Kernel Density Estimation Based Gaussian and Non-Gaussian Random Vibration Data Induction for High-Speed Train Equipment
Because general statistics tolerance is not applicable to the induction of non-Gaussian vibration data and the methods for converting non-Gaussian data into Gaussian data are not always effective and can increase the estimation error, a novel kernel density estimation method in which induction is ca...
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doaj-e3ef56fd605342669ab6d0a82edb8be82021-03-30T02:38:07ZengIEEEIEEE Access2169-35362020-01-018909149092310.1109/ACCESS.2020.29942249091814Kernel Density Estimation Based Gaussian and Non-Gaussian Random Vibration Data Induction for High-Speed Train EquipmentPeng Wang0Hua Deng1https://orcid.org/0000-0003-2075-2990Yi Min Wang2Yue Liu3https://orcid.org/0000-0002-9903-7772Yi Zhang4https://orcid.org/0000-0002-1360-5055School of Mechanical and Electrical Engineering, Central South University, Changsha, ChinaSchool of Mechanical and Electrical Engineering, Central South University, Changsha, ChinaCRRC Zhuzhou Electric Locomotive Research Institute Company Ltd., Zhuzhou, ChinaCRRC Zhuzhou Electric Locomotive Research Institute Company Ltd., Zhuzhou, ChinaSchool of Mechanical and Electrical Engineering, Central South University, Changsha, ChinaBecause general statistics tolerance is not applicable to the induction of non-Gaussian vibration data and the methods for converting non-Gaussian data into Gaussian data are not always effective and can increase the estimation error, a novel kernel density estimation method in which induction is carried out on power spectral density data for the measured vibration of high-speed trains is proposed in this paper. First, data belonging to the same population of power spectral density are merged into the same feature sample. Then, the probability density function of all power spectral density values at the first frequency point is calculated through the kernel density estimation method, and the upper-limit estimate of all power spectral density values under the set quantile is obtained. This process is repeated, and the upper limit values of the power spectral density values at all frequency points can be obtained to convert the measured acceleration data to the acceleration power spectral density spectrum of the vibration test. Engineering examples are used to verify the proposed method. For the same Gaussian power spectral density data, the relative error between the root mean squares of the power spectral density spectrum obtained from induction by the kernel density estimation method and the statistics tolerance is 0.155% ~1.55%; for the non-Gaussian power spectral density data, the acceleration power spectral density spectrum of the non-Gaussian vibration can be obtained with the induction by the kernel density estimation method. The proposed kernel density estimation method satisfies the induction requirements for the measured Gaussian and non-Gaussian vibration data of high-speed trains with two different distributions, and its induction results have very good universality and estimation accuracy.https://ieeexplore.ieee.org/document/9091814/Random vibrationdata inductionkernel density estimationnon-Gaussian distributionGaussian distribution |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Peng Wang Hua Deng Yi Min Wang Yue Liu Yi Zhang |
spellingShingle |
Peng Wang Hua Deng Yi Min Wang Yue Liu Yi Zhang Kernel Density Estimation Based Gaussian and Non-Gaussian Random Vibration Data Induction for High-Speed Train Equipment IEEE Access Random vibration data induction kernel density estimation non-Gaussian distribution Gaussian distribution |
author_facet |
Peng Wang Hua Deng Yi Min Wang Yue Liu Yi Zhang |
author_sort |
Peng Wang |
title |
Kernel Density Estimation Based Gaussian and Non-Gaussian Random Vibration Data Induction for High-Speed Train Equipment |
title_short |
Kernel Density Estimation Based Gaussian and Non-Gaussian Random Vibration Data Induction for High-Speed Train Equipment |
title_full |
Kernel Density Estimation Based Gaussian and Non-Gaussian Random Vibration Data Induction for High-Speed Train Equipment |
title_fullStr |
Kernel Density Estimation Based Gaussian and Non-Gaussian Random Vibration Data Induction for High-Speed Train Equipment |
title_full_unstemmed |
Kernel Density Estimation Based Gaussian and Non-Gaussian Random Vibration Data Induction for High-Speed Train Equipment |
title_sort |
kernel density estimation based gaussian and non-gaussian random vibration data induction for high-speed train equipment |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2020-01-01 |
description |
Because general statistics tolerance is not applicable to the induction of non-Gaussian vibration data and the methods for converting non-Gaussian data into Gaussian data are not always effective and can increase the estimation error, a novel kernel density estimation method in which induction is carried out on power spectral density data for the measured vibration of high-speed trains is proposed in this paper. First, data belonging to the same population of power spectral density are merged into the same feature sample. Then, the probability density function of all power spectral density values at the first frequency point is calculated through the kernel density estimation method, and the upper-limit estimate of all power spectral density values under the set quantile is obtained. This process is repeated, and the upper limit values of the power spectral density values at all frequency points can be obtained to convert the measured acceleration data to the acceleration power spectral density spectrum of the vibration test. Engineering examples are used to verify the proposed method. For the same Gaussian power spectral density data, the relative error between the root mean squares of the power spectral density spectrum obtained from induction by the kernel density estimation method and the statistics tolerance is 0.155% ~1.55%; for the non-Gaussian power spectral density data, the acceleration power spectral density spectrum of the non-Gaussian vibration can be obtained with the induction by the kernel density estimation method. The proposed kernel density estimation method satisfies the induction requirements for the measured Gaussian and non-Gaussian vibration data of high-speed trains with two different distributions, and its induction results have very good universality and estimation accuracy. |
topic |
Random vibration data induction kernel density estimation non-Gaussian distribution Gaussian distribution |
url |
https://ieeexplore.ieee.org/document/9091814/ |
work_keys_str_mv |
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1724184906747084800 |