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Building Context Aware Network of Wireless Sensors Using a Novel Pattern Recognition Scheme Called Hierarchical Graph Neuron

机译:建立语境意识的无线传感器网络,使用称为分层图神经元的新模式识别方案

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The capability to support plethora of new diverse applications has placed Wireless Sensor Network (WSN) technology at threshold of an era of significant potential growth. In this regard, pattern recognition especially in real-time applications plays a paramount role in securing the network against malicious activity. In this paper, an attempt is made to introduce a novel method using a highly scalable and distributed associative memory technique, called Hierarchical Graph Neuron (HGN), while its effectiveness is analyzed from different points of view. The proposed approach not only enjoys from conserving the limited power resources of resource-constrained sensor nodes, but also can be scaled effectively to address scalability issues, which are of primary concern in wireless sensor networks. In addition, the algorithm overcomes the issue of crosstalk available in the original GN algorithm, and thus not only promises to deliver accurate results, but also can be deployed for diverse types of applications in a multidimensional domain.
机译:支持多种新的多种应用的能力使无线传感器网络(WSN)技术处于显着潜在增长的时代的阈值。在这方面,特别是在实时应用中的模式识别在保护网络免受恶意活动方面发挥着至最重要的作用。在本文中,尝试使用称为分层图神经元(HGN)的高度可扩展和分布的关联内存技术来引入一种新方法,而其有效性是从不同的观点分析。所提出的方法不仅可以享受节省资源受限传感器节点的有限电力资源,而且还可以有效地缩放以解决无线传感器网络中主要关注的可扩展性问题。此外,该算法克服了原始GN算法中可用的串扰问题,因此不仅有望提供准确的结果,而且还可以部署用于多维域中的不同类型的应用程序。

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