Modal identification from turbulence response based on improved frequency domain decomposition

Author:

Duan Shiqiang1,Zheng Hua1ORCID,Zhou Jiangtao1,Wu Zhenglong1

Affiliation:

1. School of Power and Energy, Northwestern Polytechnical University, Shaan Xi, China

Abstract

Turbulence excitation is an unavoidable form of excitation in flutter flight tests, and it is also a necessary and effective excitation method in high-speed flights, dives, other high-risk test, and high-frequency modal information mining. However, because the turbulence excitation signals are unmeasurable in the time domain, although the turbulence response contains rich and valuable flutter test information, the randomness and low quality of the data often cause difficulties in modal analysis. Therefore, an improved frequency domain decomposition algorithm for turbulence response processing is proposed in this paper. First, due to the irrelevancy of the atmospheric excitation, the power spectral density function matrix of the multi-channel turbulence response is subjected to singular value decomposition. There is a mathematical relationship between the maximum singular value curve and the system frequency response function. Second, the modal assurance criteria are used to calculate the maximum singular value of a single-degree-of-freedom system. Finally, an orthogonal polynomial method is applied to fit the maximum singular value curve, and the system identification is performed directly in the frequency domain. The simulated data and a certain type of aircraft flutter flight test data are used to verify the proposed method, and the results confirm the effectiveness and engineering applicability of the method developed in this work.

Funder

the Fundamental Research Funds for the Central Universities

the Innovation Foundation for Doctor Dissertation of Northwestern Polytechnical University

Publisher

SAGE Publications

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