A compressed sensing(CS) based channel estimation algorithm is proposed by using the delay-Doppler sparsity of the fast fading channel.A compressive basis expansion channel model with sparsity in both time and frequ...A compressed sensing(CS) based channel estimation algorithm is proposed by using the delay-Doppler sparsity of the fast fading channel.A compressive basis expansion channel model with sparsity in both time and frequency domains is given.The pilots in accordance with a novel random pilot matrix in both time and frequency domains are sent to measure the delay-Doppler sparsity channel.The relatively nonzero channel coefficients are tracked by random pilots at a sampling rate significantly below the Nyquist rate.The sparsity channels are estimated from a very limited number of channel measurements by the basis pursuit algorithm.The proposed algorithm can effectively improve the channel estimation performance when the number of pilot symbols is reduced with improvement of throughput efficiency.展开更多
正交时频空(Orthogonal Time and Frequency Space, OTFS)作为6G候选调制方案,旨在支持下一代无线通信系统在高速移动场景的异构性需求。为解决系统硬件成本高昂和功耗高的问题,构建了低精度量化OTFS系统,并推导了b-bit量化最小均方误差...正交时频空(Orthogonal Time and Frequency Space, OTFS)作为6G候选调制方案,旨在支持下一代无线通信系统在高速移动场景的异构性需求。为解决系统硬件成本高昂和功耗高的问题,构建了低精度量化OTFS系统,并推导了b-bit量化最小均方误差(Minimum Mean Square Error, MMSE)检测矩阵。通过加性量化噪声模型(Additive Quantization Noise Model, AQNM)推导系统输入-输出关系,并基于MMSE接收机评估系统误比特率(Bit Error Rate, BER)和可达速率性能。仿真结果表明,4-bit量化较全精度量化系统性能在BER=10^(-2)处损失约1 dB,可达速率减小约0.98%;8-bit量化与全精度量化的可达速率相当,验证了分析结果的有效性。展开更多
基金supported by the National Natural Science Foundation of China(60972056)the Innovation Foundation of Shanghai Education Committee(09ZZ89)Shanghai Leading Academic Discipline Project and STCSM(S30108and08DZ2231100)
文摘A compressed sensing(CS) based channel estimation algorithm is proposed by using the delay-Doppler sparsity of the fast fading channel.A compressive basis expansion channel model with sparsity in both time and frequency domains is given.The pilots in accordance with a novel random pilot matrix in both time and frequency domains are sent to measure the delay-Doppler sparsity channel.The relatively nonzero channel coefficients are tracked by random pilots at a sampling rate significantly below the Nyquist rate.The sparsity channels are estimated from a very limited number of channel measurements by the basis pursuit algorithm.The proposed algorithm can effectively improve the channel estimation performance when the number of pilot symbols is reduced with improvement of throughput efficiency.
文摘正交时频空(Orthogonal Time and Frequency Space, OTFS)作为6G候选调制方案,旨在支持下一代无线通信系统在高速移动场景的异构性需求。为解决系统硬件成本高昂和功耗高的问题,构建了低精度量化OTFS系统,并推导了b-bit量化最小均方误差(Minimum Mean Square Error, MMSE)检测矩阵。通过加性量化噪声模型(Additive Quantization Noise Model, AQNM)推导系统输入-输出关系,并基于MMSE接收机评估系统误比特率(Bit Error Rate, BER)和可达速率性能。仿真结果表明,4-bit量化较全精度量化系统性能在BER=10^(-2)处损失约1 dB,可达速率减小约0.98%;8-bit量化与全精度量化的可达速率相当,验证了分析结果的有效性。