Unveil the time delay signature of optical chaos systems with a convolutional neural network
Yetao Chen, Ronghuan Xin, Mengfan Cheng, Xiaojing Gao, Shanshan Li, Weidong Shao, Lei Deng, Minming Zhang, Songnian Fu, Deming Liu
Abstract
We propose a time delay signature extraction method for optical chaos systems based on a convolutional neural network. Through transforming the time delay signature of a one-dimensional time series into two-dimensional image features, the excellent ability of convolutional neural networks for image feature recognition is fully utilized. The effectiveness of the method is verified on chaos systems with opto-electronic feedback and all optical feedback. The recognition accuracy of the method is 100% under normal conditions. For the system with extremely strong nonlinearity, the accuracy can be 93.25%, and the amount of data required is less than traditional methods. Moreover, it is verified that the proposed method possesses a strong ability to withstand the effects of noise.