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TVAR Time-frequency Analysis for Non-stationary Vibration Signals of Spacecraft
其他题名TVAR Time-frequency Analysis for Non-stationary Vibration Signals of Spacecraft
Hai Yang1; Wei Cheng1; Hong Zhu2
2008
发表期刊CHINESE JOURNAL OF AERONAUTICS
ISSN1000-9361
卷号21期号:5页码:423-432
摘要Predicting the time-varying auto-spectral density of a spacecraft in high-altitude orbits requires an accurate model for the non-stationary random vibration signals with densely spaced modal frequency. The traditional time-varying algorithm limits prediction accuracy, thus affecting a number of operational decisions. To solve this problem, a time-varying auto regressive (TVAR) model based on the process neural network (PNN) and the empirical mode decomposition (EMD) is proposed. The time-varying system is tracked on-line by establishing a time-varying parameter model, and then the relevant parameter spectrum is obtained. Firstly, the EMD method is utilized to decompose the signal into several intrinsic mode functions (IMFs). Then for each IMF, the PNN is established and the time-varying auto-spectral density is obtained. Finally, the time-frequency distribution of the signals can be reconstructed by linear superposition. The simulation and the analytical results from an example demonstrate that this approach possesses simplicity, effectiveness, and feasibility, as well as higher frequency resolution.
其他摘要Predicting the time-varying auto-spectral density of a spacecraft in high-altitude orbits requires an accurate model for the non-stationary random vibration signals with densely spaced modal frequency. The traditional time-varying algorithm limits prediction accuracy, thus affecting a number of operational decisions. To solve this problem, a time-varying auto regressive (TVAR) model based on the process neural network (PNN) and the empirical mode decomposition (EMD) is proposed. The time-varying system is tracked on-line by establishing a time-varying parameter model, and then the relevant parameter spectrum is obtained. Firstly, the EMD method is utilized to decompose the signal into several intrinsic mode functions (IMFs). Then for each IMF, the PNN is established and the time-varying auto-spectral density is obtained. Finally, the time-frequency distribution of the signals can be reconstructed by linear superposition. The simulation and the analytical results from an example demonstrate that this approach possesses simplicity, effectiveness, and feasibility, as well as higher frequency resolution.
关键词non-stationary random vibration time-frequency distribution process neural network empirical mode decomposition
收录类别CSCD
语种英语
CSCD记录号CSCD:3388996
引用统计
文献类型期刊论文
条目标识符http://ir.imr.ac.cn/handle/321006/145028
专题中国科学院金属研究所
作者单位1.Beijing Univ Aeronaut & Astronaut, Institute Solid Mech, Beijing 100191, Peoples R China
2.中国科学院金属研究所
推荐引用方式
GB/T 7714
Hai Yang,Wei Cheng,Hong Zhu. TVAR Time-frequency Analysis for Non-stationary Vibration Signals of Spacecraft[J]. CHINESE JOURNAL OF AERONAUTICS,2008,21(5):423-432.
APA Hai Yang,Wei Cheng,&Hong Zhu.(2008).TVAR Time-frequency Analysis for Non-stationary Vibration Signals of Spacecraft.CHINESE JOURNAL OF AERONAUTICS,21(5),423-432.
MLA Hai Yang,et al."TVAR Time-frequency Analysis for Non-stationary Vibration Signals of Spacecraft".CHINESE JOURNAL OF AERONAUTICS 21.5(2008):423-432.
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