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首页> 外文期刊>Parallel and Distributed Systems, IEEE Transactions on >Sherlock Is Around: Detecting Network Failures with Local Evidence Fusion
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Sherlock Is Around: Detecting Network Failures with Local Evidence Fusion

机译:Sherlock即将到来:使用本地证据融合检测网络故障

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摘要

Traditional approaches for wireless sensor network diagnosis are mainly sink-based. They actively collect global evidences from sensor nodes to the sink so as to conduct centralized analysis at the powerful back-end. On the one hand, long distance proactive information retrieval incurs huge transmission overhead; On the other hand, due to the coupling effect between diagnosis component and the application itself, sink often fails to obtain complete and precise evidences from the network, especially for the problematic or critical parts. To avoid large overhead in evidence collection process, self-diagnosis injects fault inference modules into sensor nodes and let them make local decisions. Diagnosis results from single nodes, however, are generally inaccurate due to the narrow scope of system performances. Besides, existing self-diagnosis methods usually lead to inconsistent results from different inference processes. How to balance the workload among the sensor nodes in a diagnosis task is a critical issue. In this work, we present a new in-network diagnosis approach named Local-Diagnosis (LD2), which conducts the diagnosis process in a local area. LD2 achieves diagnosis decision through distributed evidence fusion operations. Each sensor node provides its own judgements and the evidences are fused within a local area based on the Dempster-Shafer theory, resulting in the consensus diagnosis report. We implement LD2 on TinyOS 2.1 and examine the performance on a 50 nodes indoor testbed.
机译:无线传感器网络诊断的传统方法主要基于接收器。他们积极收集从传感器节点到接收器的全局证据,以便在功能强大的后端进行集中分析。一方面,长距离的主动信息检索会带来巨大的传输开销;另一方面,另一方面,由于诊断组件和应用程序本身之间的耦合作用,接收器经常无法从网络中获得完整而准确的证据,特别是对于有问题或关键的部分。为了避免证据收集过程中的大量开销,自我诊断将故障推理模块注入传感器节点,并让它们做出本地决策。但是,由于系统性能范围狭窄,单个节点的诊断结果通常不准确。此外,现有的自我诊断方法通常会导致来自不同推理过程的结果不一致。在诊断任务中如何平衡传感器节点之间的工作量是一个关键问题。在这项工作中,我们提出了一种新的网络内诊断方法,称为本地诊断(LD2),该方法可在本地进行诊断过程。 LD2通过分布式证据融合操作实现诊断决策。每个传感器节点提供自己的判断,并且根据Dempster-Shafer理论将证据融合在局部区域中,从而得出共识诊断报告。我们在TinyOS 2.1上实现LD2,并在50个节点的室内测试平台上检查性能。

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