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混沌噪声背景下微弱脉冲信号的检测及恢复
引用本文:苏理云,孙唤唤,王杰,阳黎明.混沌噪声背景下微弱脉冲信号的检测及恢复[J].物理学报,2017,66(9):90503-090503.
作者姓名:苏理云  孙唤唤  王杰  阳黎明
作者单位:重庆理工大学理学院, 重庆 400054
基金项目:国家自然科学基金(批准号:11471060)和重庆市科委基础与前沿研究计划项目(批准号:cstc2014jcyjA40003)资助的课题.
摘    要:构建了一种在混沌噪声背景下检测并恢复微弱脉冲信号的模型.首先,基于混沌信号的短期可预测性及其对微小扰动的敏感性,对观测信号进行相空间重构、建立局域线性自回归模型进行单步预测,得到预测误差,并利用假设检验方法从预测误差中检测观测信号中是否含有微弱脉冲信号.然后,对微弱脉冲信号建立单点跳跃模型,并融合局域线性自回归模型,构成双局域线性(DLL)模型,以极小化DLL模型的均方预测误差为目标进行优化,采用向后拟合算法估计模型的参数,并最终恢复出混沌噪声背景下的微弱脉冲信号.仿真实验结果表明本文所建的模型能够有效地检测并恢复出混沌噪声背景中的微弱脉冲信号.

关 键 词:混沌噪声  微弱脉冲信号检测  局域线性自回归模型  双局域线性模型
收稿时间:2016-11-10

Detection and estimation of weak pulse signal in chaotic background noise
Su Li-Yun,Sun Huan-Huan,Wang Jie,Yang Li-Ming.Detection and estimation of weak pulse signal in chaotic background noise[J].Acta Physica Sinica,2017,66(9):90503-090503.
Authors:Su Li-Yun  Sun Huan-Huan  Wang Jie  Yang Li-Ming
Institution:School of Science, Chongqing University of Technology, Chongqing 400054, China
Abstract:As is well known, people has been suffering noise interference for a long time, and more and more researches show that a lot of weak signals such as pulse signal are embedded in the strong chaotic noise. The purpose of weak signal detection and recovery is to retrieve useful signal from strong noise. It is very difficult to detect and estimate the weak pulse signal which is mixed in the chaotic background interference. Therefore, the detection and recovery of weak signal are significant and have application value in signal processing area, especially for the weak pulse signal detection and recovery. By studying various methods of detecting and estimating the weak pulse signal in strong chaotic background noise, in this paper, we propose an efficient hybrid processing technique. First, based on the short-term predictability and sensitivity to the tiny disturbance, a new method is proposed, which can be used for detecting and estimating the weak pulse signals in chaotic background that the nonlinear mapping is unknown. We reconstruct a phase space according to Takens delay embedding theorem; then we establish the local linear autoregressive model to predict the short-term chaotic signal and obtain the fitting error, and judge whether there are weak pulse signals. Second, we establish a single-jump model for pulse signals, and combine the local linear autoregressive model with it to build a double local linear (DLL) model for estimating the weak pulse signal. DLL model contains two parameters, and the two parameters affect each other. We use the back-fitting algorithm to estimate model parameters and ultimately recover the weak pulse signals. Detecting and estimating the pulse signals in chaotic background turns into estimating the parameters of DLL model. The minimum fitting error criterion is used as the objective function to estimate the parameters of the DLL model. To make the estimation more exact, we can use the formula of mean square error. The new algorithm presented here in this paper does not need to know the prior knowledge of the chaotic background nor weak pulse signal, and this algorithm is also simple and effective. Finally, the simulation results show that the method is effective for detecting and estimating the weak pulse signals based on the chaotic background noise. Specifically, the weak pulse signal can be extracted well with low SNR and the minimum mean square error or the minimum normalized mean squared error is very low.
Keywords:chaotic noise  weak pulse signal detection  local linear autoregressive model  double local linear model
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