SUN’IY INTELLEKTGA ASOSLANGAN RADIOTEXNIKA TIZIMLARINING AXBOROTNI QAYTA ISHLASH OPERATORI UCHUN AVTOMATLASHTIRILGAN ISH STANSIYASINI ISHLAB CHIQISH

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Аннотация:

Maqolada radio-efir monitoringi jarayonini avtomatlashtirish uchun konvolyutsion neyron tarmog‘i (CNN) va SDR (Software Defined Radio) texnologiyalarini qo‘llash masalalari ko‘rib chiqiladi. Tadqiqotda kirish ma’lumotlari sifatida  o‘lchamli spektrogrammalar ishlatiladi. 33 milliondan ortiq parametrga ega bo‘lgan CNN modelini real vaqt rejimida ishga tushirish uchun NVIDIA RTX 4090 grafik protsessori imkoniyatlari tahlil qilinadi.

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Как цитировать:

Qutlımuratov, Y., & Allamuratov, S. (2026). SUN’IY INTELLEKTGA ASOSLANGAN RADIOTEXNIKA TIZIMLARINING AXBOROTNI QAYTA ISHLASH OPERATORI UCHUN AVTOMATLASHTIRILGAN ISH STANSIYASINI ISHLAB CHIQISH. Инновационные исследования в современном мире: теория и практика, 5(5), 36–43. извлечено от https://www.in-academy.uz/index.php/zdit/article/view/74801

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