Socially-Aware Trajectory-based Routing in Vehicle Social Network

碩士 === 國立彰化師範大學 === 資訊工程學系 === 105 === In recent years, as the rising of social networking, many vehicular packet forwarding protocols with the social concepts are proposed. The socially-aware vehicular forwarding protocols choose the appropriate forwarding vehicle by calculating values of the socia...

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Main Authors: Chang, Ching-Ju, 章晴茹
Other Authors: Chang, Ing-Chau
Format: Others
Language:zh-TW
Published: 2017
Online Access:http://ndltd.ncl.edu.tw/handle/gws9nz
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spelling ndltd-TW-105NCUE53920022019-05-16T00:00:23Z http://ndltd.ncl.edu.tw/handle/gws9nz Socially-Aware Trajectory-based Routing in Vehicle Social Network 車載社群網路中一個擁有社會意識以軌跡為基礎的路由協定 Chang, Ching-Ju 章晴茹 碩士 國立彰化師範大學 資訊工程學系 105 In recent years, as the rising of social networking, many vehicular packet forwarding protocols with the social concepts are proposed. The socially-aware vehicular forwarding protocols choose the appropriate forwarding vehicle by calculating values of the social relationship between the vehicle and the packet destination. However, these protocols do not consider the influences of different time period to the social relationship and the trajectory information of vehicles altogether. Hence, these protocols need to be improved. In this thesis, we propose a Socially-Aware Trajectory-based Routing (SATR) protocol which combines the value of social relationship of different time period into the trajectory-based routing protocol proposed before to improve the performance of packet delivery in Vehicular Social Network (VSN). It offers the following contributions: (1) Propose a new packet forwarding protocol in Vehicular Social Network to improve the disadvantages of lacking the use of time impact in conventional vehicular social network protocols. (2) Two major parts of SATR, i.e., the trajectory prediction stage and the packet forwarding one, are proposed. (3) In the trajectory prediction stage, we proposed algorithms to analyze the vehicle trajectories and social relationship on different time periods, design a new vehicle encounter sequence graph and construct the packet forwarding graph to reduce the time complexity of this stage. (4) In the packet forwarding stages, we propose the packet delivery algorithm and the exception handling one to improve the packet delivery ratio. (5) We execute simulation for related work and SATR by the well-known VANET simulator, the ONE (The Opportunistic Network Environment simulator), under different values of parameters. These results exhibit SATR outperform traditional routing in VSN. In addition, SATR uses fewer simulation times and memory space than Trajectory-based Routing and only about 5% to 10% lower than Trajectory-based Routing in packet delivery raio and delay. Chang, Ing-Chau 張英超 2017 學位論文 ; thesis 84 zh-TW
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language zh-TW
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sources NDLTD
description 碩士 === 國立彰化師範大學 === 資訊工程學系 === 105 === In recent years, as the rising of social networking, many vehicular packet forwarding protocols with the social concepts are proposed. The socially-aware vehicular forwarding protocols choose the appropriate forwarding vehicle by calculating values of the social relationship between the vehicle and the packet destination. However, these protocols do not consider the influences of different time period to the social relationship and the trajectory information of vehicles altogether. Hence, these protocols need to be improved. In this thesis, we propose a Socially-Aware Trajectory-based Routing (SATR) protocol which combines the value of social relationship of different time period into the trajectory-based routing protocol proposed before to improve the performance of packet delivery in Vehicular Social Network (VSN). It offers the following contributions: (1) Propose a new packet forwarding protocol in Vehicular Social Network to improve the disadvantages of lacking the use of time impact in conventional vehicular social network protocols. (2) Two major parts of SATR, i.e., the trajectory prediction stage and the packet forwarding one, are proposed. (3) In the trajectory prediction stage, we proposed algorithms to analyze the vehicle trajectories and social relationship on different time periods, design a new vehicle encounter sequence graph and construct the packet forwarding graph to reduce the time complexity of this stage. (4) In the packet forwarding stages, we propose the packet delivery algorithm and the exception handling one to improve the packet delivery ratio. (5) We execute simulation for related work and SATR by the well-known VANET simulator, the ONE (The Opportunistic Network Environment simulator), under different values of parameters. These results exhibit SATR outperform traditional routing in VSN. In addition, SATR uses fewer simulation times and memory space than Trajectory-based Routing and only about 5% to 10% lower than Trajectory-based Routing in packet delivery raio and delay.
author2 Chang, Ing-Chau
author_facet Chang, Ing-Chau
Chang, Ching-Ju
章晴茹
author Chang, Ching-Ju
章晴茹
spellingShingle Chang, Ching-Ju
章晴茹
Socially-Aware Trajectory-based Routing in Vehicle Social Network
author_sort Chang, Ching-Ju
title Socially-Aware Trajectory-based Routing in Vehicle Social Network
title_short Socially-Aware Trajectory-based Routing in Vehicle Social Network
title_full Socially-Aware Trajectory-based Routing in Vehicle Social Network
title_fullStr Socially-Aware Trajectory-based Routing in Vehicle Social Network
title_full_unstemmed Socially-Aware Trajectory-based Routing in Vehicle Social Network
title_sort socially-aware trajectory-based routing in vehicle social network
publishDate 2017
url http://ndltd.ncl.edu.tw/handle/gws9nz
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