2018
DOI: 10.1109/comst.2018.2796101
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Joint Inter-Flow Network Coding and Opportunistic Routing in Multi-Hop Wireless Mesh Networks: A Comprehensive Survey

Abstract: Network coding and opportunistic routing are two recognized innovative ideas to improve the performance of wireless networks by utilizing the broadcast nature of the wireless medium. In the last decade, there has been considerable research on how to synergize inter-flow network coding and opportunistic routing in a single joint protocol outperforming each in any scenario. This paper explains the motivation behind the integration of these two techniques, and highlights certain scenarios in which the joint appro… Show more

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Cited by 49 publications
(29 citation statements)
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References 115 publications
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“…Referring to the parameter initialization from the paradigm of fuzzy inference system and experimental results, the location and scale parameters are set as a 1 = 0.75, a 2 = 0.5, a 3 = 0.25, and σ 2 1 = σ 2 2 = σ 2 3 = 0.96 from the parameter settings of the 10th experiment. In addition, based on the common settings of the opportunistic network environment, the number of nodes in this communication area N is set as 100, 200, 400 and 600, and the cache space for a node C is set as 10,15,20,25,30,35, and 40 MB. Moreover, because the social attribute information of nodes does not exist in the four real data sets, this simulation defines eight different social characteristics for each node, including interests, occupation, common friends, preferences, browsing history, repost record, comments, and online time.…”
Section: Setting Of Experimental Parametersmentioning
confidence: 99%
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“…Referring to the parameter initialization from the paradigm of fuzzy inference system and experimental results, the location and scale parameters are set as a 1 = 0.75, a 2 = 0.5, a 3 = 0.25, and σ 2 1 = σ 2 2 = σ 2 3 = 0.96 from the parameter settings of the 10th experiment. In addition, based on the common settings of the opportunistic network environment, the number of nodes in this communication area N is set as 100, 200, 400 and 600, and the cache space for a node C is set as 10,15,20,25,30,35, and 40 MB. Moreover, because the social attribute information of nodes does not exist in the four real data sets, this simulation defines eight different social characteristics for each node, including interests, occupation, common friends, preferences, browsing history, repost record, comments, and online time.…”
Section: Setting Of Experimental Parametersmentioning
confidence: 99%
“…As various applicable routing-forwarding strategies [15] have been proposed to tackle the problem of data dissemination for different scenarios in OSNs, most of them make an accurate message delivery decision by comprehensively assessing reliable social information associated with nodes such as social features [6], human mobility [1], contact history [13], or level of credibility. As a general rule, the social features of humans, which can be easily extracted from portable mobile devices, are the most widely utilized metric information for relay node selection in OSNs.…”
Section: Introductionmentioning
confidence: 99%
“…Due to the potentials of network coding in improving the performance of wireless multihop network, some network coding-based routings [13][14][15] have been proposed. The network coding applied in routings is network layer network coding, instead of physical layer network coding.…”
Section: Introductionmentioning
confidence: 99%
“…Besides, in [24] the authors propose FairCoding, which is a cross-layer protocol optimizing the coordination among the network coding and the MAC layer protocols; they observe that FairCoding increases the number of coding opportunities as well as the average transmission rate of WMNs, reaching an improvement of 20%. Finally, in [25] the authors jointly optimize NC and opportunistic routing in WMNs; they also provide a taxonomy of protocols considering both mechanisms.…”
Section: Introductionmentioning
confidence: 99%