AVTOTRANSPORTLAR HARAKATINI TARTIBGA SOLISHNING NORAVSHAN MANTIQQA ASOSLANGAN MODELI

Авторы

  • Temurbek Ataxonovich Muhammad al-Xorazmiy nomidagi TATU
  • Jamshid Hamzayev Muhammad al-Xorazmiy nomidagi TATU
  • Farrux Zafar o‘g‘li Toshkent Kimyo xalqaro universiteti

Ключевые слова:

aqlli transport tizimlari, svetofor, shahar transporti, noravshan mantiq, Lyapunov teoremasi, tirbandlik

Аннотация

Hozirgi vaqtdagi urbanizatsiya va shahar transportida shaxsiy avtomobillardan foydalanishning ko‘payishi tufayli shahar transportining sayohat vaqti tobora uzayib bormoqda. Albatta bunga asosiy sabablardan biri shahar avtomobil yo‘llaridagi tirbandlikni kuzatilishidir. Insonlar ko‘chada ko‘p vaqt o‘tkazadilar va shunga mos ravishda kutishning navbat uzunligi ortadi, bu bir tomondan olib qaraganda yoqilg‘i sarfiga bevosita ta’sir qiladi. Shahar transport tizimida transport oqimining prognozlari va svetoforlar ishlash jadvali alohida o‘rin tutadi. Noravshan mantiqqa asoslangan aqlli boshqaruvchi navbat uzunligiga qarab svetaforlarni boshqarish uchun mo‘ljallangan va natijada tizimning barqarorligi Lyapunov teoremasi yordamida isbotlangan. Tavsiya etilgan usul an’anaviy avtotransport harakatini boshqaruvchilariga va belgilangan vaqtni boshqarishga qaraganda samaraliroqdir.

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Опубликован

2023-10-30

Как цитировать

Ataxonovich, T., Hamzayev, J., & Zafar o‘g‘li, F. (2023). AVTOTRANSPORTLAR HARAKATINI TARTIBGA SOLISHNING NORAVSHAN MANTIQQA ASOSLANGAN MODELI. Цифровая трансформация и искусственный интеллект, 1(3), 75–84. извлечено от https://dtai.tsue.uz/index.php/dtai/article/view/v1i311