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Privacy preservation‐driven communication‐computing collaboration for multi‐mode heterogeneous IoT network management
by
Gan, Zhong
, Zhou, Diqing
, Feng, Chen
, Shen, Bing
, Chen, Yilong
, Xiao, Yunjie
in
communication‐computing collaboration
/ low‐carbon smart park
/ multi‐mode heterogeneous internet of thing (IoT)
/ network management
/ privacy protection
2025
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Privacy preservation‐driven communication‐computing collaboration for multi‐mode heterogeneous IoT network management
by
Gan, Zhong
, Zhou, Diqing
, Feng, Chen
, Shen, Bing
, Chen, Yilong
, Xiao, Yunjie
in
communication‐computing collaboration
/ low‐carbon smart park
/ multi‐mode heterogeneous internet of thing (IoT)
/ network management
/ privacy protection
2025
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Do you wish to request the book?
Privacy preservation‐driven communication‐computing collaboration for multi‐mode heterogeneous IoT network management
by
Gan, Zhong
, Zhou, Diqing
, Feng, Chen
, Shen, Bing
, Chen, Yilong
, Xiao, Yunjie
in
communication‐computing collaboration
/ low‐carbon smart park
/ multi‐mode heterogeneous internet of thing (IoT)
/ network management
/ privacy protection
2025
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Privacy preservation‐driven communication‐computing collaboration for multi‐mode heterogeneous IoT network management
Journal Article
Privacy preservation‐driven communication‐computing collaboration for multi‐mode heterogeneous IoT network management
2025
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Overview
The multi‐mode heterogeneous network combines the advantages of high‐speed power line communication (HPLC) and high radio frequency (HRF), ensuring service quality and meeting the requirements for data transmission delay and reliability even when devices are flexibly deployed. Queuing delay and privacy entropy are important metrics for managing multi‐mode heterogeneous internet of things (IoT) networks, which require collaborative optimization of the transmission phase (server selection and sub‐channel allocation) and the computing phase (computing resource allocation) to ensure low latency and high privacy entropy. However, existing communication‐computing collaborative optimization methods face issues such as low privacy security of electricity‐carbon service data, high difficulty in solving the joint optimization problem, and resource competition. Therefore, this paper proposes a privacy preservation‐driven communication‐computing collaboration method for the management of multi‐mode heterogeneous IoT networks. Firstly, the architecture for the management of multi‐mode heterogeneous IoT networks is constructed and a privacy entropy model for electricity‐carbon computing service data is established to measure the privacy security performance of the network management. Secondly, a joint optimization problem of queuing delay and privacy entropy under long‐term privacy entropy constraints are constructed and the long‐term privacy entropy constraints from short‐term decisions is decoupled based on Lyapunov optimization. Finally, a joint optimization algorithm for server selection and multi‐mode sub‐channel allocation driven by privacy protection is proposed. This algorithm reduces the three‐dimensional matching optimization problem among different devices, servers, and channels, and uses auction matching to solve the conflict of resource block selection, further optimizing the computing resource allocation of edge servers based on the Karush–Kuhn–Tucker (KKT) conditions. Simulation results show that the proposed algorithm effectively reduces queuing delay and improves privacy security of data transmission. This paper proposes a privacy protection‐driven communication‐computation collaboration method for managing multi‐mode heterogeneous Internet of Things networks, combining high power line communication and high radio frequency to ensure low latency and high privacy entropy. The method includes a joint optimization algorithm for server selection, sub‐channel allocation, and computational resource allocation, using auction matching and Lyapunov optimization to address queuing delay, resource competition, and privacy protection in internet of things network management. Simulation results show significant improvements in queuing delay and privacy security performance compared to baseline methods.
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