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Low Complexity Receiver Design Using Deep Neural Network Based on Compact Sparse AutoEncoder

机译:基于Compact Sparse AutoEncoder的深神经网络,低复杂性接收器设计

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摘要

In this letter, we demonstrate a novel strategy for designing a low complexity deep neural network (DNN) receiver. The compact-stacked Autoencoder (CSAE) receiver is designed based on the proposed neuron and layer numbers selection (NLNS) methodology. Compared with other DNN-based receiver, the CSAE receiver has low complexity but can achieve superior performance. Simulation results show that CSAE receiver can achieve or even outperform state of the art accuracy, and furthermore, the proposed receiver provides a robust performance against the phase offset, carrier frequency offset (CFO), and imperfect channel state information (ICSI).
机译:在这封信中,我们展示了设计低复杂性深度神经网络(DNN)接收器的新策略。基于所提出的神经元和层数选择(NLNS)方法,设计了紧凑堆叠的AutoEncoder(CSAE)接收器。与其他基于DNN的接收器相比,CSAE接收器的复杂性低,但可以实现优越的性能。仿真结果表明,CSAE接收器可以实现或甚至优异的技术精度的状态,此外,所提出的接收器对相位偏移,载波频率偏移(CFO)和不完美信道状态信息(ICSI)提供了鲁棒性能。

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