基于信号二值符号随机量化的窗函数估计谱功率密度的周期图

IF 1.9 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
V. Yakimov
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引用次数: 0

摘要

信号的频谱分析是研究各种物理性质的系统和物体的主要方法之一。在先验统计不确定性条件下,信号会受到随机变化和噪声的影响。这类信号的频谱分析包括功率谱密度(PSD)的估计。估计PSD的经典方法之一是周期图法。以数字形式实现该方法的算法是基于离散傅里叶变换的。在这些算法中,数字乘法运算是大量运算。窗口函数的使用导致这些操作的数量增加。乘法运算是最耗时的运算之一。它们是决定算法计算能力和乘法复杂度的主要因素。本文研究了利用窗函数计算PSD周期图估计的乘法复杂度问题。该问题是基于使用二进制符号随机量化将信号转换为数字形式来解决的。该双电平信号量化无系统误差。基于离散事件建模理论,将二符号随机量化的结果看作是由其值的变化决定的重要事件的时间顺序。对二符号随机量化结果的离散事件模型的使用,提供了从SPM周期图估计的模拟形式到离散形式计算SPM的数学过程中积分操作的解析计算。这些程序成为数字算法发展的基础。该算法的主要计算运算是加减算术运算。减少乘法运算的次数可以降低PSD估计的总体计算复杂度。通过数值实验研究了该算法的运行过程。它们是在对二符号随机量化离散事件过程进行仿真建模的基础上进行的。以一些最著名的窗函数为例,给出了PSD估计的计算结果。结果表明,利用该算法可以在低信噪比下,在加性白噪声存在的情况下,以较高的精度和频率分辨率计算PSD的周期图估计。该算法以功能独立的软件模块的形式进行实际实现。该模块可作为复杂计量意义软件的一部分,对复杂信号的频率组成进行运算分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Periodogram estimating the spectral power density based upon signals’ binary-sign stochastic quantization using window functions
Spectral analysis of signals is used as one of the main methods for studying systems and objects of various physical natures. Under conditions of a priori statistical uncertainty, the signals are subject to random changes and noise. Spectral analysis of such signals involves the estimation of the power spectral density (PSD). One of the classical methods for estimating PSD is the periodogram method. The algorithms that implement this method in digital form are based on the discrete Fourier transform. Digital multiplication operations are mass operations in these algorithms. The use of window functions leads to an increase in the number of these operations. Multiplication operations are among the most time consuming operations. They are the dominant factor in determining the computational capabilities of an algorithm and determine its multiplicative complexity. The paper deals with the problem of reducing the multiplicative complexity of calculating the periodogram estimate of the PSD using window functions. The problem is solved based on the use of binary-sign stochastic quantization for converting a signal into digital form. This two-level signal quantization is carried out without systematic error. Based on the theory of discrete-event modeling, the result of a binary-sign stochastic quantization in time is considered as a chronological sequence of significant events determined by the change in its values. The use of a discrete-event model for the result of binary-sign stochastic quantization provided an analytical calculation of integration operations during the transition from the analog form of the periodogram estimation of the SPM to the mathematical procedures for calculating it in discrete form. These procedures became the basis for the development of a digital algorithm. The main computational operations of the algorithm are addition and subtraction arithmetic operations. Reducing the number of multiplication operations decreases the overall computational complexity of the PSD estimation. Numerical experiments were carried out to study the algorithm operation. They were carried out on the basis of simulation modeling of the discrete-event procedure of binary-sign stochastic quantization. The results of calculating the PSD estimates are presented using a number of the most famous window functions as an example. The results obtained indicate that the use of the developed algorithm allows calculating periodogram estimates of PSD with high accuracy and frequency resolution in the presence of additive white noise at a low signal-to-noise ratio. The practical implementation of the algorithm is carried out in the form of a functionally independent software module. This module can be used as a part of complex metrologically significant software for operational analysis of the frequency composition of complex signals.
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来源期刊
Intelligenza Artificiale
Intelligenza Artificiale COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
3.50
自引率
6.70%
发文量
13
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