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Huang Sheng, Teng Mingnian, Wu Zhen, Xu Jianghua, Ji Ruijun. A Data Caching Scheme Based on Node Classification in Named Data Networking[J]. Journal of Computer Research and Development, 2016, 53(6): 1281-1291. DOI: 10.7544/issn1000-1239.2016.20148097
Citation: Huang Sheng, Teng Mingnian, Wu Zhen, Xu Jianghua, Ji Ruijun. A Data Caching Scheme Based on Node Classification in Named Data Networking[J]. Journal of Computer Research and Development, 2016, 53(6): 1281-1291. DOI: 10.7544/issn1000-1239.2016.20148097

A Data Caching Scheme Based on Node Classification in Named Data Networking

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  • Published Date: May 31, 2016
  • Compared with the traditional Internet, in-networking caching is one of the most distinguishable features in named data networking (NDN). In NDN, a node caches every passing data packet as a default model. The caching scheme generates a large number of redundant data in in-networking. As a consequence, the networking cache resource is wasted seriously. To solve the problem, a caching scheme based on node classification (BNC) is proposed firstly in this paper. Based on different node positions, the nodes that data packet passes through are divided into two types: “edge” type and “core” type. When data packet passes through the “core” type nodes, by considering location and data popularity distribution at different nodes, it is cached in a node which is beneficial to other nodes. When the data packet passes through the “edge” nodes, a node is selected through data popularity to be beneficial to the client. The simulation results show that the proposed scheme can efficiently improve the in-network hit ratio and reduce the delay and hops of getting the data packet.
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