Detecting faulty wireless sensor nodes through Stochastic classification
Autor: | Giuseppe Lo Re, Alfonso Farruggia, Marco Ortolani |
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Přispěvatelé: | Farruggia, A, Lo Re, G, Ortolani, M |
Rok vydání: | 2011 |
Předmět: |
Brooks–Iyengar algorithm
Computer science Distributed computing Real-time computing Probabilistic logic Markov process Markov Random Field symbols.namesake Key distribution in wireless sensor networks Wireless Sensor Networks Autonomic Computing Sensor node symbols Overhead (computing) Algorithm design Wireless sensor network |
Zdroj: | PerCom Workshops |
DOI: | 10.1109/percomw.2011.5766858 |
Popis: | In many distributed systems, the possibility to adapt the behavior of the involved resources in response to unforeseen failures is an important requirement in order to significantly reduce the costs of management. Autonomous detection of faulty entities, however, is often a challenging task, especially when no direct human intervention is possible, as is the case for many scenarios involving Wireless Sensor Networks (WSNs), which usually operate in inaccessible and hostile environments. This paper presents an unsupervised approach for identifying faulty sensor nodes within a WSN. The proposed algorithm uses a probabilistic approach based on Markov Random Fields, requiring exclusively an analysis of the sensor readings, thus avoiding additional control overhead. In particular, abnormal behavior of a sensor node will be inferred by analyzing the spatiotemporal correlation of its data with respect to its neighborhood. The algorithm is tested on a public dataset, over which different classes of faults were artificially superimposed. |
Databáze: | OpenAIRE |
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