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Digitalizer mean filtering method based on density estimation

A technology of density estimation and average value filtering, which is applied in the field of digitizers, can solve problems such as the incompatibility between high sampling rate and high vertical resolution, the incompatibility between oscilloscope bandwidth and vertical resolution, and the reduction of oscilloscope waveform update rate. Equivalent Vertical Resolution, Good Estimation, Avoiding Inconvenient Effects

Active Publication Date: 2019-01-11
UNIV OF ELECTRONICS SCI & TECH OF CHINA
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Problems solved by technology

[0007] (1) Can only be used for periodic signals;
[0008] (2) Averaging can only reduce random, uncorrelated Gaussian white noise, and has little effect on correlated noise and interference;
[0009] (3) The averaging algorithm will significantly reduce the oscilloscope waveform update rate
For example, if you want to improve the resolution from 8bit to 12bit, you need to average every 256 acquisitions, and the waveform update rate is reduced by more than 256 times;
[0010] (4) Averaging may cause waveform distortion
[0012] (1) High sampling rate and high vertical resolution cannot be achieved at the same time;
[0013] (2) Oscilloscope bandwidth and vertical resolution cannot be combined;
[0014] (3) The high-resolution capture average algorithm is effective in suppressing Gaussian white noise, but has no effect on the noise caused by the INL (integral nonlinearity) of the oscilloscope ADC
For the collected samples containing gross errors, if they are directly averaged without processing, the result will deviate greatly from the real signal

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  • Digitalizer mean filtering method based on density estimation

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Embodiment

[0044] Figure 4 It is a specific implementation flow chart of the density estimation-based digitizer mean value filtering method of the present invention. Such as Figure 4 As shown, the concrete steps of the digitizer mean filtering method based on density estimation of the present invention include:

[0045] S401: Oversampled data grouping:

[0046] The digitizer performs oversampling at a rate of V times the actual sampling rate, and the value of V can be set according to actual needs. Note that the data sample sequence obtained by sampling is {x 1 ,x 2 ,...,x N}, N represents the number of sampling points, the N sample data are divided into M groups on average, and M sub-samples are obtained, each sub-sample has Q data, and the m-th sub-sample is recorded as X m ={x (m-1)Q+1 ,x (m-1)Q+2 ,...,x mQ}. The value of M is set according to actual needs.

[0047] The purpose of oversampling the measurement signal is to average filter the collected data without affectin...

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Abstract

The present invention discloses a digitalizer mean filtering method based on density estimation. The method comprises the steps of: performing oversampling of a digitalizer, performing grouping for anobtained data sample sequence to obtain a plurality of sub samples, adding the sub samples to the density estimation samples, employing a fusion method of density estimation and Bayes information toobtain a probability density function of the data sample sequence, and calculating and obtaining the standard uncertainty of the data sample sequence; and performing re-grouping of the data sample sequence according to the oversampling multiples, obtaining the confidence interval of each sub sample after the repeat groups are obtained according to the standard uncertainty to obtain gross error elimination, and performing average extraction of the obtained samples to obtain final samples. The digitalizer mean filtering method based on density estimation can perform density estimation for the data sample sequence grouping obtained by sampling, and can set the confidence interval based on the density estimation result to perform gross error elimination so as to allow the mean filtering resultto be more accurate.

Description

technical field [0001] The invention belongs to the technical field of digitizers, and more specifically relates to a density estimation-based mean value filtering method for digitizers. Background technique [0002] Bandwidth, sampling rate and memory depth are the three core indicators commonly used to evaluate the performance of digitizers. In addition, there is another very important indicator: vertical resolution. Higher vertical resolution means finer waveform display and more accurate signal measurement. The vertical resolution of a digitizer depends on the number of quantization bits in the analog-to-digital converter (ADC), as well as the noise and distortion levels of the digitizer itself. Although the number of bits in the ADC is commonly used to describe the vertical resolution of a digitizer, the exact parameter is the digitizer's overall system effective number of bits (ENOB). ENOB is closely related to the signal-to-noise-to-distortion ratio (SNR), and the ...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): H03H17/02
CPCH03H17/0211H03H2017/0072
Inventor 马敏杨晓蕾戴志坚王锂
Owner UNIV OF ELECTRONICS SCI & TECH OF CHINA
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