...
首页> 外文期刊>Optical and quantum electronics >Performance analysis of Wilcoxon-based machine learning nonlinear equalizers for coherent optical OFDM
【24h】

Performance analysis of Wilcoxon-based machine learning nonlinear equalizers for coherent optical OFDM

机译:基于Wilcoxon的相干光OFDM机器学习非线性均衡器的性能分析

获取原文
获取原文并翻译 | 示例
           

摘要

In the recent research on the mitigation of nonlinearities in CO-OFDM systems, it has been seen that various types of non-robust algorithms (based on minimization of least square error principle) are used for learning of nonlinear equalizer. Moreover, it is well known that performance of nonlinear equalizer learned by robust algorithms is not easily affected by the outliers. In this paper, some robust algorithms such as Wilcoxon Multilayer Perceptron (WMLP), Wilcoxon Generalized Radial Basis function (WGRBF) and Wilcoxon Robust Extreme Learning Machine (WRELM) for the performance enhancement of CO-OFDM system have been analyzed. Subsequently, the performance enhancement capability of both the algorithms i.e., robust and non-robust has been compared in this study. It has been observed that the nonlinear equalizers trained with Wilcoxon approach based learning algorithm offer improved performance in terms of Q-Factor as compared to non-robust algorithms. In this study K-means machine learning based training algorithm is used to cluster the points at their desired locations. From obtained numerical results, it has been observed that the improvement in Q-Factor with Wilcoxon multilayer perceptron algorithm w.r.t its non-robust solution is similar to 0.65 dB which is significantly higher than the value similar to 0.2 dB with both the other mentioned robust algorithms w.r.t their non-robust counterparts. From the comparison of robust algorithms performance on the basis of convergence rate, it has been professed that the WRELM converges 100 and 7 times faster than WMLP and WGRBF respectively.
机译:在关于减轻CO-OFDM系统中的非线性的最新研究中,已经看到各种类型的非鲁棒算法(基于最小二乘方误差原理的最小化)被用于非线性均衡器的学习。而且,众所周知,由鲁棒算法学习的非线性均衡器的性能不容易受到异常值的影响。本文分析了一些健壮的算法,例如用于增强CO-OFDM系统性能的Wilcoxon多层感知器(WMLP),Wilcoxon广义径向基函数(WGRBF)和Wilcoxon鲁棒极限学习机(WRELM)。随后,在本研究中比较了两种算法的性能增强能力,即鲁棒性和非鲁棒性。已经观察到,与非鲁棒算法相比,使用基于Wilcoxon方法的学习算法训练的非线性均衡器在Q因子方面提供了更高的性能。在这项研究中,基于K均值机器学习的训练算法用于将点聚类在它们所需的位置。从获得的数值结果中,已经观察到,使用Wilcoxon多层感知器算法对Q因子的改进,其非稳健解近似于0.65 dB,这明显高于其他两个稳健算法的近似于0.2 dB的值。他们不稳健的同行。从基于收敛速度的鲁棒算法性能比较来看,WRELM的收敛速度分别比WMLP和WGRBF快100倍和7倍。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号