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Analysis of complex extreme learning machine-based nonlinear equalizer for coherent optical OFDM systems

机译:基于复杂极限学习机的相干光OFDM系统非线性均衡器分析

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One major drawback of coherent optical OFDM (CO-OFDM) is its vulnerability to nonlinear fiber effects due to its high peak-to-average power ratio. Fiber nonlinearities can be mitigated using machine learning algorithms that are a nonlinear decision classifier. In this study, C-ELM based nonlinear equalizer is proposed for a MQAM CO-OFDM. MQAM CO-OFDM systems are simulated by designing a Monte Carlo simulation. In this simulation, the effect of fiber nonlinearities on received signals is demonstrated with constellation diagrams and results are given in form of BER-Fiber Length variations.
机译:相干光OFDM(CO-OFDM)的一个主要缺点是由于其高峰均功率比而容易受到非线性光纤影响。可以使用作为非线性决策分类器的机器学习算法来缓解光纤的非线性。在这项研究中,针对MQAM CO-OFDM提出了基于C-ELM的非线性均衡器。 MQAM CO-OFDM系统通过设计蒙特卡洛仿真来仿真。在此仿真中,通过星座图展示了光纤非线性对接收信号的影响,并以BER-光纤长度变化的形式给出了结果。

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