GEOSIYOSIY NOANIQLIK SHAROITIDA TA’MINOT ZANJIRLARINI BOSHQARISHNING INNOVATSION MODELI

GEOSIYOSIY NOANIQLIK SHAROITIDA TA’MINOT ZANJIRLARINI BOSHQARISHNING INNOVATSION MODELI

Авторы

  • Nodir Xidirov
  • Sarvinozxon Lutfullayeva

DOI:

https://doi.org/10.5281/zenodo.20026075

Ключевые слова:

katta ma’lumotlar, ta’minot zanjiri, geosiyosiy risk, prognozlash, avtonom tizimlar, logistika, tarmoq tahlili, gibrid model.

Аннотация

Mazkur maqolada global iqtisodiyotda kuzatilayotgan geosiyosiy noaniqlik sharoitida ta’minot
zanjirlarini boshqarish muammolari tahlil qilinadi hamda ularni hal etishning yangi konseptual yondashuvi taklif
etiladi. Mavjud ilmiy ishlarda asosan uzilishlarni prognozlash va risklarni aniqlash masalalari yoritilgan bo‘lsada,
avtonom qaror qabul qilish imkoniyatlari yetarli darajada rivojlanmagan. Ushbu tadqiqotda “Autonomous
Self-Healing Supply Chain” modeli ishlab chiqilib, u katta ma’lumotlar tahlili, sabab-oqibat modellashtirish
hamda tarmoq yondashuvlarini yagona tizimga integratsiya qiladi. Natijalar shuni ko‘rsatadiki, taklif etilgan
model nafaqat uzilishlarni oldindan aniqlash, balki ularni avtomatik tarzda bartaraf etish imkonini ham beradi.
Bu esa ta’minot zanjirlarining barqarorligini oshirishda muhim ahamiyat kasb etadi

Биографии авторов

Nodir Xidirov

Toshkent davlat iqtisodiyot universiteti,
“Moliya va moliyaviy texnologiyalar”
kafedrasi professori v.b., PhD,

Sarvinozxon Lutfullayeva

Toshkent davlat iqtisodiyot universiteti,
Magistranti

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Загрузки

Опубликован

2026-04-01

Как цитировать

Xidirov , N., & Lutfullayeva , S. (2026). GEOSIYOSIY NOANIQLIK SHAROITIDA TA’MINOT ZANJIRLARINI BOSHQARISHNING INNOVATSION MODELI. ЗЕЛЁНАЯ ЭКОНОМИКА И РАЗВИТИЕ, 4(4). https://doi.org/10.5281/zenodo.20026075
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