移动无线传感器网络中基于学习的路由:应用形式化建模和分析

F. Kazemeyni, Olaf Owe, E. Johnsen, I. Balasingham
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引用次数: 2

摘要

有限的能量供应是处理无线传感器网络(WSNs)的主要问题之一。因此,路由协议的设计应该以节能为目标。本文选择了一种既能处理集中式路由又能处理去中心化路由的路由协议。移动性,利用节点运动模式的先验知识来选择最佳路由路径,使用贝叶斯学习算法。通常,基于仿真的工具无法证明协议是否正确工作,但形式化建模方法能够通过搜索网络节点的所有可能行为来验证协议是否正确工作。本文提出了一种基于贝叶斯学习方法的基于学习的无线传感器网络路由协议的形式化模型,采用结构操作语义(SOS)风格。我们使用重写逻辑工具Maude对模型进行分析。实验结果表明,分散式方案的节能效果是集中式方案的两倍。它也优于功率敏感的AODV (PS-AODV)路由协议(即非学习效率协议)。我们使用Maude工具来验证路由协议的正确性属性。我们的正式贝叶斯学习模型集成了一个真实的数据集,这迫使模型符合真实数据。这种技术似乎超出了本文的案例研究范围。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning-based routing in mobile wireless sensor networks: Applying formal modeling and analysis
Limited energy supply is one of the main concerns when dealing with wireless sensor networks (WSNs). Therefore, routing protocols should be designed with the goal of being energy efficient. In this paper, we select a routing protocol which is capable of handling both centralized and decentralized routing. Mobility, a priori knowledge of the movement patterns of the nodes is exploited to select the best routing path, using a Bayesian learning algorithm. Generally, simulation-based tools cannot prove if a protocol works correctly, but formal modeling methods are able to validate that by searching for failures through all possible behaviors of network nodes. This paper presents a formal model for a learning-based routing protocol for WSNs, based on a Bayesian learning method, using an Structural Operational Semantics (SOS) style. We use the rewriting logic tool Maude to analyze the model. Our experimental results show that decentralized approach is twice as energy-efficient as the centralized scheme. It also outperforms the power-sensitive AODV (PS-AODV) routing protocol (i.e. a non-learning efficient protocol). We use the Maude tool to validate a correctness property of the routing protocol. Our formal model of Bayesian learning integrates a real dataset which forces the model to conform to the real data. This technique seems useful beyond the case study of this paper.
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