非线性卫星信道接收机设计:压缩星座上的均衡器训练和符号检测

M. Bauduin, S. Massar, F. Horlin
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引用次数: 5

摘要

由于卫星上可用的能量很少,功率放大器必须在受限的电源下工作,这限制了它的最大输出功率。为了确保接收端有足够的信噪比,放大器必须工作在接近饱和点的位置。这是节能的,但不幸的是,在通信信道中增加了非线性失真。已经提出了几种算法来均衡这种非线性信道。文献中应用最广泛的是基带Volterra滤波器。近年来,来自人工神经网络领域的回声状态网络(回声状态网络,ESN)也表现出了同样出色的性能。为了补偿这个信道,两个均衡器在训练序列的帮助下调整它们的系数,以恢复发射的星座点。我们将表明,通常的检测,基于欧几里得距离,不再是最优的。本文的目的是首先提出一个满足最大似然(ML)准则的新的检测准则。其次,我们将提出对训练参考点的修改,以提高这些均衡器的性能,使基于欧几里得距离的检测再次达到最优。最后一种解决方案可以在不增加均衡器复杂性的情况下显著降低误码率(BER)。只有新的训练参考点必须进行评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Receiver design for non-linear satellite channels: Equalizer training and symbol detection on the compressed constellation
Because of the small energy available aboard a satellite, the power amplifier must work with a restricted power supply which limits its maximum output power. To ensure a sufficient signal-to-noise power ratio (SNR) at the receiving side, the amplifier must work close to the saturation point. This is power efficient but, unfortunately, adds non-linear distortions in the communication channel. Several algorithms have been proposed to equalize this non-linear channel. The most widely used in the literature is the baseband Volterra filter. Recently, the Echo State Network (ESN), coming from the artificial neural network field, has been shown to perform equally well. To compensate for this channel, both equalizers adapt their coefficients with the help of a training sequence in order to recover the transmitted constellation points. We will show that, the usual detection, based on Euclidean distances, is no longer optimal. The aim of this paper is to first propose a new detection criterion which meets with the Maximum Likelihood (ML) criterion. Secondly, we will propose a modification of the training reference points to improve the performances of these equalizers and make the detection based on Euclidean distances optimal again. This last solution can offer a significant reduction of the Bit Error Rate (BER) without increasing the equalizers complexity. Only the new training reference points must be evaluated.
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