Application of Random Functions to Assess the Influence of Quantization Error on the Signal RMS

A. Serov, D. Chumachenko, A. Shatokhin
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引用次数: 1

Abstract

In modern digital measurement devices to obtain samples in the signal measurement channel, analog-to-digital converters (ADCs) are applied. Real ADCs have finite resolution, which results in time domain to the quantization error effect (so called quantization noise). Regardless of the applied measurement method, the quantization noise results to measurement error of RMS, active power, complex spectrum and other. A research of influence on the ADC parameters (resolution, sampling frequency, input range, ADC architecture type) to the RMS measurement error is carried out. It is established that the most important ADC parameters are resolution and sampling frequency. The proposed RMS error estimating method is based on the application of a parabolic interpolation polynomial function (by the sampling frequency as a parameter). The interpolation polynomial coefficients are determined as a result of simulation modeling which is performed in Matlab 7. Random functions were applied to simulate the quantization noise. Analytical expressions are obtained that allows to estimate the RMS measurement error from the signal parameters and ADC parameters by using the proposed error estimation method. The simulation results show that the proposed method of the error calculation allows at least to reduce the RMS error estimate (in comparison with “worst case” method) at least to 30 %. The proposed approach for the error estimation can be used for sinusoidal signals or polyharmonic signals the shape of which is close to sinusoidal. The application of the proposed approach can be extended to the problem of active power and complex spectrum measurement.
应用随机函数评估量化误差对信号均方根的影响
在现代数字测量设备中,为了在信号测量通道中获取采样,通常采用模数转换器(adc)。实际的adc具有有限的分辨率,这导致时域对量化误差的影响(即量化噪声)。无论采用何种测量方法,量化噪声都会对有效值、有功功率、复谱等测量误差产生影响。研究了ADC参数(分辨率、采样频率、输入范围、ADC结构类型)对均方根测量误差的影响。结果表明,最重要的ADC参数是分辨率和采样频率。提出了一种基于抛物线插值多项式函数(以采样频率为参数)的均方根误差估计方法。在Matlab 7中进行了仿真建模,确定了插值多项式系数。采用随机函数模拟量化噪声。利用所提出的误差估计方法,得到了从信号参数和ADC参数估计均方根测量误差的解析表达式。仿真结果表明,与“最坏情况”方法相比,所提出的误差计算方法至少可以将RMS误差估计降低30%。所提出的误差估计方法可用于正弦信号或形状接近正弦的多谐波信号。该方法可推广应用于有功功率和复杂频谱的测量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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