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Polibits

versión On-line ISSN 1870-9044

Resumen

ANJUM, Bushra  y  SABHARWAL, Chaman Lal. Filtering Compromised Environment Sensors Using Autoregressive Hidden Markov Model. Polibits [online]. 2016, n.54, pp.5-10. ISSN 1870-9044.  https://doi.org/10.17562/PB-54-1.

We propose a method based on autoregressive hidden Markov models (AR-HMM) for filtering out compromised nodes from a sensor network. We assume that sensors are healthy, self-healing and corrupted whereas each node submits a number of readings. A different AR-HMM (A, B, π) is used to describe each of the three types of nodes. For each node, we train an AR-HMM based on the sensor's readings, and subsequently the B matrices of the trained AR-HMMs are clustered together into two groups: healthy and compromised (both self-healing and corrupted), which permits us to identify the group of healthy sensors. The existing algorithms are centralized and computation intensive. Our approach is a simple, decentralized model to identify compromised nodes at a low computational cost. Simulations using both synthetic and real datasets show greater than 90% accuracy in identifying healthy nodes with ten nodes datasets and as high as 97% accuracy with 500 or more nodes datasets.

Palabras llave : Autoregressive hidden Markov models; environment sensing; filtering corrupted nodes; sensor network; clustering; anomaly detection.

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