A node deployment and resource optimization method for CPDS based on cloud‐fog‐edge collaboration

Abstract With the development of the Internet of Things (IoT) in power distribution and the advancement of energy information integration technologies, the explosive growth in network data volume caused by massive terminal devices connecting to the power distribution network has become a significant...

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Main Authors: Xiaoping Xiong, Geng Yang
Format: Article
Language:English
Published: Wiley 2024-11-01
Series:IET Generation, Transmission & Distribution
Subjects:
Online Access:https://doi.org/10.1049/gtd2.13286
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author Xiaoping Xiong
Geng Yang
author_facet Xiaoping Xiong
Geng Yang
author_sort Xiaoping Xiong
collection DOAJ
description Abstract With the development of the Internet of Things (IoT) in power distribution and the advancement of energy information integration technologies, the explosive growth in network data volume caused by massive terminal devices connecting to the power distribution network has become a significant challenge. Multi‐terminal collaborative computing is a key approach to addressing issues such as high latency and high energy consumption. In this article, fog computing is introduced into the computing network of the power distribution system, and a cloud‐fog‐edge collaborative computing architecture for intelligent power distribution networks is proposed. Within this framework, an improved weighted K‐means method based on information entropy theory is presented for node partitioning. Subsequently, an improved multi‐objective particle swarm optimization algorithm (MWM‐MOPSO) is employed to solve the task resource allocation problem. Finally, the effectiveness of the proposed architecture and allocation strategy is validated through simulations on the OPNET and PureEdgeSim platforms. The results demonstrate that, compared to traditional cloud‐edge service architectures, the proposed architecture and task offloading scheme achieve better performance in terms of processing latency and energy consumption.
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spelling doaj-art-b9fed75fc3344a2cbef55f6bb8d3a53b2025-08-20T03:08:52ZengWileyIET Generation, Transmission & Distribution1751-86871751-86952024-11-0118213524353710.1049/gtd2.13286A node deployment and resource optimization method for CPDS based on cloud‐fog‐edge collaborationXiaoping Xiong0Geng Yang1School of Electrical Engineering Guangxi University Nanning ChinaSchool of Electrical Engineering Guangxi University Nanning ChinaAbstract With the development of the Internet of Things (IoT) in power distribution and the advancement of energy information integration technologies, the explosive growth in network data volume caused by massive terminal devices connecting to the power distribution network has become a significant challenge. Multi‐terminal collaborative computing is a key approach to addressing issues such as high latency and high energy consumption. In this article, fog computing is introduced into the computing network of the power distribution system, and a cloud‐fog‐edge collaborative computing architecture for intelligent power distribution networks is proposed. Within this framework, an improved weighted K‐means method based on information entropy theory is presented for node partitioning. Subsequently, an improved multi‐objective particle swarm optimization algorithm (MWM‐MOPSO) is employed to solve the task resource allocation problem. Finally, the effectiveness of the proposed architecture and allocation strategy is validated through simulations on the OPNET and PureEdgeSim platforms. The results demonstrate that, compared to traditional cloud‐edge service architectures, the proposed architecture and task offloading scheme achieve better performance in terms of processing latency and energy consumption.https://doi.org/10.1049/gtd2.13286cloud computingcyber‐physical systemsdata communicationdelaysdistribution networksenergy consumption
spellingShingle Xiaoping Xiong
Geng Yang
A node deployment and resource optimization method for CPDS based on cloud‐fog‐edge collaboration
IET Generation, Transmission & Distribution
cloud computing
cyber‐physical systems
data communication
delays
distribution networks
energy consumption
title A node deployment and resource optimization method for CPDS based on cloud‐fog‐edge collaboration
title_full A node deployment and resource optimization method for CPDS based on cloud‐fog‐edge collaboration
title_fullStr A node deployment and resource optimization method for CPDS based on cloud‐fog‐edge collaboration
title_full_unstemmed A node deployment and resource optimization method for CPDS based on cloud‐fog‐edge collaboration
title_short A node deployment and resource optimization method for CPDS based on cloud‐fog‐edge collaboration
title_sort node deployment and resource optimization method for cpds based on cloud fog edge collaboration
topic cloud computing
cyber‐physical systems
data communication
delays
distribution networks
energy consumption
url https://doi.org/10.1049/gtd2.13286
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