高速信道CTLE逆设计的可逆神经网络

M. A. Dolatsara, Huan Yu, J. Hejase, Wiren Dale Becker, M. Swaminathan
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引用次数: 4

摘要

高速信道的CTLE设计复杂且耗时。为了解决这一问题,本文研究了可逆神经网络(INNs)在CTLE反设计中的应用。在该方法中,给出期望的眼高和眼宽,并找到相应的CTLE峰值频率和增益值。INN是一种特殊类型的神经网络,可以在正向和反向上遍历。这种网络的一个优点是根据期望的输出产生输入变量的分布。该特性使算法能够在产生多模态分布时提供多个解决方案。因此,用户可以根据其他约束选择合适的解决方案。给出了一种基于SerDes通道的CTLE反设计的数值算例,该反设计结果精度中等。然而,该示例的其他变体表明,准确性与情况有关,这意味着需要对算法进行改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Invertible Neural Networks for Inverse Design of CTLE in High-speed Channels
Designing CTLE of high-speed channels can be complicated and time consuming. To alleviate this issue, this paper investigates the invertible neural networks (INNs) for inverse design of the CTLE. In this approach, a desired eye height and eye width is given, and the algorithm finds the corresponding peaking frequency and gain value of the CTLE. INN is a special type of neural networks that can be traversed in both forward and reverse directions. An advantage of this network is producing distribution of the input variables based on the desired output. This feature enables the algorithm to provide multiple solutions when a multi-modal distribution is produced. Thus, the user can choose the appropriate solution based on other constraints. A numerical example for inverse design of CTLE of a SerDes channel is provided, which results in moderate accuracy. However, other variations of the example show that the accuracy is case dependent which implies improvements on the algorithm is needed.
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