Visible to the public Self-Diagnosis for Detecting System Failures in Large-Scale Wireless Sensor Networks

TitleSelf-Diagnosis for Detecting System Failures in Large-Scale Wireless Sensor Networks
Publication TypeJournal Article
Year of Publication2014
AuthorsKebin Liu, Qiang Ma, Wei Gong, Xin Miao, Yunhao Liu
JournalWireless Communications, IEEE Transactions on
Volume13
Pagination5535-5545
Date PublishedOct
ISSN1536-1276
Keywords100-node indoor testbed, accept state, Debugging, Detectors, diagnosing sensor network, failure detection system, fault decision process, fault detection, fault detector, fault diagnosis, GreenOrbs system, indoor radio, large-scale wireless sensor network, Measurement, network diagnosis, Self-diagnosis, self-diagnosis tool, sink-based tool, state transitions, telecommunication network reliability, telecommunication traffic, TinyD2, traffic-sensitive sensor network, Wireless communication, Wireless sensor networks, wireless sensor networks (WSNs)
Abstract

Existing approaches to diagnosing sensor networks are generally sink based, which rely on actively pulling state information from sensor nodes so as to conduct centralized analysis. First, sink-based tools incur huge communication overhead to the traffic-sensitive sensor networks. Second, due to the unreliable wireless communications, sink often obtains incomplete and suspicious information, leading to inaccurate judgments. Even worse, it is always more difficult to obtain state information from problematic or critical regions. To address the given issues, we present a novel self-diagnosis approach, which encourages each single sensor to join the fault decision process. We design a series of fault detectors through which multiple nodes can cooperate with each other in a diagnosis task. Fault detectors encode the diagnosis process to state transitions. Each sensor can participate in the diagnosis by transiting the detector's current state to a new state based on local evidences and then passing the detector to other nodes. Having sufficient evidences, the fault detector achieves the Accept state and outputs a final diagnosis report. We examine the performance of our self-diagnosis tool called TinyD2 on a 100-node indoor testbed and conduct field studies in the GreenOrbs system, which is an operational sensor network with 330 nodes outdoor.

DOI10.1109/TWC.2014.2336653
Citation Key6850017