电信号多通道结构分析基础

E. Vorobyev, V. Antonov, N. Ivanov, V. Naumov, A. Soldatov
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引用次数: 1

摘要

报警过程信号现有的结构不确定性,主要包括模型维度的未知和过程项类型的不确定性,这就要求信号识别采用能够在先验不确定性条件下工作的特殊方法和模型。结构模型的分辨率受输入信号的采样频率、有效核心滤波器各分量的竞争、信号样本的模间抽取、剩余样本的抽取以及初始滤波器的阶数等因素的影响。随着滤波器阶数的增加,信号处理窗口也随之增加,因此不合理地增加自适应滤波器阶数是不可取的。本文讨论了一种基于多通道自适应滤波器的自适应结构分析新方法。多通道结构的优点是可以在滤波器的模型抽取中使用不同的步骤。
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Fundamentals of Multichannelstructural Analysis of Electrical Signals
The existing structural uncertainty of the alarm process signal, which consists in the unknown dimension of the model and the uncertainty of the type of the process terms, requires the use of special methods and models of signal recognition that can work under conditions of a priori uncertainty. The resolution of the structural model is affected by the sampling frequency of the input signal, the competition of the components of the effective core filter, the intermodel decimation of the signal samples, the decimation of the residual samples, and the order of the initial filter. As the filter order increases, the signal processing window increases, so an unjustified increase in the order of the adaptive filter is undesirable. This report discusses a new approach to adaptive structural analysis based on a multi-channel adaptive filter. The advantages of multi-channel structures are the possibility of a different step within the model decimation in the filters.
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