Zhou Cangtao, Cai Tianxing, Heng Lai Choy, Wang Xingang, Lai Ying-Cheng
Temasek Laboratories, National University of Singapore, Singapore 117508.
Chaos. 2008 Mar;18(1):013104. doi: 10.1063/1.2827500.
Detecting a weak signal from chaotic time series is of general interest in science and engineering. In this work we introduce and investigate a signal detection algorithm for which chaos theory, nonlinear dynamical reconstruction techniques, neural networks, and time-frequency analysis are put together in a synergistic manner. By applying the scheme to numerical simulation and different experimental measurement data sets (Henon map, chaotic circuit, and NH(3) laser data sets), we demonstrate that weak signals hidden beneath the noise floor can be detected by using a model-based detector. Particularly, the signal frequencies can be extracted accurately in the time-frequency space. By comparing the model-based method with the standard denoising wavelet technique as well as supervised principal components analysis detector, we further show that the nonlinear dynamics and neural network-based approach performs better in extracting frequencies of weak signals hidden in chaotic time series.
从混沌时间序列中检测微弱信号是科学与工程领域普遍关注的问题。在这项工作中,我们介绍并研究了一种信号检测算法,该算法将混沌理论、非线性动力学重构技术、神经网络和时频分析以协同的方式结合在一起。通过将该方案应用于数值模拟和不同的实验测量数据集(亨农映射、混沌电路和NH(3)激光数据集),我们证明了使用基于模型的探测器可以检测出隐藏在噪声本底之下的微弱信号。特别是,可以在时频空间中准确提取信号频率。通过将基于模型的方法与标准去噪小波技术以及有监督主成分分析探测器进行比较,我们进一步表明,基于非线性动力学和神经网络的方法在提取混沌时间序列中隐藏的微弱信号频率方面表现更好。