TY - GEN
T1 - Online Segmented Recursive Least-Squares for Multipath Doppler Tracking
AU - Choi, Jae Won
AU - Chowdhary, Girish
AU - Singer, Andrew C.
AU - Vishnu, Hari
AU - Weiss, Amir
AU - Wornell, Gregory W.
AU - Deane, Grant
N1 - Publisher Copyright:
© 2022 IEEE.
PY - 2022
Y1 - 2022
N2 - Underwater communication signals typically suffer from distortion due to motion-induced Doppler. Especially in shallow water environments, recovering the signal is challenging due to the time-varying Doppler effects distorting each path differently. However, conventional Doppler estimation algorithms typically model uniform Doppler across all paths and often fail to provide robust Doppler tracking in multipath environments. In this paper, we propose a dynamic programming-inspired method, called online segmented recursive least-squares (OSRLS) to sequentially estimate the time-varying non-uniform Doppler across different multipath arrivals. By approximating the nonlinear time distortion as a piece-wise-linear Markov model, we formulate the problem in a dynamic programming framework known as segmented least-squares (SLS). In order to circumvent an ill-conditioned formulation, perturbations are added to the Doppler model during the linearization process. The successful operation of the algorithm is demonstrated in a simulation on a synthetic channel with time-varying non-uniform Doppler.
AB - Underwater communication signals typically suffer from distortion due to motion-induced Doppler. Especially in shallow water environments, recovering the signal is challenging due to the time-varying Doppler effects distorting each path differently. However, conventional Doppler estimation algorithms typically model uniform Doppler across all paths and often fail to provide robust Doppler tracking in multipath environments. In this paper, we propose a dynamic programming-inspired method, called online segmented recursive least-squares (OSRLS) to sequentially estimate the time-varying non-uniform Doppler across different multipath arrivals. By approximating the nonlinear time distortion as a piece-wise-linear Markov model, we formulate the problem in a dynamic programming framework known as segmented least-squares (SLS). In order to circumvent an ill-conditioned formulation, perturbations are added to the Doppler model during the linearization process. The successful operation of the algorithm is demonstrated in a simulation on a synthetic channel with time-varying non-uniform Doppler.
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U2 - 10.1109/UComms56954.2022.9905690
DO - 10.1109/UComms56954.2022.9905690
M3 - Conference contribution
AN - SCOPUS:85141650794
T3 - 2022 6th Underwater Communications and Networking Conference, UComms 2022
BT - 2022 6th Underwater Communications and Networking Conference, UComms 2022
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 6th Underwater Communications and Networking Conference, UComms 2022
Y2 - 30 August 2022 through 1 September 2022
ER -