论文标题

低复杂性全场超快非线性动力学通过卷积特征分离建模方法预测

Low-complexity full-field ultrafast nonlinear dynamics prediction by a convolutional feature separation modeling method

论文作者

Yang, Hang, Zhao, Haochen, Niu, Zekun, Pu, Guoqing, Xiao, Shilin, Hu, Weisheng, Yi, Lilin

论文摘要

光纤中超快非线性动力学的建模和预测对于激光设计,实验优化和其他基本应用的研究至关重要。长期以来,基于非线性Schrödinger方程(NLSE)的传统传播建模方法一直被认为是非常耗时的,尤其是用于设计和优化实验。复发性神经网络(RNN)已被实现为具有降低复杂性和良好概括能力的精确强度预测工具。但是,应为更广泛的应用进一步优化长网格输入点的复杂性和神经网络结构的灵活性。在这里,我们提出了一种卷积特征分离建模方法,以预测具有低复杂性和高灵活性的全景超快非线性动力学,其中线性效应首先是通过NLSE衍生的方法建模的,然后为非线性模型实现了卷积深度学习方法。通过这种方法,非线性效应的时间相关性大大缩短,并且可以大大降低神经网络的参数和规模。运行时间比NLSE减少了94%,而RNN的降低为87%,而无需精确降低。此外,在预测过程中,可以灵活地更改输入脉冲条件,包括网格点数,持续时间,峰值和传播距离。结果代表了超快非线性动力学预测的显着改善,这项工作还提供了特征分离建模方法的新观点,可快速,灵活地研究其他领域的非线性特征。

The modeling and prediction of the ultrafast nonlinear dynamics in the optical fiber are essential for the studies of laser design, experimental optimization, and other fundamental applications. The traditional propagation modeling method based on the nonlinear Schrödinger equation (NLSE) has long been regarded as extremely time-consuming, especially for designing and optimizing experiments. The recurrent neural network (RNN) has been implemented as an accurate intensity prediction tool with reduced complexity and good generalization capability. However, the complexity of long grid input points and the flexibility of neural network structure should be further optimized for broader applications. Here, we propose a convolutional feature separation modeling method to predict full-field ultrafast nonlinear dynamics with low complexity and high flexibility, where the linear effects are firstly modeled by NLSE-derived methods, then a convolutional deep learning method is implemented for nonlinearity modeling. With this method, the temporal relevance of nonlinear effects is substantially shortened, and the parameters and scale of neural networks can be greatly reduced. The running time achieves a 94% reduction versus NLSE and an 87% reduction versus RNN without accuracy deterioration. In addition, the input pulse conditions, including grid point numbers, durations, peak powers, and propagation distance, can be flexibly changed during the predicting process. The results represent a remarkable improvement in the ultrafast nonlinear dynamics prediction and this work also provides novel perspectives of the feature separation modeling method for quickly and flexibly studying the nonlinear characteristics in other fields.

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