DocumentCode :
1585667
Title :
Online supervised incremental learning of link quality estimates in wireless networks
Author :
Di Caro, Gianni A. ; Kudelski, Michal ; Flushing, Eduardo Feo ; Nagi, Jawad ; Ahmed, Ishtiaq ; Gambardella, Luca M.
Author_Institution :
Dalle Molle Inst. for Artificial Intell. (IDSIA), Manno-Lugano, Switzerland
fYear :
2013
Firstpage :
133
Lastpage :
140
Abstract :
We address the problem of link quality estimation in wireless networks and propose a distributed online protocol based on supervised incremental learning. We first identify a set of easily measurable network features that jointly determine the quality of a wireless link. These features summarize the local network configuration which is associated to the link, and include signal strengths, topology, and local traffic characteristics of the two end-points of the link and of their neighbors. At every node and for every wireless link, the protocol passively gathers measurements to quantify the current value of the network features and to assess the related link quality value according to a selected metric (the packet reception ratio, in our case). A node uses these measurements as labeled training samples for the incremental and supervised learning of the regression mapping from a local network configuration to a link quality estimate. The learned regression model can then be used by network protocols to derive in real-time robust estimates of link qualities after measuring the current local configuration. Nodes can also cooperate by exchanging training samples, speeding up in this way the overall learning process. This results particularly useful when the local network configurations are continually changing because of mobility and/or varying traffic patterns. We validate the protocol both in simulation, considering mobile ad hoc networks, and on a real sensor network testbed of 139 nodes. We also study the application of the prediction model in the context of routing, showing its efficacy improving the performance of the OLSR ad-hoc routing protocol.
Keywords :
learning (artificial intelligence); mobile ad hoc networks; routing protocols; telecommunication network topology; telecommunication traffic; OLSR ad-hoc routing protocol; link quality estimates; local network configuration; local traffic characteristic; mobile ad hoc networks; network protocols; online protocol; online supervised incremental learning; packet reception ratio; real-time robust estimates; regression mapping; sensor network testbed; signal strengths; telecommunication network topology; wireless networks; Ad hoc networks; Estimation; Predictive models; Protocols; Training; Vectors; Wireless communication;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Ad Hoc Networking Workshop (MED-HOC-NET), 2013 12th Annual Mediterranean
Conference_Location :
Ajaccio
Type :
conf
DOI :
10.1109/MedHocNet.2013.6767422
Filename :
6767422
Link To Document :
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