Computer Science ›› 2022, Vol. 49 ›› Issue (9): 249-259.doi: 10.11896/jsjkx.220500222

• Computer Network • Previous Articles     Next Articles

Functional Architecture to Intelligent Computing Power Network

HU Yu-jiao1, JIA Qing-min1, SUN Qing-shuang2, XIE Ren-chao1,3, HUANG Tao1,3   

  1. 1 Future Network Research Center,Purple Mountain Laboratories,Nanjing 211111,China
    2 School of Computer Science,Northwestern Polytechnical University,Xi'an 710072,China
    3 State Key Laboratory of Networking and Switching Technology,Beijing University of Posts and Telecommunications,Beijing 100876,China
  • Received:2022-05-23 Revised:2022-06-24 Online:2022-09-15 Published:2022-09-09
  • About author:HU Yu-jiao,born in 1993,Ph.D,is a member of China Computer Federation.Her main research interests include cyber-physical system,computing power network,edge computing,and deep learning.
  • Supported by:
    National Natural Science Foundation of China(62171046).

Abstract: The computing power network as a new research fieldis in urgent need to improve intelligence and provide on-demand services.To solve the problems,an intelligent computing power network that combines cloud-edge-terminal computing resource,communication resource,and AI approaches together is proposed.At the same time,the system-level intelligence would be built from two aspects of endogenous intelligence and application intelligence.The endogenous intelligence refers to the abilities of self-perception,self-adaptation,self-decision and self-learning to make the computing power network ensure the accurate operation of the system.The application intelligence refers to the abilities in resource deployment,business arrangement and cognition,so that the computing power network could enhance the adaptability of the businesses.Further,a functional architecture is constructed,which would gradually build the endogenous intelligence and application intelligence in the layers of basic resource,resource mana-gement,business choreography,operation service and optimization.Finally,three important scenarios are selected from two domains,i.e.workshop logistics and quality control based on machine vision in the smart manufacturing,road and community monitoring in the intelligent security.Three groups of simulations are designed based on the scenarios,respectively.Experimental results show that while adopting the intelligent computing power network with endogenous intelligent and application intelligence,in the scenario of workshop logistics,the performance improvement is related with the scale of the scenarios,the planning time could be improved by approximately 2~50 times and the planning result could be improved by about 2~5 times.In the scenario of quality control based on machine vision,the deploymentcost of computing equipment would reduce to 1/5 of the original and the detection accuracy could improve by about 4.5%.In the scenario of road and community monitoring,the deployment cost of computing equipment could reduceto 1/10 of the original.

Key words: Computing power network, Endogenous intelligence, Application intelligence, Functional architecture, Hierarchical model

CLC Number: 

  • TP399
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