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Partner selection in self-organised wireless sensor networks for opportunistic energy negotiation: A multi-armed bandit based approach

机译:用于机会能源谈判的自组织无线传感器网络中的合作伙伴选择:基于多武装的匪徒的方法

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The proliferation of "Things"over a network creates the Internet of Things (IoT), where sensors integrate to collect data from the environment over long periods of time. The growth of IoT applications will inevitably involve co-locating multiple wireless sensor networks, each serving different applications with, possibly, different needs and constraints. Since energy is scarce in sensor nodes equipped with non-rechargeable batteries, energy harvesting technologies have been the focus of research in recent years. However, new problems arise as a result of their wide spatio-temporal variation. Such a shortcoming can be avoided if co located networks cooperate with each other and share their available energy. Due to their unique characteristics and different owners, recently, we proposed a negotiation approach to deal with conflict of preferences. Unfortunately, negotiation can be impractical with a large number of participants, especially in an open environment. Given this, we introduce a new partner selection technique based on multi-armed bandits (MAB), that enables each node to learn the strategy that optimises its energy resources in the long term. Our results show that the proposed solution allows networks to repeatedly learn the current best energy partner in a dynamic environment. The performance of such a technique is evaluated through simulation and shows that a network can achieve an efficiency of 72% against the optimal strategy in the most challenging scenario studied in this work.
机译:网络上的“事情”的激增会产生物联网(物联网),其中传感器集成,以长时间收集来自环境的数据。物联网应用的增长不可避免地涉及共同定位多个无线传感器网络,每个传感器网络各自为不同的应用程序提供不同的应用,可能是不同的需求和约束。由于能量在配备不可充电电池的传感器节点中稀缺,因此近年来的能量收集技术一直是研究的重点。然而,由于它们广泛的时空变化,出现了新问题。如果CO所定位的网络彼此合作并共享其可用能量,则可以避免这种缺点。由于他们独特的特色和不同的业主,最近,我们提出了一种谈判方法来处理偏好冲突。遗憾的是,谈判可能对大量参与者来说是不切实际的,特别是在开放环境中。鉴于此,我们介绍了一种基于多武装匪盗(MAB)的新的合作伙伴选择技术,使每个节点能够在长期内学习优化其能源资源的策略。我们的结果表明,该解决方案允许网络在动态环境中反复学习当前最佳能源伙伴。通过模拟评估这种技术的性能,并表明网络可以在这项工作中研究中最具挑战性的情况下实现72%的效率。

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