Knowledge Agora



Scientific Article details

Title Dynamic Resource Management in MEC Powered by Edge Intelligence for Smart City Internet of Things
ID_Doc 39280
Authors Wan, XC
Title Dynamic Resource Management in MEC Powered by Edge Intelligence for Smart City Internet of Things
Year 2024
Published Journal Of Grid Computing, 22, 1
DOI 10.1007/s10723-024-09749-3
Abstract The Internet of Things (IoT) has become an infrastructure that makes smart cities possible. is both accurate and efficient. The intelligent production industry 4.0 period has made mobile edge computing (MEC) essential. Computationally demanding tasks can be delegated from the MEC server to the central cloud servers for processing in a smart city. This paper develops the integrated optimization framework for offloading tasks and dynamic resource allocation to reduce the power usage of all Internet of Things (IoT) gadgets subjected to delay limits and resource limitations. A Federated Learning FL-DDPG algorithm based on the Deep Deterministic Policy Gradient (DDPG) architecture is suggested for dynamic resource management in MEC networks. This research addresses the optimization issues for the CPU frequencies, transmit power, and IoT device offloading decisions for a multi-mobile edge computing (MEC) server and multi-IoT cellular networks. A weighted average of the processing load on the central MEC server (PMS), the system's overall energy use, and the task-dropping expense is calculated as an optimization issue. The Lyapunov optimization theory formulates a random optimization strategy to reduce the energy use of IoT devices in MEC networks and reduce bandwidth assignment and transmitting power distribution. Additionally, the modeling studies demonstrate that, compared to other benchmark approaches, the suggested algorithm efficiently enhances system performance while consuming less energy.
Author Keywords Internet of Things; Mobile edge computing; Lyapunov optimization theory; Deep reinforcement learning; Smart buildings
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Science Citation Index Expanded (SCI-EXPANDED)
EID WOS:001160617600001
WoS Category Computer Science, Information Systems; Computer Science, Theory & Methods
Research Area Computer Science
PDF
Similar atricles
Scroll