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Cognition in large scale information-centric sensor networks: Novel deployment and data delivery solutions

机译:大规模以信息为中心的传感器网络的认知:新颖的部署和数据交付解决方案

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摘要

Smart Cities, enabled by Wireless Sensor Networks (WSNs), have emerged as one of the most promising applications of the Internet of Things (IoT). These Smart City environments require that the underlying sensor network infrastructure be enriched with smart devices, so that the network can understand and respond to requests from multiple users with diverse information requirements. Now, the use of artificial intelligence has enabled some amount of user-requirement awareness in sensor networks. However, there is no architectural framework around how cognition is incorporated in the network, or where the smart decision making is implemented. In addition, WSN implementations are mostly address-centric, where users must specify the location from where data must be gathered. But this is counter-intuitive to how users would like to access information in a smart city environment, especially in applications such as smart parking, where the network needs to provide the location of free parking spots to the user. Moreover, managing the large IP address space becomes problematic as the network size expands to vast counts of sensor nodes.;In this thesis, we propose an architectural framework called Cognitive Information Centric Sensor Network (CICSN), to introduce cognition in WSNs. Cognitive nodes, capable of knowledge representation, learning, and reasoning, along with an information-centric approach to data delivery, are central to the idea of the CICSN. We propose a deployment strategy for cognitive nodes in the network such that connectivity of sensor nodes with the sink is maintained, and the number of cognitive nodes is minimized as well. Knowledge representation is done using attribute-value pairs. In addition, a Quality of Information (QoI) aware data delivery strategy, with Analytic Hierarchy Process (AHP) as the reasoning technique, is used to identify data delivery paths that dynamically adapt to changing network conditions and user requirements. Latency, reliability, and throughput are the attributes used to identify the QoI along the delivery path. Further, heuristic learning techniques are explored to improve the success rate of data delivery to the sink. Simulation results show that the proposed architecture significantly improves the QoI as well as the success rate of data delivered by the network.
机译:由无线传感器网络(WSN)推动的智能城市已成为物联网(IoT)最有前途的应用之一。这些智能城市环境要求底层传感器网络基础架构要配备智能设备,以使网络能够理解并响应来自具有不同信息需求的多个用户的请求。现在,人工智能的使用已在传感器网络中实现了一定数量的用户需求意识。但是,关于如何将认知整合到网络中或在何处实施智能决策,没有架构性框架。此外,WSN的实现方式大多以地址为中心,用户必须在其中指定必须从中收集数据的位置。但是,这与用户在智能城市环境中如何访问信息的方式有悖常理,尤其是在诸如智能停车之类的应用中,在该应用中,网络需要向用户提供免费停车位的位置。此外,随着网络规模扩展到大量传感器节点,管理大型IP地址空间成为一个问题。本论文中,我们提出了一种称为认知信息中心传感器网络(CICSN)的架构框架,以在WSN中引入认知功能。能够进行知识表示,学习和推理的认知节点,以及以信息为中心的数据传递方法,对于CICSN的思想至关重要。我们提出了一种用于网络中认知节点的部署策略,以保持传感器节点与接收器的连接性,并使认知节点的数量也最小化。知识表示使用属性值对完成。此外,以层次分析法(AHP)作为推理技术的信息质量(QoI)感知数据传递策略用于识别可动态适应不断变化的网络条件和用户要求的数据传递路径。延迟,可靠性和吞吐量是用于识别沿传送路径的QoI的属性。此外,探索了启发式学习技术以提高数据传输到接收器的成功率。仿真结果表明,所提出的体系结构显着提高了网络的QoI以及数据传递的成功率。

著录项

  • 作者

    Singh, Gayathri Tilak.;

  • 作者单位

    Queen's University (Canada).;

  • 授予单位 Queen's University (Canada).;
  • 学科 Computer engineering.;Artificial intelligence.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 223 p.
  • 总页数 223
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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