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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >An adaptive super-peer selection algorithm considering peers capacity utilizing asynchronous dynamic cellular learning automata
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An adaptive super-peer selection algorithm considering peers capacity utilizing asynchronous dynamic cellular learning automata

机译:考虑异步动态蜂窝学习自动机的对等体能力的自适应超级对等选择算法

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摘要

Super-peer networks refer to a class of peer-to-peer networks in which some peers called super-peers are in charge of managing the network. A group of super-peer selection algorithms use the capacity of the peers for the purpose of super-peer selection where the capacity of a peer is defined as a general concept that can be calculated by some properties, such as bandwidth and computational capabilities of that peer. One of the drawbacks of these algorithms is that they do not take into consideration the dynamic nature of peer-to-peer networks in the process of selecting super-peers. In this paper, an adaptive super-peer selection algorithm considering peers capacity based on an asynchronous dynamic cellular learning automaton has been proposed. The proposed cellular learning automaton uses the model of fungal growth as it happens in nature to adjust the attributes of the cells of the cellular learning automaton in order to take into consideration the dynamicity that exists in peer-to-peer networks in the process of super-peers selection. Several computer simulations have been conducted to compare the performance of the proposed super-peer selection algorithm with the performance of existing algorithms with respect to the number of super-peers, and capacity utilization. Simulation results have shown the superiority of the proposed super-peer selection algorithm over the existing algorithms.
机译:超级对等网络指的是一类点对点网络,其中一些名为Super-Seeers的对等体负责管理网络。一组超级对等选择算法使用对等体的容量以获得超级对等选择的目的,其中对等体的容量定义为可以通过某种属性计算的一般概念,例如带宽和该数据的带宽和计算能力同行。这些算法的一个缺点是他们在选择超级对等体的过程中,他们不考虑对等网络的动态性质。本文提出了一种考虑基于异步动态蜂窝学习自动机的对等体能力的自适应超级对等选择算法。所提出的蜂窝学习自动机使用真菌生长模型,因为它在性质中发生,以调整蜂窝学习自动机的细胞的属性,以便考虑超级的过程中存在于同行网络中存在的动态性 - 选择选择。已经进行了几种计算机仿真以比较所提出的超级对等选择算法的性能与超级对等体数量的现有算法的性能和能力利用率。仿真结果显示了所提出的超级对等选择算法在现有算法上的优越性。

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