A Mean Noise Reduction Method for FFT Data

A technology that averages noise and corresponds to data. It is used in digital technology networks, electrical components, impedance networks, etc. It can solve the problem of increasing labor costs, time expansion, and hardware resource consumption. Debug results do not have universal requirements, and programmable logic timing is difficult to solve and other problems, to achieve the effect of saving manpower, flexible and convenient application, and improving the effect of signal analysis

Active Publication Date: 2019-02-05
THE 41ST INST OF CHINA ELECTRONICS TECH GRP
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  • Application Information

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Problems solved by technology

[0002] In the field of high-speed acquisition signal analysis and processing, after the high-speed sampling data is processed by FFT, due to the difficulty of hardware design and real-time data analysis and processing under high-sampling conditions, it is often caused by large bandwidth problems, signal leakage problems, signal aliasing problems, Internal self-excitation problems, etc., make the effect of FFT unsatisfactory. Some useless signals or small signals that are not concerned will be mixed on the signal noise floor. It is difficult to solve it by improving hardware and optimizing programmable logic timing at high speed. Affect the effect of data processing
[0003] Usually, when the hardware environment is not ideal, especially in high-speed applications, it is generally difficult to completely improve the signal effect through hardware optimization.
At the same time, the improvement of the hardware environment needs to increase labor costs, time expansion, and hardware resource consumption to a certain extent, and in many cases, due to different environments, the results of one debugging do not meet the general requirements of multiple environments.

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  • A Mean Noise Reduction Method for FFT Data

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Embodiment Construction

[0027] The present invention will be further described below in conjunction with the accompanying drawings and embodiments.

[0028] An average noise reduction method for FFT data, the idea of ​​the inventive method is to calculate the average value of the data within the range of 10% to 90% of the FFT signal data to be processed and the data lower than the reference value dRef, and obtain The average noise baseline is lower than the reference value dRef, and then the mean value processing with the average noise is performed on each data lower than the reference value dRef in the data to be processed, that is, the sum of the data and the average noise is averaged.

[0029] The reason why the calculation process of the average noise baseline is to use data in the range of 10% to 90% is to avoid possible abnormalities at the beginning and end of the signal data during the sampling process, which will affect the accuracy of the baseline value. This processing flow can reduce the ...

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Abstract

The invention discloses an average noise reduction method for FFT data, which calculates the average value of FFT signal data within a set range and is lower than a reference value dRef, and obtains an average noise baseline lower than the reference value dRef value, and then perform mean value processing with the average noise baseline value for each data lower than the reference value dRef in the data to be processed; make the signal below the set reference value close to the average noise baseline value, suppress noise, and reduce the interference signal energy . It greatly simplifies the requirements and dependence on hardware, and also reduces the overhead caused by hardware debugging.

Description

technical field [0001] The invention relates to the technical field of digital signal processing, in particular to an average noise reduction method for FFT data. Background technique [0002] In the field of high-speed acquisition signal analysis and processing, after the high-speed sampling data is processed by FFT, due to the difficulty of hardware design and real-time data analysis and processing under high-sampling conditions, it is often caused by large bandwidth problems, signal leakage problems, signal aliasing problems, Internal self-excitation problems, etc., make the effect of FFT unsatisfactory. Some useless signals or small signals that are not concerned will be mixed on the signal noise floor. It is difficult to solve it by improving hardware and optimizing programmable logic timing at high speed. affect data processing. [0003] Usually, when the hardware environment is not ideal, especially in high-speed applications, it is generally difficult to completely ...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): H03H17/02
CPCH03H17/026
Inventor 白月胜曹淑玉高长全
Owner THE 41ST INST OF CHINA ELECTRONICS TECH GRP
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