易故障传感器网络中的数据判别

Xiaoning Cui, Qing Li, Bao-hua Zhao
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引用次数: 4

摘要

由于传感器节点的自动感知能力和自组织能力,传感器网络在各种应用中得到了广泛的应用,但传感器网络易故障的特性在一定程度上对事件检测和异常检测提出了挑战,而事件检测和异常检测在一定程度上忽视了区分事件和错误的重要性。考虑到数据的不确定性,本文提出了易故障传感器网络中的数据判别问题,分析了事件与错误之间的异同,设计了一个多层次的系统判别框架。在每个步骤中,框架都会从原始数据中过滤错误数据,并为下一步处理标记潜在的事件样本。最后将原始数据集D划分为三个子集,分别是事件、错误和异常。同时进行了基于场景的仿真和基于实测数据的实验。各种判别指标的统计结果表明,该网络在不同情况下具有较高的判别率和鲁棒性。
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Data Discrimination in Fault-Prone Sensor Networks
While sensor networks have been used in various applications because of the automatic sensing capability and ad-hoc organization of sensor nodes, the fault-prone characteristic of sensor networks has challenged the event detection and the anomaly detection which, to some extent, have neglected the importance of discriminating events and errors. Considering data uncertainty, in this article, we present the problem of data discrimination in fault-prone sensor networks, analyze the similarities and the differences between events and errors, and design a multi-level systematic discrimination framework. In each step, the framework filters erroneous data from the raw data and marks potential event samples for the next-step processing. The raw data set D is finally partitioned into three subsets, Devent, Derror and Dordinary. Both the scenario-based simulations and the experiments on real-sensed data are carried out. The statistical results of various discrimination metrics demonstrate high distinction ratio as well as the robustness in different cases of the network.
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