QAROR DARAXTI YORDAMIDA AVTOMASHINA OQIMINI BASHORAT QILISH UO‘K 656.078, 656.001

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Referat

Ushbu ishda Toshkent shahri halqa yoʻlining Bogʻishamol koʻchasi bilan kesishgan chorrahada transport oqimini oʻrganishga qaratilgan. Tadqiqotning obyekti sifatida transport oqimi va uning dinamik koʻrsatkichlari, yaʼni intensivligi, zichligi va tezlik kabilar tadqiqot uchun oʻrganilgan va qayta ishlangan. Tadqiqotda qoʻyilgan asosiy masala, qaror daraxti yordamida transport oqimini bashorat qilish va buning asosida transport harakatini boshqarish masalalari olingan. Shu bilan birga ushbu ishda yoʻl harakatiga toʻsqinlik qiluvchi omillar tahlili va bu omillarni kamaytirish boʻyicha fikrlar keltirilgan. Tahlil natijalarida hozirgi kunda jadal rivojlanib kelayotgan yoʻnalishlarga alohida urgʻu berilib, bunda mashinani oʻrgatish, neyron tarmoqlari va intellektual transport tizimlari kabi texnologiyalarni transport sohasiga tobora kirib kelayotgani aniqlangan. Bu yoʻnalishlarning ichidan mashinani oʻqitish yoʻnalishining algoritmi, usuli va modellari tahlil qilingan. Qilingan tahlillar shuni koʻrsatdiki, qaror daraxti, tasodifiy oʻrmon va gradient boosting kabi modellar transport oqimini bashorat qilishda keng qoʻllanilishi maʼlum boʻldi. Ushbu ishda qaror daraxti yordamida ham Toshkent halqa yoʻli va Bogʻishamol koʻchasining yoʻllardagi transport oqimini bashorat qilish modeli yaxshi natijalarni koʻrsatdi. Bu koʻrsatkichni baholashda determinatsiya koeffitsiyenti qoʻllanildi va uning koʻrsatkichi 92% ni koʻrsatdi. Bu bashorat uchun yaxshi koʻrsatkich ekanligi aniqlandi.

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Qanday qilib iqtibos keltirish mumkin

Rasulmuxamedov , M. M., Tashmetov , K. S. oʻgʻli, & Tashmetov , T. S. (2024). QAROR DARAXTI YORDAMIDA AVTOMASHINA OQIMINI BASHORAT QILISH: UO‘K 656.078, 656.001. INNOVATSION TEXNOLOGIYALAR, 54(2), 46–53. Retrieved from https://innotex-journal.uz/index.php/journal/article/view/40
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