Low Complexity Receiver Design for Orthogonal Time Frequency Space Systems
Orthogonal Time Frequency Space(OTFS)can convert the doubly-selective channels into non-selective channels in the Delay-Doppler(DD)domain,which provides a solution for establishing reliable wireless communication in high-mobility scenarios.However,serious Inter-Doppler Interference(IDI)exists in complex multi-scattering scenarios such as internet of vehicles,which brings great challenges to the accurate demodulation of OTFS receiver signals.To solve these problems,a kind of joint Sparse Bayesian Learning(SBL)and damped Least Square Minimum Residual(d-LSMR)OTFS receiver is proposed.Firstly,based on the relationship between OTFS time domain and DD domain,the channel estimation problem is transformed into a Basis Expansion Model(BEM)to accurately estimate DD domain channels including Doppler sampling points.Then,an efficient conversion algorithm is proposed to convert the basis coefficients into channel equivalent matrix.Additionally,the noise estimated in channel estimation is used in d-LSMR equalizer,and the sparse channel matrix in DD domain is adopted to achieve fast convergence.System simulation results show that compared with the current representative OTFS receiver,the proposed scheme achieves better bit error rate performance and reduces the computational complexity.
Orthogonal Time Frequency Space(OTFS)Channel estimationChannel equalizationHigh-mobility scenariosSparse Bayesian learningBasis Expansion Model(BEM)