A Comprehensive Survey of Channel Estimation Techniques for OTFS in 6G and Beyond Wireless Networks
Emir Aslandogan, Haci Ilhan, Burak Ahmet Ozden, Erdogan Aydin, Ertugrul Basar, Miaowen Wen, Marco Di Renzo, Vincent Poor

TL;DR
This survey comprehensively reviews channel estimation techniques for OTFS modulation in high-mobility 6G wireless networks, highlighting recent advances, challenges, and integration with emerging technologies.
Contribution
It systematically analyzes various CE methods for OTFS, including Bayesian, deep learning, and joint detection strategies, and discusses implementation challenges and future directions.
Findings
OTFS offers robust channel estimation in high-mobility scenarios.
Deep learning-based CE approaches show promising performance.
Integration with MIMO, mmWave, and RIS enhances OTFS capabilities.
Abstract
Orthogonal time-frequency space (OTFS) modulation has emerged as a powerful wireless communication technology that is specifically designed to address the challenges of high-mobility scenarios and significant Doppler effects. Unlike conventional modulation schemes that operate in the time-frequency (TF) domain, OTFS projects signals to the delay-Doppler (DD) domain, where wireless channels exhibit sparse and quasi-static characteristics. This fundamental transformation enables superior channel estimation (CE) performance in challenging propagation environments characterized by high-mobility, severe multipath effects, and rapidly time-varying channel conditions. This article provides a systematic examination of CE techniques for OTFS systems, covering the extensive research landscape from foundational methods to cutting-edge approaches. We present a detailed analysis of DD and TF domain…
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Taxonomy
TopicsPAPR reduction in OFDM · Advanced Wireless Communication Technologies · Radar Systems and Signal Processing
