Learning Self-adaptations for IoT Networks: A Genetic Programming Approach

Jia Li, S. Nejati, M. Sabetzadeh
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引用次数: 4

Abstract

Internet of Things (IoT) is a pivotal technology in application domains that require connectivity and interoperability between large numbers of devices. IoT systems predominantly use a software-defined network (SDN) architecture as their core communication backbone. This architecture offers several advantages, including the flexibility to make IoT networks self-adaptive through software programmability. In general, self-adaptation solutions need to periodically monitor, reason about, and adapt a running system. The adaptation step involves generating an adaptation strategy and applying it to the running system whenever an anomaly arises. In this paper, we argue that, rather than generating individual adaptation strategies, the goal should be to adapt the logic / code of the running system in such a way that the system itself would learn how to steer clear of future anomalies, without triggering self-adaptation too frequently. We instantiate and empirically assess this idea in the context of IoT networks. Specifically, using genetic programming (GP), we propose a self-adaptation solution that continuously learns and updates the control constructs in the data-forwarding logic of SDN-based IoT networks. Our evaluation, performed using open-source synthetic and industrial data, indicates that, compared to a baseline adaptation technique that attempts to generate individual adaptations, our GP-based approach is more effective in resolving network congestion, and further, reduces the frequency of adaptation interventions over time. In addition, we compare our approach against a standard data-forwarding algorithm from the network literature, demonstrating that our approach significantly reduces packet loss.
学习自适应物联网网络:遗传规划方法
物联网(IoT)是需要大量设备之间连接和互操作性的应用领域的关键技术。物联网系统主要使用软件定义网络(SDN)架构作为其核心通信骨干。这种架构提供了几个优势,包括通过软件可编程性使物联网网络自适应的灵活性。一般来说,自适应解决方案需要定期监视、推理和适应运行中的系统。适应步骤包括生成一个适应策略,并在出现异常时将其应用于正在运行的系统。在本文中,我们认为,而不是产生个人适应策略,目标应该是适应运行系统的逻辑/代码,使系统本身能够学习如何避开未来的异常,而不会过于频繁地触发自适应。我们在物联网网络的背景下对这一想法进行了实例化和实证评估。具体而言,我们利用遗传规划(GP)提出了一种自适应解决方案,该方案可以持续学习和更新基于sdn的物联网数据转发逻辑中的控制结构。我们使用开源合成和工业数据进行的评估表明,与试图产生个体适应的基线适应技术相比,我们基于gp的方法在解决网络拥塞方面更有效,而且随着时间的推移,还减少了适应干预的频率。此外,我们将我们的方法与网络文献中的标准数据转发算法进行了比较,证明我们的方法显着减少了数据包丢失。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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