DocumentCode :
680912
Title :
Hierarchical Sparse Coding for Wireless Link Prediction in an Airborne Scenario
Author :
Tarsa, Stephen J. ; Kung, H.T.
Author_Institution :
Harvard Univ., Cambridge, MA, USA
fYear :
2013
fDate :
18-20 Nov. 2013
Firstpage :
894
Lastpage :
900
Abstract :
We build a data-driven hierarchical inference model to predict wireless link quality between a mobile unmanned aerial vehicle (UAV) and ground nodes. Clustering, sparse feature extraction, and non-linear pooling are combined to improve Support Vector Machine (SVM) classification when a limited training set does not comprehensively characterize data variations. Our approach first learns two layers of dictionaries by clustering packet reception data. These dictionaries are used to perform sparse feature extraction, which expresses link state vectors first in terms of a few prominent local patterns, or features, and then in terms of co-occurring features along the flight path. In order to tolerate artifacts like small positional shifts in field-collected data, we pool large magnitude features among overlapping shifted patches within windows. Together, these techniques transform raw link measurements into stable feature vectors that capture environmental effects driven by radio range limitations, antenna pattern variations, line-of-sight occlusions, etc. Link outage prediction is implemented by an SVM that assigns a common label to feature vectors immediately preceding gaps of successive packet losses, predictions are then fed to an adaptive link layer protocol that adjusts forward error correction rates, or queues packets during outages to prevent TCP timeout. In our harsh target environment, links are unstable and temporary outages common, so baseline TCP connections achieve only minimal throughput. However, connections under our predictive protocol temporarily hold packets that would otherwise be lost on unavailable links, and react quickly when the UAV link is restored, increasing overall channel utilization.
Keywords :
aircraft communication; codes; feature extraction; pattern classification; remotely operated vehicles; support vector machines; telecommunication computing; transport protocols; TCP connections; adaptive link layer protocol; airborne scenario; data-driven hierarchical inference model; forward error correction rates; ground nodes; hierarchical sparse coding; limited training set; mobile unmanned aerial vehicle; nonlinear pooling; packet reception data clustering; queues packets; sparse feature extraction; support vector machine classification; wireless link prediction; wireless link quality; Data models; Dictionaries; Feature extraction; Predictive models; Support vector machines; Training; Training data;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Military Communications Conference, MILCOM 2013 - 2013 IEEE
Conference_Location :
San Diego, CA
Type :
conf
DOI :
10.1109/MILCOM.2013.156
Filename :
6735737
Link To Document :
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