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Robust MLSD for Wideband SIMO Systems with One-Bit ADCs: Reinforcement-Learning Approach

机译:具有一位ADC的宽带SIMO系统的强大MLSD:加固学习方法

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This paper considers a wideband single-input multiple-output (SIMO) system with one-bit analog-to-digital converters (ADCs). In this system, a robust maximum-likelihood-sequence-detector (MLSD) is proposed under imperfect channel state information at receiver (CSIR). Inspired by reinforcement learning theory, the key idea of the proposed detector is to enhance the reliability of detection metrics by exploiting a data set that consists of previously detected information symbols and the one-bit quantized outputs. By learning the conditional probability mass function of the system with the data set, the proposed MLSD algorithm reduces a model error in the computation of the detection metrics, which is caused by imperfect CSIR. In simulations, it is shown that the proposed MLSD provides a significant gain in terms of frame-error-rates compared to the conventional MLSD algorithm under imperfect CSIR.
机译:本文考虑了具有单位模数转换器(ADC)的宽带单输入多输出(SIMO)系统。在该系统中,在接收器(CSIR)的不完美信道状态信息下提出了一种鲁棒的最大似然序列检测器(MLSD)。通过加强学习理论的启发,所提出的检测器的关键思想是通过利用由先前检测到的信息符号和单位量化输出的数据集来增强检测度量的可靠性。通过使用数据集学习系统的条件概率质量功能,所提出的MLSD算法在检测度量的计算中减少了模型误差,这是由不完美的CSIR引起的。在仿真中,显示所提出的MLSD与帧误差率相比,与在不完全CSIR下的传统MLSD算法相比提供了显着的增益。

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