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Joint Blind Estimation of PN Codes and Channels for Long-Code DSSS Signals in Multiple Paths at Low SNR

机译:低SNR中多路径中的长码DSSS信号的PN代码和信道的联合盲估计

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In this paper, for the long-code direct sequence spread spectrum (DSSS) signal in multipath channels at the low signal-to-noise ratio (SNR), we propose a joint blind estimation method for pseudorandom (PN) codes and channels without any given code sequences. First, we convert the received long-code DSSS signal to an approximate equivalent short-code DSSS model. Then, based on the new model, we derive the maximum likelihood estimate (MLE) of the information symbols and spreading waveforms. Based on the estimated spreading waveforms, we establish the ML model of PN codes and channels and then obtain their MLE by iteratively transforming the ML model and using the iterative least-squares projection (ILSP) method. The simulation results show that at the low signal-to-noise ratio (SNR), the proposed method provides superior estimation performance of information symbols and PN codes to that of the blind algorithms for Gaussian channels; thus, for channel estimation it outperforms the semiblind estimation method with the sufficient received data.
机译:在本文中,用于长码的直接序列扩频(DSSS)中在低信噪比(SNR)多径信道信号,我们提出了伪随机(PN)码和信道而没有任何接头盲估计方法定的代码序列。首先,我们将接收到的长码DSSS信号近似相等的短码DSSS模型。然后,基于新的模型,我们得到的信息符号和传播波形的最大似然估计(MLE)。基于所估计的传播波形,我们建立的PN码和信道的ML模型,然后通过迭代地将所述ML模型和使用迭代最小二乘投影(ILSP)方法获得它们的MLE。仿真结果表明,在低信噪比(SNR),所提出的方法提供的信息码元和PN码到的盲算法高斯信道的优越估计性能;因此,用于信道估计它优于与足够的接收数据的半盲估计方法。

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