An ML-assisted OTFS vs. OFDM adaptable modem
- URL: http://arxiv.org/abs/2309.01319v2
- Date: Thu, 19 Oct 2023 06:40:34 GMT
- Title: An ML-assisted OTFS vs. OFDM adaptable modem
- Authors: I. Zakir Ahmed and Hamid R. Sadjadpour
- Abstract summary: OTFS and OFDM waveforms enjoy the benefits of the reuse of legacy architectures, simplicity of receiver design, and low-complexity detection.
We propose a deep neural network (DNN)-based adaptation scheme to switch between using either an OTFS or OFDM signal processing chain at the transmitter and receiver for optimal mean-squared-error (MSE) performance.
- Score: 1.8492669447784602
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The Orthogonal-Time-Frequency-Space (OTFS) signaling is known to be resilient
to doubly-dispersive channels, which impacts high mobility scenarios. On the
other hand, the Orthogonal-Frequency-Division-Multiplexing (OFDM) waveforms
enjoy the benefits of the reuse of legacy architectures, simplicity of receiver
design, and low-complexity detection. Several studies that compare the
performance of OFDM and OTFS have indicated mixed outcomes due to the plethora
of system parameters at play beyond high-mobility conditions. In this work, we
exemplify this observation using simulations and propose a deep neural network
(DNN)-based adaptation scheme to switch between using either an OTFS or OFDM
signal processing chain at the transmitter and receiver for optimal
mean-squared-error (MSE) performance. The DNN classifier is trained to switch
between the two schemes by observing the channel condition, received SNR, and
modulation format. We compare the performance of the OTFS, OFDM, and the
proposed switched-waveform scheme. The simulations indicate superior
performance with the proposed scheme with a well-trained DNN, thus improving
the MSE performance of the communication significantly.
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