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Multimedia Technology and Enhanced Learning. 5th EAI International Conference, ICMTEL 2023, Leicester, UK, April 28-29, 2023, Proceedings, Part III

Research Article

Link Transmission Stability Detection Based on Deep Learning in Opportunistic Networks

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  • @INPROCEEDINGS{10.1007/978-3-031-50577-5_9,
        author={Jun Ren and Ruidong Wang and Huichen Jia and Yingchen Li and Pei Pei},
        title={Link Transmission Stability Detection Based on Deep Learning in Opportunistic Networks},
        proceedings={Multimedia Technology and Enhanced Learning. 5th EAI International Conference, ICMTEL 2023, Leicester, UK, April 28-29, 2023, Proceedings, Part III},
        proceedings_a={ICMTEL PART 3},
        year={2024},
        month={2},
        keywords={Opportunistic Network Deep Learning Link Transmission Stability Detection},
        doi={10.1007/978-3-031-50577-5_9}
    }
    
  • Jun Ren
    Ruidong Wang
    Huichen Jia
    Yingchen Li
    Pei Pei
    Year: 2024
    Link Transmission Stability Detection Based on Deep Learning in Opportunistic Networks
    ICMTEL PART 3
    Springer
    DOI: 10.1007/978-3-031-50577-5_9
Jun Ren1,*, Ruidong Wang1, Huichen Jia1, Yingchen Li1, Pei Pei2
  • 1: North Automatic Control Technology Institute
  • 2: Department of Foreign Languages, Changchun University of Finance and Economics
*Contact email: junsher@163.com

Abstract

In order to solve the low throughput and high delay problems of traditional link transmission stability detection methods, a detection method of link transmission stability in opportunistic networks based on deep learning is proposed. Establish the network link blocking model. Considering the impact of path delay, analyze the network link information to adjust the hierarchical structure, divide the link data into data blocks, and complete the construction of the link model. According to the link transmission data, the ground point coordinates of the network links in the area are obtained. Under the constraint of link carrying capacity, obtain the barcode sent by network transmission. Calculate the number of packets sent by the network source during congestion, extract network level features using deep learning algorithm, select the number of network layers, set hidden layer nodes, implement network training according to the learning rate, achieve the construction of classification prediction model, and complete the link transmission stability detection. The experimental results show that the proposed link transmission stability detection method can effectively improve the throughput of opportunistic network links and reduce the communication delay of opportunistic networks.

Keywords
Opportunistic Network Deep Learning Link Transmission Stability Detection
Published
2024-02-21
Appears in
SpringerLink
http://dx.doi.org/10.1007/978-3-031-50577-5_9
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