Using machine learning for adaptive interference suppression in wireless sensor networks

Per Lynggaard

Research output: Contribution to journalJournal articleResearchpeer-review

11 Citations (Scopus)

Abstract

It is foreseen that billions of Internet of Things devices will be connected to the Internet in the near future. Most of these devices will communicate wirelessly in a limited spectrum which means that a substantial amount of interferences will be generated. To overcome these interferences, a significant increase in (battery) power consumption is needed to re-transmit packages and to provide a transmit power margin. Hence, this challenge calls for agile methods that can overcome the interferences without wasting power. In this paper, the problem is addressed by using a self-adapting machine learning system which uses information from the channel state to predict the transmit power level that is needed to overcome the interferences. This approach predicts the correct transmit power level when a package needs to be sent and thereby avoids wasting power on selecting a wrong transmit power level, i.e., either excess power is wasted or extra power is wasted to retransmit the packet. Extensive simulations based on data from smart homes show that this approach achieves power savings in the range of 42%-82% and a packet receive a ratio of at least 92%.

Translated title of the contributionBrug af maskine læring til at undertrykke inteferencer adaptivt i wireless sensor networks
Original languageEnglish
Article number8445591
JournalI E E E Sensors Journal
Volume18
Issue number21
Pages (from-to) 8820-8826
Number of pages7
ISSN1530-437X
DOIs
Publication statusPublished - 1 Nov 2018

Keywords

  • IoT
  • Machine learning
  • interferences
  • linear regression

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