A Deep Model-Based Channel Interference Mitigation for OTFS Signals in
ISAC Systems
Abstract
In recent years, Orthogonal Time Frequency Space Modulation (OTFS) has
gained popularity in integrated sensing and communications (ISAC) system
due to its robustness against Doppler offset and delay changes.
Traditional pilot-based methods for accurate channel parameter
estimation are complex and struggle with rapidly changing channel
conditions. In this letter, we propose a deep encode-decode network
(DED-Net). It uses DL to automatically learn and eliminate channel
interference from OTFS signals. The framework employs a deep encoding
and decoding network, similar to a filter, learning complex signal
features to effectively remove interference. Our experiments demonstrate
DED-Net’s ability to eliminate interference in OTFS modulation signals,
offering an alternative to pilot-based methods and showcasing DL’s
potential for ISAC systems.