DocumentCode :
3712759
Title :
BioAIM: Bio-inspired Autonomous Infrastructure Monitoring
Author :
Bo Ryu;Nadeesha Ranasinghe;Wei-Min Shen;Kurt Turck;Michael Muccio
fYear :
2015
Firstpage :
780
Lastpage :
785
Abstract :
The Bio-inspired Autonomous Infrastructure Monitoring (BioAIM) system detects anomalous behavior during the deployment and maintenance of a wireless communication network formed autonomously by unmanned airborne nodes. A node may experience anomalous or unexpected behavior in the presence of hardware/software faults/failures, or external influence (e.g. natural weather phenomena, enemy threats). This system autonomously detects, reasons with (e.g. differentiates an anomaly from natural interference), and alerts a human operator of anomalies at runtime via a communication network formed by the Bio-inspired Artificial Intelligence Reconfiguration (BioAIR) system. In particular, BioAIM learns and builds a prediction model which describes how data from relevant sensors should change when a behavior executes under normal circumstances. Surprises occur when there are discrepancies between what is predicted and what is observed. BioAIM identifies a dynamic set of states from the prediction model and learns a structured model similar to a Markov Chain in order to quantify the magnitude of a surprise or divergence from the norm using a special similarity metric. While in operation BioAIM monitors the sensor data by testing the applicable models for each valid behavior at regular time intervals, and informs the operator when a similarity metric deviates from the acceptable threshold.
Keywords :
"Biological system modeling","Monitoring","Predictive models","Biosensors","Maintenance engineering","Measurement"
Publisher :
ieee
Conference_Titel :
Military Communications Conference, MILCOM 2015 - 2015 IEEE
Type :
conf
DOI :
10.1109/MILCOM.2015.7357539
Filename :
7357539
Link To Document :
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