PRONTO: Preamble Overhead Reduction with Neural Networks for Coarse Synchronization
Nasim Soltani, Debashri Roy, and Kaushik Chowdhury

TL;DR
PRONTO is a neural network-based scheme that reduces WiFi preamble overhead by eliminating the L-STF, maintaining performance, and enabling faster synchronization with a shorter preamble.
Contribution
We introduce PRONTO, a CNN-based method for coarse synchronization that reduces preamble length while ensuring compatibility and robustness across environments.
Findings
Packet detection accuracy of 100%
CFO estimation errors as low as 3%
Up to 40% reduction in preamble length
Abstract
In IEEE 802.11 WiFi-based waveforms, the receiver performs coarse time and frequency synchronization using the first field of the preamble known as the legacy short training field (L-STF). The L-STF occupies upto 40% of the preamble length and takes upto 32 us of airtime. With the goal of reducing communication overhead, we propose a modified waveform, where the preamble length is reduced by eliminating the L-STF. To decode this modified waveform, we propose a neural network (NN)-based scheme called PRONTO that performs coarse time and frequency estimations using other preamble fields, specifically the legacy long training field (L-LTF). Our contributions are threefold: (i) We present PRONTO featuring customized convolutional neural networks (CNNs) for packet detection and coarse carrier frequency offset (CFO) estimation, along with data augmentation steps for robust training. (ii) We…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Millimeter-Wave Propagation and Modeling · Wireless Networks and Protocols
