首页> 外文会议>International symposium on test and measurement >A New Method for Analyzing Nonstationary Signal by Time-Dependent ARMA Modeling
【24h】

A New Method for Analyzing Nonstationary Signal by Time-Dependent ARMA Modeling

机译:通过时间依赖ARMA建模分析非间断信号的新方法

获取原文

摘要

Parametric spectral estimation has received much attention. Its main advantages are an improved accuracy at high signal-to-noise ratios, especially for short data samples, and the flexibility of analysis and synthesis. The models may be used to analyze the signal, leading to an estimation of the power spectral density of the signal, and subsequently a signal having the same spectral characteristics as the original one may be synthesized. This is what makes the parametric approach so attractive for various fields. However, a strong limitation of these methods lies in the necessary assumption of a stationary signal. One way to overcome this difficulty in speech analysis is to perform the identification of the model over short segments, but this requires a compromise between the accuracy that can be achieved with a short data segment and the faithfulness with which the spectrum must be followed. This is one reason why we need parametric methods valid for nonstationary signals. Modeling of nonstationary signals can be achieved through time-dependent autoregressive moving-average (ARMA) models, by the use of a limited series expansion of the time-varying coefficients in the models. This method leads to an extension of several well-known techniques of stationary spectral estimation to the nonstationary case. Nevertheless, their applications are very limited, which are applied upon very simple nonstationary signals. In this paper, a new method for analyzing nonstationary signals by time-dependent ARMA modeling is presented. It includes two procedures. First, using some signal decomposition method, any complicated nonstationary signal can be decomposed into a finite and often small number of basic components. This decomposition method is adaptive, and therefore, highly efficient. Since the decomposition is based on the local characteristic time scale of the data, it is applicable to nonlinear and nonstationary processes. Second, a specially processed time-dependent ARMA model which has time-varying parameters assumed to be linear combinations of a set of basis time-varying functions in the left and constant parameters in the right is established in any of these basic components. The feedback linear estimation is used to estimate the parameters of ARMA model, and gets their time-frequency spectrum. The method is simple, and can save computation time and storage space. An example from simulation experiment is given to demonstrate the power of this new method. This presented method can analyze complicated nonlinear and nonstationary signal. Finally, the related problems that need further study in this field are pointed out, too.
机译:参数谱估计受到了很多关注。其主要优点是在高信噪比下提高精度,特别是对于短数据样本以及分析和合成的灵活性。该模型可用于分析信号,从而估计信号的功率谱密度,并且随后可以合成具有与原始频谱特性相同的光谱特性的信号。这是使参数化方法如此吸引人的各种领域。然而,对这些方法的强烈限制在于静止信号的必要假设。克服言语分析中这种困难的一种方法是在短段上执行模型的识别,但这需要通过短数据段可以实现的精度和必须遵循频谱的忠诚来实现妥协。这是我们需要参数化方法对非标准信号有效的原因。通过使用模型中的时变系数的有限系数扩展,可以通过时间依赖的自回归移动平均(ARMA)模型来实现非间抗信号的建模。该方法导致几种众所周知的静态谱估计技术的延伸到非间断情况。尽管如此,它们的应用非常有限,这在非常简单的非间断信号上应用。本文提出了一种通过时间依赖的ARMA建模分析非间断信号的新方法。它包括两个程序。首先,使用一些信号分解方法,任何复杂的非间断信号都可以分解成有限且通常少量的基本组件。这种分解方法是自适应的,因此高效。由于分解基于数据的局部特征时间尺度,因此它适用于非线性和非间断过程。其次,在这些基本组件中的任何一个中建立了一个特殊处理的时间依赖的ARMA模型,其假设具有左边的左侧和恒定参数的一组基准变化函数的线性组合。反馈线性估计用于估计ARMA模型的参数,并获得它们的时频谱。该方法很简单,可以节省计算时间和存储空间。给出了仿真实验的一个例子来证明这种新方法的力量。该提出的方法可以分析复杂的非线性和非间平信号。最后,指出了在该领域进一步研究的相关问题。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号