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Get Free AccessThe time-varying mean (TVM) component of non-stationary wind speeds is commonly extracted utilizing empirical mode decomposition (EMD) in practice, whereas the accuracy of the extracted TVM is difficult to be quantified. To deal with this problem, this paper proposes an approach to identify and extract the optimal TVM from several TVM results obtained by the EMD. It is suggested that the optimal TVM of a 10-min time history of wind speeds should meet both the following conditions: (1) the probability density function (PDF) of fluctuating wind component agrees well with the modified Gaussian function (MGF). At this stage, a coefficient p is newly defined as an evaluation index to quantify the correlation between PDF and MGF. The smaller the p is, the better the derived TVM is; (2) the number of local maxima of obtained optimal TVM within a 10-min time interval is less than 6. The proposed approach is validated by a numerical example, and it is also adopted to extract the optimal TVM from the field measurement records of wind speeds collected during a sandstorm event.
Kang Cai, Xiao Li, Lunhai Zhi, Xu‐Liang Han (2021). Extraction of optimal time-varying mean of non-stationary wind speeds based on empirical mode decomposition. STRUCTURAL ENGINEERING AND MECHANICS, 77(3), pp. 355-368, DOI: 10.12989/sem.2021.77.3.355.
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Type
Article
Year
2021
Authors
4
Datasets
0
Total Files
0
Language
English
Journal
STRUCTURAL ENGINEERING AND MECHANICS
DOI
10.12989/sem.2021.77.3.355
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