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A Direct Learning Approach for Neural Network Based Pre-Distortion for Coherent Nonlinear Optical Transmitter

机译:基于神经网络的连贯非线性光发射机的神经网络预失真的直接学习方法

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摘要

High throughput coherent optical transmitters are key components in future optical communication infrastructure. However, these transmitters are often distorted with the non-linearity of their components. A potential approach for compensating nonlinearity is by applying digital pre-distortion methods based on the Volterra series or one of its derivatives. However, the Volterra series-based solution is complex to implement, difficult to scale, and its simplified versions may not yield the desired performance. Recently digital pre distortion solutions based on neural networks were proposed, which may benefit from the generality of neural networks and can be more easily scaled. These solutions are often based on non-standard neural network architectures which require complex neurons-based architectures or being based on indirect training approach which suffer from noise enhancement. In this article, a novel method for neural network-based pre-distortion with direct learning is proposed. The direct learning with neural network does not assume a specific transmitter model and does not suffer from noise enhancement. The method assumes standard neural network inference architecture and is applied to a coherent nonlinear optical transmitted with long-short-term memory neural network. The overall performance and complexity of the direct learning method is compared with the indirect approach and with the Volterra series-based solution, showing significant advantage in performance, especially in cases of severe nonlinearity and noise conditions.
机译:高吞吐量相干光发射器是未来光通信基础设施中的关键组件。然而,这些发射器通常与其组件的非线性扭曲。通过基于Volterra系列或其衍生物之一的基于Volterra系列或其中一个衍生物应用数字预失真方法的潜在方法。然而,基于Volterra系列的解决方案是复杂的,难以扩大,其简化版本可能不会产生所需的性能。最近提出了基于神经网络的数字预失真解决方案,其可以从神经网络的一般性中受益,并且可以更容易地缩放。这些解决方案通常基于非标准神经网络架构,其需要基于复杂的神经元的架构或基于患有噪声增强的间接训练方法。在本文中,提出了一种基于神经网络的基于神经网络的预失真的新方法。与神经网络的直接学习不假设特定的发射机模型,并且不会遭受噪声增强。该方法采用标准神经网络推理架构,并应用于具有长短期存储器神经网络的相干非线性光学传输。直接学习方法的整体性能和复杂性与间接方法和基于Volterra系列的解决方案进行了比较,表现出显着的性能优势,特别是在严重非线性和噪声条件的情况下。

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