logo
calendar14 ноябр 2025
view2
Asosiy til:O'zbek

PARETO-OPTIMAL MARSHRUTLASH MASALALARINI YECHISH UCHUN GRAFIK MODELI VA EVOLYUTSION ALGORITMNI BIRLASHTIRISH

Fan yo'nalishi:
pdf

6916be0cd1a17.pdf

PDF

MAQOLA ANNOTATSIYASI

quote
Annotatsiya. Mazkur maqolada aloqa tarmoqlarida trafikni boshqarish masalasini hal etish uchun ko‘p mezonli optimallashtirishga asoslangan matematik model ishlab chiqilgan. Model tarmoq grafigi asosida tuzilgan bo‘lib, xizmat sifati ko‘rsatkichlari sifatida kechikish, o‘tkazuvchanlik va ishonchlilik alohida mezonlar tarzida hisobga olingan. Sun’iy intellekt yondashuvlari, jumladan kuchaytiruvchi o‘rganish va graf neyron tarmoqlari yordamida marshrutlarni moslashuvchan boshqarish imkoniyati nazarda tutilgan. Model Python muhiti asosida simulyatsiya qilinib, oddiy va nosozlik ssenariylari bo‘yicha sinovdan o‘tkazildi. Pareto-optimal yondashuv orqali murakkab tarmoq sharoitlarida qaror qabul qilishning samarali algoritmi ishlab chiqildi. Evolyutsion hisoblash usullari, xususan genetik algoritm va kuchaytiruvchi o‘rganish agentlari yordamida simulyatsiya o‘tkazilib, modelning barqarorligi va moslanuvchanligi eksperiment orqali asoslandi. Natijalar modelning barqaror ishlashi va topologiyadagi o‘zgarishlarga nisbatan yuqori moslanuvchanlikka ega ekanligini ko‘rsatdi.

MUALIFLAR

Teglar

# matematik model# sun’iy intellekt# xizmat sifati# yo‘naltirish# ko‘p mezonli optimallashtirish# Kalit so‘zlar: aloqa tarmoqlari

Maqolani baholang

0

0 ta

Maqola idintifikatorlari

Foydalanilgan adabiyotlar

Li X., Floudas C. A. Multiobjective optimization problems with equilibrium constraints // Journal of Optimization Theory and Applications. – 2006.

Ahuja R. K., Magnanti T. L., Orlin J. B. Network flows: theory, algorithms, and applications. Prentice Hall, 1993.

Marler R. T., Arora J. S. Survey of multi-objective optimization methods for engineering // Structural and Multidisciplinary Optimization. – 2004.

Deb K. Multi-objective optimization using evolutionary algorithms. John Wiley & Sons, 2001

Sutton R. S., Barto A. G. Reinforcement Learning: An Introduction. MIT Press, 2018.

Bäck T. Evolutionary algorithms in theory and practice. Oxford University Press, 1996

Alsabaan M., Naik K., Goel N., Nayak A. Real-time traffic routing using intelligent transportation systems // IEEE Transactions on Intelligent Transportation Systems, 2013.

Zhou J. et al. Graph neural networks: A review of methods and applications // AI Open. – 2020

Attar R. et al. Multipath routing for QoS-aware traffic engineering in MPLS networks // Scientific Research Publishing, 2017.

Wu Z. et al. A comprehensive survey on graph neural networks // IEEE Transactions on Neural Networks and Learning Systems, 2020

Liu Y. et al. Multi-objective genetic algorithm for routing optimization // PLOS ONE, 2019.

Mirzaeva M. Study of Neural Networks in Telecommunication Systems // Conference Proceedings, 2021.

Kleinrock L. Queueing Systems. Volume 2: Computer Applications. Wiley, 1976.

public

SLIB.uz — O'zbekiston ilmiy jurnallari va maqolalar yagona tizimda ilmiy nashirlarni bir joyda ko'rish, izlash va ulardan foydalanish imkonini beruvchi zamonaviy platforma.

Ijtimoiy tarmoqlarda
instagramtelegramyoutubefacebook

Bog'lanish uchun

Manzil:Chilonzor tumani Qatortol ko'chasi 60B

Tel:+998(55)511-44-00

Savol-javob va takliflar uchun

© 2026 Barcha huquqlar himoyalangan.