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浙江大学学报(工学版)  2024, Vol. 58 Issue (5): 960-966    DOI: 10.3785/j.issn.1008-973X.2024.05.009
计算机技术、通信技术     
动态不确定场景下认知工业物联网的资源分配策略
李姣军1(),喻涛1(),周继华2,*(),杨凡1,赵涛2,吴天舒3,马兹林4
1. 重庆理工大学 电气与电子工程学院,重庆 400054
2. 航天新通科技有限公司,重庆 400031
3. 重庆中科云从科技有限公司,重庆 401331
4. 重庆标能瑞源储能技术研究院,重庆 401120
Resource allocation strategy for cognitive industrial internet of things in dynamic uncertain scenarios
Jiaojun LI1(),Tao YU1(),Jihua ZHOU2,*(),Fan YANG1,Tao ZHAO2,Tianshu WU3,Zilin MA4
1. School of Electrical and Electronic Engineering, Chongqing University of Technology, Chongqing 400054, China
2. Aerospace New Generation Communications Limited Company, Chongqing 400031, China
3. Chongqing Zhongke Yuncong Technology Limited Company, Chongqing 401331, China
4. Chongqing Buneng Ruiyuan Energy Storage Technology Research Institute, Chongqing 401120, China
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摘要:

针对动态不确定场景下认知工业物联网(CIIoT)业务的时延保障难题,提出动态不确定场景下保障业务时延需求的CIIoT资源分配策略. 构建基于时延敏感业务的时延模型,推导保障业务时延需求的速率解析解. 基于时延模型建立以最大化网络吞吐量为目标的CIIoT资源优化模型,该模型考虑在动态不确定环境下联立基站发射功率约束、设备之间的干扰约束和业务传输时延保障约束. 由于该模型存在动态不确定性,导致模型难以求解,采用鲁棒优化理论将不确定参数约束转化为确定性约束问题,提出在动态不确定场景下CIIoT的资源分配策略. 仿真结果表明,所提算法在动态不确定环境下有效地保障了业务的时延需求,提高了网络吞吐量.

关键词: 动态不确定场景认知工业物联网 (CIIoT)时延保障资源分配    
Abstract:

A cognitive industrial internet of things (CIIoT) resource allocation strategy was proposed to address the delay guarantee challenge of CIIoT services in dynamic and uncertain scenarios. A delay model based on CIIoT delay-sensitive services was constructed, and a rate-analytic solution for guaranteeing the delay demand of the services was derived. A CIIoT resource optimization model with the objective of maximizing network throughput was established based on the delay model, which considered the transmit power constraints of the base stations, the interference constraints between devices, and service transmission delay guarantee constraints under dynamic and uncertain environment. It is difficult to solve the model due to the dynamic uncertainty of the model. The robust optimization theory was adopted to transform uncertain parameter constraints into deterministic constraint problems, and a resource allocation strategy for CIIoT in dynamic uncertainty scenarios was proposed. The simulation results show that the proposed algorithm effectively guarantees the delay requirements of services and improves network throughput in dynamic and uncertain environments.

Key words: dynamic and uncertain scenario    cognitive industrial internet of things (CIIoT)    delay guarantee    resource allocation
收稿日期: 2023-06-29 出版日期: 2024-04-26
CLC:  TN 929  
基金资助: 重庆市自然科学基金资助项目(cstc2021jcyj-msxmX0251);重庆市自然科学基金创新发展联合基金资助项目(CSTB2023NSCQ-LMX0014);重庆市教育委员会科学技术研究计划资助项目(KJQN202301135,KJQN202201157);重庆理工大学国家自然科学基金和社会科学基金项目培育计划资助项目(2022PYZ017);重庆市巴南区科技资助项目(KY202208153976019);重庆市青少年创新人才培养雏鹰计划资助项目(CY230909,CY230908);重庆理工大学研究生教育高质量发展行动计划资助成果(gzlcx20233082);重庆理工大学科研创新团队培育计划基金资助项目(2023TDZ003).
通讯作者: 周继华     E-mail: ljj1987084@163.com;1826273183@qq.com;zjh20221012@163.com
作者简介: 李姣军(1965—),女,教授,从事基于OFDM及WPDM的多载波通信和下一代移动通信技术的研究. orcid.org/0009-0007-2696-9580. E-mail:ljj1987084@163.com
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引用本文:

李姣军,喻涛,周继华,杨凡,赵涛,吴天舒,马兹林. 动态不确定场景下认知工业物联网的资源分配策略[J]. 浙江大学学报(工学版), 2024, 58(5): 960-966.

Jiaojun LI,Tao YU,Jihua ZHOU,Fan YANG,Tao ZHAO,Tianshu WU,Zilin MA. Resource allocation strategy for cognitive industrial internet of things in dynamic uncertain scenarios. Journal of ZheJiang University (Engineering Science), 2024, 58(5): 960-966.

链接本文:

https://www.zjujournals.com/eng/CN/10.3785/j.issn.1008-973X.2024.05.009        https://www.zjujournals.com/eng/CN/Y2024/V58/I5/960

图 1  动态不确定的认知物联网场景
参数数值参数数值
$ \sigma^{2} $/mW5${ W } $/MHz10
$ {R}^{ \rm{th }} $/(bits·Hz?15$ \xi_{{{n}}} $0.2
$ I_{{{n}}}^{ {{\rm{th}} }} $/mW10$ {{{C}}_{{\text{MBS}}}} $/m500
$ \delta $0.2$ {{{C}}_{{\text{FBS}}}} $/m50
$ \tau $0.3
表 1  随机模型分配算法的仿真参数设置
图 2  CIIoTD总IE与不同信道估计误差的关系
图 3  CIIoTD吞吐量与时延敏感业务的时延需求门限的关系
图 4  CIIoTD总IE与干扰门限$ I_{{{n}}}^{{\rm{t h}}} $的关系
图 5  CIIoTD总EE与干扰门限的关系
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