关键基础设施保护的主动风险感知机器人传感器网络

J. McCausland, George Di Nardo, R. Falcon, R. Abielmona, V. Groza, E. Petriu
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引用次数: 14

摘要

提出了一种基于关键基础设施保护的风险感知机器人传感器网络(RSN)。这样的网络将由移动传感器节点组成,这些节点感知其环境的各个方面,并在拓扑上重新配置,以确保感兴趣的战略区域。通过将最近开发的风险管理框架应用于RSN,提供风险意识。每个节点的风险等级是根据它们的遇险程度、邻近系数和地形可操作性来评估的。每当任何给定的传感器节点的定量风险度量超过用户定义的阈值时,都会发出风险监控警报。此时,已将遇险节点(NID)确定为部署RSN的安全结构的弱点。NID不能再放心使用,RSN的有效周界覆盖范围已经减少,从而在感兴趣的领域产生潜在的安全漏洞。作为响应,其余节点将自组织以最大化周界覆盖,同时最小化这样做的成本。利用非支配排序遗传算法(NSGA-II)进行进化多目标优化,生成有限的权变网络拓扑,然后根据人类引导的备选选择算法进行排序。安全操作员选择最合适的拓扑,然后在环境中执行。结果表明,NSGA-II能够生成可行的网络拓扑,以满足最大周界覆盖,同时减少拓扑重构所需的能量。我们认为,这是第一次应用于CIP场景的RSN自组织,以响应基于多个风险特征对每个传感器节点进行的风险分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A proactive risk-aware robotic sensor network for Critical Infrastructure Protection
In this paper, a risk-aware robotic sensor network (RSN) is proposed in the context of Critical Infrastructure Protection. Such a network will be comprised of mobile sensor nodes that perceive various aspects of their environment and topologically reconfigure in order to secure a strategic area of interest. Risk awareness is provided through the application of a recently developed Risk Management Framework to the RSN. The risk level of each node is assessed in terms of their degree of distress, proximity factor, and terrain maneuverability. Risk monitoring alerts are issued whenever any given sensor node's quantitative risk metric exceeds a user-defined threshold value. At this point, a node-in-distress (NID) has been identified as the weak point of the securing structure around which the RSN is deployed. The NID can no longer be used with confidence and the effective perimeter coverage of the RSN has been reduced, thus creating potential security breaches in the area of interest. In response, the remaining nodes will self-organize to maximize the perimeter coverage while minimizing the cost of doing so. A limited set of contingency network topologies is produced via evolutionary multi-objective optimization using the Non-Dominated Sorting Genetic Algorithm (NSGA-II) and then ranked according to a human-guided alternative selection algorithm. The security operator picks the most suitable topology, which is then effectuated upon the environment. Results indicate that NSGA-II is capable of producing feasible network topologies to satisfy maximum perimeter coverage, while reducing the energy required for topology reconfiguration. As far as we are concerned, this is the first time a RSN applied to a CIP scenario is self-organized in response to a risk analysis conducted on every sensor node on the basis of multiple risk features.
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