuter ko‘rish, chuqur o‘rganish va anomaliyalarni aniqlash algoritmlarining sifat nazoratidagi samaradorligini
baholash usullari qo‘llanilgan. Natijalar shuni ko‘rsatadiki, SI asosidagi avtomatlashtirilgan sifat nazorati tizimlari
defektlarni yuqori aniqlik bilan aniqlash, tekshirish tezligini oshirish va inson omilini kamaytirish imkonini beradi.
Xalqaro tajriba misolida Keyence, Cognex, BMW va Samsung kabi yetakchi kompaniyalarning SI sifat nazorati amaliyotlari
tahlil qilinib, ularning erishgan natijalari ochib berilgan. SI asosidagi sifat nazorati tizimlarini joriy etishning asosiy
bosqichlari, texnik talablari va iqtisodiy samarasi asoslab berilgan.

Author Biography

Nozimbek Rixsiboyev

Tashkent International University
Yurisprudensiya fakulteti dekani, PhD

References

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Published

2025-05-01
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