物联网中的节点能力分类

Abderrahim Zannou, Abdelhak Boulaalam, E. Nfaoui
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引用次数: 4

摘要

物联网(IoT)是互联网的先进范式,它使任何事物和每个人都可以在任何地点,任何时间,使用任何路径和网络进行连接和互动。这种新模式的特点是约束节点和损耗网络,其中可用资源有限,网络结构不稳定。随机执行请求可能会导致某些节点出现故障,从而缩短网络生命周期。在本文中,我们提出了一种新的策略,根据节点的能力将节点划分为三个层次,并使用神经网络。通过预测有损网络中加入节点的能力,分类允许节点了解可以执行或处理给定服务或任务的最佳节点。仿真结果表明,该模型对节点的预测精度高,延长了网络的生存期。
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A Node Capability Classification in Internet of Things
The Internet of Things (IoT) is an advanced paradigm of the Internet, it makes everything and everyone to be connected and interacted from anywhere, at any time, and using any path and network. This new paradigm is characterized by constraint nodes and lossy networks where the available resources are limited and the network structure is unstable. The random execution of requests can lead to the failure of some nodes, as a consequence, the network lifetime will be reduced. In this paper, we proposed a new strategy to classify the nodes into three levels based on their capabilities and using a neural network. The classification allows the nodes to be aware of the best nodes that can execute or process a given service or a task, by predicting the capability of a joined node in the lossy network. The simulation results show that our proposed model has a high accuracy for prediction nodes and makes the network lifetime prolonged.
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