Intelligent Control Systems in Building Materials Production: Addressing Contemporary Challenges Through AI-Driven Automation

Авторы

  • Nurmakhamad Juraev Fergana State Technical University
  • Murodjon Rahmatullayev Fergana State Technical University

Kalit so'zlar:

Intelligent control systems, AI, automation, digital twin technology, IioT, smart factories, Industry 4.0

Annotatsiya

The building materials production industry faced unprecedented challenges in 2025, including urgent decarbonization requirements, volatile raw material costs, and increasing demands for quality consistency. This article examines how intelligent control systems powered by artificial intelligence (AI), digital twin technology, and advanced automation are addressing these critical issues. Analysis reveals that AI-driven predictive maintenance can reduce material waste by up to 30%, while machine learning-based quality control systems achieve defect detection accuracies exceeding 95%.

Библиографические ссылки

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Опубликован

2025-12-01

Как цитировать

Juraev, N., & Rahmatullayev, M. (2025). Intelligent Control Systems in Building Materials Production: Addressing Contemporary Challenges Through AI-Driven Automation. Research and Implementation, 3(12), 74–77. извлечено от https://rai-journal.uz/index.php/rai/article/view/1843

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