JOURNAL ARTICLE

Intelligent Elevator Control Using Decentralized Multi-Agent Systems

Atef Gharbi

Year: 2024 Journal:   Journal of Electrical Systems Vol: 20 (9s)Pages: 3038-3046

Abstract

A multi-agent system (MAS) framework optimizes elevator operations in high-rise buildings with dynamic traffic patterns and fluctuating passenger demands. With the proposed MAS approach, which utilizes fully decentralized decision-making and dynamic task allocation, scalability, responsiveness, and energy efficiency are significantly improved. Comparing MAS to traditional centralized systems, simulation results show that it reduces average waiting times by up to 25% while maintaining high performance. MAS eliminates bottlenecks and central points of failure, allowing real-time adaptation to traffic changes and passenger behavior. This approach provides significant advantages over existing elevator control strategies, positioning it as an intelligent building management solution of high effectiveness.

Keywords:
Elevator Computer science Scalability Decentralised system Distributed computing Adaptation (eye) Multi-agent system Task (project management) Control (management) Control engineering Real-time computing Engineering Artificial intelligence Systems engineering Database

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Topics

Elevator Systems and Control
Physical Sciences →  Engineering →  Control and Systems Engineering
Traffic control and management
Physical Sciences →  Engineering →  Control and Systems Engineering

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