Sui Hao, Zhu Hongna, Luo Bin, Taccheo Stefano, Zou Xihua, Yan Lianshan
Opt Lett. 2022 Aug 1;47(15):3912-3915. doi: 10.1364/OL.460489.
A physics-based deep learning (DL) method termed Phynet is proposed for modeling the nonlinear pulse propagation in optical fibers totally independent of the ground truth. The presented Phynet is a combination of a handcrafted neural network and the nonlinear Schrödinger physics model. In particular, Phynet is optimized through physics loss generated by the interaction between the network and the physical model rather than the supervised loss. The inverse pulse propagation problem is leveraged to exemplify the performance of Phynet when in comparison to the typical DL method under the same structure and datasets. The results demonstrate that Phynet is able to precisely restore the initial pulse profiles with varied initial widths and powers, while revealing a similar prediction accuracy compared with the typical DL method. The proposed Phynet method can be expected to break the severe bottleneck of the traditional DL method in terms of relying on abundant labeled data during the training phase, which thus brings new insight for modeling and predicting the nonlinear dynamics of the fibers.
提出了一种基于物理的深度学习(DL)方法,称为Phynet,用于对光纤中的非线性脉冲传播进行建模,完全独立于真实情况。所提出的Phynet是手工制作的神经网络和非线性薛定谔物理模型的结合。特别地,Phynet是通过网络与物理模型之间的相互作用产生的物理损失而不是监督损失来优化的。与相同结构和数据集下的典型DL方法相比,利用逆脉冲传播问题来例证Phynet的性能。结果表明,Phynet能够精确恢复具有不同初始宽度和功率的初始脉冲轮廓,同时与典型DL方法相比显示出相似的预测精度。所提出的Phynet方法有望打破传统DL方法在训练阶段依赖大量标记数据方面的严重瓶颈,从而为光纤非线性动力学的建模和预测带来新的见解。