Intelligent tuning method for service scheduling in electric power communication networks based on operational risk and QoS guarantee.

In the operational planning of electric power communication networks, a well-structured service scheduling scheme based on the established network topology can significantly enhance the risk prevention capabilities of these networks. Since routing policies directly influence data transmission paths,...

Full description

Saved in:
Bibliographic Details
Main Authors: Yang Yu, YueLin Jiang, Zeng Dou, Li Cong, Wei Huang, Qiang Zhang, Yang Hu, YanJun Bi
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2025-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0317564
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1850273548983074816
author Yang Yu
YueLin Jiang
Zeng Dou
Li Cong
Wei Huang
Qiang Zhang
Yang Hu
YanJun Bi
author_facet Yang Yu
YueLin Jiang
Zeng Dou
Li Cong
Wei Huang
Qiang Zhang
Yang Hu
YanJun Bi
author_sort Yang Yu
collection DOAJ
description In the operational planning of electric power communication networks, a well-structured service scheduling scheme based on the established network topology can significantly enhance the risk prevention capabilities of these networks. Since routing policies directly influence data transmission paths, routing optimization serves as an effective strategy for improving network performance by mitigating transmission risks and threats. This paper introduces an Intelligent Tuning Method for Service Scheduling in Electric Power Communication Networks Based on Operational Risk and Quality of Service (QoS) Guarantee. Based on a comprehensive assessment of service transmission reliability and time costs, a route satisfaction evaluation function model has been developed. Utilizing this model, an enhanced Risk-Time Ant Colony Optimization (RT-ACO) routing algorithm is proposed, which builds upon the traditional ant colony algorithm. The improvements to the ant colony algorithm are made in four key areas: the definition of heuristic information, the weighting of parameters, the state selection strategy, and the pheromone update strategy. These enhancements aim to achieve optimal routing scheduling based on risk information. At the same time, a reconfiguration algorithm for power optical communication networks, based on service priority, is proposed for specific service requests. This algorithm provides both a primary routing path and an alternate routing path for service transmission, ensuring the delivery of high-priority services even when both the primary and standby paths are unavailable. Simulation results from an actual power business communication network demonstrate that the algorithm outputs the main and alternate paths with the lowest risk costs. Additionally, the path satisfaction of the proposed algorithm is improved by 7.4% compared to the traditional ant colony algorithm. This improvement validates the accuracy and superiority of the proposed algorithm and offers a valuable reference for ensuring the reliable operation of power optical fiber communication network systems.
format Article
id doaj-art-818c4bd0a88d4642b5c405bbb4b6c0b4
institution OA Journals
issn 1932-6203
language English
publishDate 2025-01-01
publisher Public Library of Science (PLoS)
record_format Article
series PLoS ONE
spelling doaj-art-818c4bd0a88d4642b5c405bbb4b6c0b42025-08-20T01:51:27ZengPublic Library of Science (PLoS)PLoS ONE1932-62032025-01-01202e031756410.1371/journal.pone.0317564Intelligent tuning method for service scheduling in electric power communication networks based on operational risk and QoS guarantee.Yang YuYueLin JiangZeng DouLi CongWei HuangQiang ZhangYang HuYanJun BiIn the operational planning of electric power communication networks, a well-structured service scheduling scheme based on the established network topology can significantly enhance the risk prevention capabilities of these networks. Since routing policies directly influence data transmission paths, routing optimization serves as an effective strategy for improving network performance by mitigating transmission risks and threats. This paper introduces an Intelligent Tuning Method for Service Scheduling in Electric Power Communication Networks Based on Operational Risk and Quality of Service (QoS) Guarantee. Based on a comprehensive assessment of service transmission reliability and time costs, a route satisfaction evaluation function model has been developed. Utilizing this model, an enhanced Risk-Time Ant Colony Optimization (RT-ACO) routing algorithm is proposed, which builds upon the traditional ant colony algorithm. The improvements to the ant colony algorithm are made in four key areas: the definition of heuristic information, the weighting of parameters, the state selection strategy, and the pheromone update strategy. These enhancements aim to achieve optimal routing scheduling based on risk information. At the same time, a reconfiguration algorithm for power optical communication networks, based on service priority, is proposed for specific service requests. This algorithm provides both a primary routing path and an alternate routing path for service transmission, ensuring the delivery of high-priority services even when both the primary and standby paths are unavailable. Simulation results from an actual power business communication network demonstrate that the algorithm outputs the main and alternate paths with the lowest risk costs. Additionally, the path satisfaction of the proposed algorithm is improved by 7.4% compared to the traditional ant colony algorithm. This improvement validates the accuracy and superiority of the proposed algorithm and offers a valuable reference for ensuring the reliable operation of power optical fiber communication network systems.https://doi.org/10.1371/journal.pone.0317564
spellingShingle Yang Yu
YueLin Jiang
Zeng Dou
Li Cong
Wei Huang
Qiang Zhang
Yang Hu
YanJun Bi
Intelligent tuning method for service scheduling in electric power communication networks based on operational risk and QoS guarantee.
PLoS ONE
title Intelligent tuning method for service scheduling in electric power communication networks based on operational risk and QoS guarantee.
title_full Intelligent tuning method for service scheduling in electric power communication networks based on operational risk and QoS guarantee.
title_fullStr Intelligent tuning method for service scheduling in electric power communication networks based on operational risk and QoS guarantee.
title_full_unstemmed Intelligent tuning method for service scheduling in electric power communication networks based on operational risk and QoS guarantee.
title_short Intelligent tuning method for service scheduling in electric power communication networks based on operational risk and QoS guarantee.
title_sort intelligent tuning method for service scheduling in electric power communication networks based on operational risk and qos guarantee
url https://doi.org/10.1371/journal.pone.0317564
work_keys_str_mv AT yangyu intelligenttuningmethodforserviceschedulinginelectricpowercommunicationnetworksbasedonoperationalriskandqosguarantee
AT yuelinjiang intelligenttuningmethodforserviceschedulinginelectricpowercommunicationnetworksbasedonoperationalriskandqosguarantee
AT zengdou intelligenttuningmethodforserviceschedulinginelectricpowercommunicationnetworksbasedonoperationalriskandqosguarantee
AT licong intelligenttuningmethodforserviceschedulinginelectricpowercommunicationnetworksbasedonoperationalriskandqosguarantee
AT weihuang intelligenttuningmethodforserviceschedulinginelectricpowercommunicationnetworksbasedonoperationalriskandqosguarantee
AT qiangzhang intelligenttuningmethodforserviceschedulinginelectricpowercommunicationnetworksbasedonoperationalriskandqosguarantee
AT yanghu intelligenttuningmethodforserviceschedulinginelectricpowercommunicationnetworksbasedonoperationalriskandqosguarantee
AT yanjunbi intelligenttuningmethodforserviceschedulinginelectricpowercommunicationnetworksbasedonoperationalriskandqosguarantee