Preamble Detection in Asynchronous Random Access Using Deep Learning
Muhammad Usman Khan, Enrico Testi, Enrico Paolini, Marco Chiani
Abstract
Grant-free random access protocols are among the enabling techniques for mMTC, where a large number of devices activate sporadically and transmit short packets, typically containing a preamble (or a pilot sequence), without any resource allocation from the BS. One of the critical tasks to be accomplished by the BS is thus the preamble-based detection of the transmitted packets. This letter proposes a DL-based solution for detecting preambles in an asynchronous grant-free random access uplink scenario, assuming multiple antennas at the BS. The DL-based approach outperforms the classical correlator-based approach.
Topics & Concepts
PreambleRandom accessComputer scienceAsynchronous communicationNetwork packetTelecommunications linkComputer networkReal-time computingChannel (broadcasting)IoT Networks and ProtocolsEnergy Harvesting in Wireless NetworksWireless Body Area Networks