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Improving learning automata-based routing in Wireless Sensor Networks

机译:改进无线传感器网络中基于学习自动机的路由

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Recent research in the field of Wireless Sensor Networks (WSNs) has demonstrated the advantages of using learning automata theory to steer the routing decisions made by the sensors in the network. These advantages include aspects such as energy saving, energy balancing, increased lifetime, the selection of relatively short paths, as well as combinations of these and other goals. In this paper, we propose a very simple yet effective technique, which can be easily combined with a learning automaton to dramatically improve the performance of the routing process obtained with the latter. As a proof-of-concept, we focus on a typical learning automata-based routing process, which aims at finding a good trade off between the energy consumed and the number of hops along the paths chosen. In order to assess the performance of this routing process, we apply it on a WSN scenario where a station S gathers data from the sensors. In this typical WSN setting, we show that our combined technique can significantly improve the decisions made with the automata; and more importantly, even though the proof-of-concept particularizes somehow the automata and their behavior, the technique described in this paper is general in scope, and therefore can be applied under different routing methods and settings using learning automata.
机译:无线传感器网络(WSN)领域中的最新研究表明,使用学习自动机理论来控制网络中传感器做出的路由决策的优势。这些优势包括诸如节能,能量平衡,使用寿命增加,相对较短路径的选择以及这些目标与其他目标的组合等方面。在本文中,我们提出了一种非常简单而有效的技术,该技术可以轻松地与学习自动机结合使用,以显着提高由后者获得的路由过程的性能。作为概念验证,我们专注于典型的基于学习自动机的路由过程,该过程旨在在消耗的能量与沿所选路径的跳数之间找到良好的折衷。为了评估此路由过程的性能,我们将其应用于WSN场景,其中站点S从传感器收集数据。在这种典型的WSN设置中,我们证明了我们的组合技术可以显着改善自动机做出的决策。更重要的是,即使概念验证以某种方式具体化了自动机及其行为,本文所描述的技术也具有通用性,因此可以使用学习自动机在不同的路由方法和设置下应用。

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