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TEMIR YOʻL TRANSPORTI INFRATUZILMASINI TAKOMILLASHTIRISH VA LOGISTIKA SAMARADORLIGINI OSHIRISHDA SUNʼIY INTELLEKTDAN FOYDALANISH IMKONIYATLARI

Tashkilot
Toshkent davlat transport universiteti mustaqil izlanuvchisi

Annotatsiya

Maqolada temir yoʻl transporti infratuzilmasida sunʼiy intellekt texnologiyalarining qoʻllanish imkoniyatlari tahlil qilingan. Asosiy eʼtibor diagnostika va texnik xizmat samaradorligini oshirish, yuk oqimlarini modellashtirish, raqamli egizaklardan foydal anish hamda yuqori tezlikdagi poyezdlar boshqaruvini optimallashtirishga qaratildi. Ilmiy manbalar tahlili shuni koʻrsatadiki, SI texnologiyalari xavfsizlikni mustahkamlash, ekspluatatsion xarajatlarni kamaytirish va logistika jarayonlarini samarali tashki l etishda muhim ahamiyat kasb etadi. Taklif etilgan yondashuvlar transport tizimining barqaror rivojlanishiga hissa qoʻshishi mumkin.

Kalit so'zlar

temir yoʻl transporti, sunʼiy intellekt (SI), diagnostika, modellashtirish, Digital Twin, logistika, samaradorlik, xavfsizlik


Adabiyotlar ro'yxati

  1. Ahmad, W. (2022). Artificial intelligence -based condition monitoring of rail infrastructure (PDEng Thesis). Eindhoven University of Technology. https://research.tue.nl/en/publications/artificial -intelligence -based -condition - monitoring -of-rail-infra
  2. Alawad, H. (2022). A hybrid artificial intelligence approach for rail infrastructure fault diagnosis and maintenance planning (PhD thesis). University of Huddersfield. https://eprints.hud.ac.uk/id/eprint/35785/
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