An evolving risk management framework for wireless sensor networks

R. Falcon, A. Nayak, R. Abielmona
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引用次数: 29

Abstract

Individual units in a wireless sensor network (WSN) are exposed to multiple risks, either during or after their deployment. The identification of the risk sources and their watchful monitoring in dynamic, unpredictable environments is pivotal to ensure a smooth, long-term functioning of the WSN. We introduce an evolving risk management framework for WSNs that captures multiple risk features and provides both a visual depiction of the corporate network threats at any time and a numerical assessment of any sensor's overall risk. The visualization module is embodied through an evolving clustering architecture which heavily relies on shadowed sets. The risk assessment module embraces fuzzy and shadowed evaluations of the risk sources and incorporates a simple adaptive learning process that weights the risk sources proportionally to their observed impact on failed sensors. A distinctive trait of the proposed framework is its highly automated yet still human-centric nature. Experiments utilizing different sensor models and deployment scenarios confirm the feasibility of the risk management platform under consideration.
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无线传感器网络的风险管理框架
无线传感器网络(WSN)中的单个单元在部署期间或部署后都会面临多种风险。在动态、不可预测的环境中识别风险源并对其进行密切监测是确保无线传感器网络顺利、长期运行的关键。我们为wsn引入了一个不断发展的风险管理框架,该框架可以捕获多个风险特征,并随时提供企业网络威胁的可视化描述和任何传感器整体风险的数值评估。可视化模块通过不断发展的聚类体系结构实现,该体系结构严重依赖于阴影集。风险评估模块包含了对风险源的模糊和阴影评估,并结合了一个简单的自适应学习过程,该过程根据观察到的对失效传感器的影响对风险源进行加权。该框架的一个显著特点是高度自动化,但仍以人为本。利用不同传感器模型和部署场景的实验验证了所考虑的风险管理平台的可行性。
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