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A new reasoning and learning model for Cognitive Wireless Sensor Networks based on Bayesian networks and learning automata cooperation

机译:基于贝叶斯网络和学习自动机的认知无线传感器网络推理与学习新模型

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Adding cognition to existing Wireless Sensor Networks (WSNs) with a cognitive networking approach, which deals with using cognition to the entire network protocol stack to achieve end-to-end goals, brings about many benefits. However cognitive networking may be confused with cognitive radio or cross-layer design, it is a different concept; cognitive radios applies cognition only at the physical layer to overcome the problem of spectrum scarcity, and cross layer design usually focuses on linking at least two nonconsecutive specific layers, to achieve a particular goal. Indeed, it can be said that the cognitive radio and the cross layer design are two effective methods in cognitive networking. To the best of our knowledge, almost all of the existing researches on the Cognitive Wireless Sensor Networks (CWSNs) have focused on spectrum allocation and interference reduction in the physical layer. In this paper, we propose a new reasoning and learning model for CWSNs, in which firstly, a team of learning automata is employed to construct a Bayesian Network (BN) model of the parameters of the network protocol stack, and then the constructed BN is used to tune the controllable parameters. The BN represents the dependency relationships between the parameters of the network protocol stack, and the BN-based reasoning is an efficient tool for cross-layer optimization, in order to maximize the perceived network performance. Simulations have been done to evaluate the performance of the proposed model. The results of the simulations show that the proposed model successively adds cognition to a WSN and improves the performance of the communication network. (C) 2017 Elsevier B.V. All rights reserved.
机译:使用认知联网方法将认知添加到现有的无线传感器网络(WSN)中,该方法涉及对整个网络协议堆栈使用认知来实现端到端目标,从而带来许多好处。然而,认知网络可能与认知无线电或跨层设计相混淆,这是一个不同的概念。认知无线电仅在物理层应用认知来克服频谱稀缺的问题,跨层设计通常着重于链接至少两个非连续的特定层,以实现特定目标。确实,可以说认知无线电和跨层设计是认知网络中的两种有效方法。据我们所知,关于认知无线传感器网络(CWSN)的几乎所有现有研究都集中在物理层的频谱分配和干扰减少上。在本文中,我们提出了一种新的CWSN推理和学习模型,其中,首先,一个学习自动机团队构建了网络协议栈参数的贝叶斯网络模型,然后将其构造为用于调整可控参数。 BN表示网络协议堆栈的参数之间的依赖关系,基于BN的推理是用于跨层优化的有效工具,目的是使感知的网络性能最大化。仿真已经完成,以评估所提出模型的性能。仿真结果表明,所提出的模型相继增加了对无线传感器网络的认知,提高了通信网络的性能。 (C)2017 Elsevier B.V.保留所有权利。

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