The present invention belongs to the technical field of structural wind engineering, and particularly relates to a numerical simulation method for generating a wind speed time series.
Economic losses caused by wind disaster exceed those caused by earthquake, fire, flood and other natural disasters, so wind disaster is one of the most serious disasters that cause human and property losses among natural disasters. Wind load is an important load in the design of a large structure, and even plays a decisive role. Wind tunnel tests, numerical simulation and field measurement are the main methods for the existing wind-resistance design. As an important supplement to the test, numerical simulation has the advantages of convenient operation and strong repeatability, which is suitable for wind load verification and design calculation.
A fluctuating wind load acting on a structure has significant dynamic characteristics and spatial-temporal distribution characteristics, which can be described by a spatial-temporal random field. In wind-resistance analysis of the structure, fluctuating wind is usually considered as a multi-dimensional, multi-variable, and ergodic stationary Gaussian process. The fluctuating wind speed time series at each point must satisfy certain statistical characteristics such as power spectral density and dependency relation. The harmonic superposition method is one of the most widely used methods for wind field simulation because of its clear theory and high accuracy. The idea of the harmonic superposition method is to superpose a series of trigonometric functions with random amplitudes or random frequencies to simulate a random process with specific statistical characteristics. A cross-spectral density matrix is used to consider the dependency among different variables in a multi-dimensional or multi-variable random process. In the process of wind speed simulation, Cholesky decomposition is required for the cross-spectral density matrix of the simulation points at each frequency point, so as to obtain a lower triangular matrix required for wind field simulation. When the number of simulation points is relatively large, Cholesky decomposition needs to be performed on a large number of cross-spectral density matrices, which greatly reduces the computational efficiency. Some scholars have used an interpolation function to calculate the required lower triangular matrix approximately, so as to reduce the number of times of matrix decomposition and improve the simulation efficiency. Researchers have noticed that a spectral matrix and a lower triangular matrix obtained by decomposition thereof change sharply in the low-frequency band, and change relatively gently in the high-frequency band, so the distribution of interpolation points needs to meet the requirements of “Dense in the low-frequency band and sparse in the high-frequency band”. However, with different power spectral selections, the obtained spectral matrices and lower triangular matrices obtained by decomposition thereof will be different, and therefore, the differences in the selection of interpolation points by different power spectral functions cannot be identified by only meeting the qualitative requirements of “Dense in the low-frequency band and sparse in the high-frequency band”.
Aiming at the lack of research on the distribution selection principle of frequency interpolation points, the present invention proposes a wind field interpolation simulation method based on isogeometric sampling, the core of which is to select appropriate positions and number of interpolation points by an isogeometric sampling method according to the function characteristics of a lower triangular matrix obtained by decomposing a cross-spectral density matrix, and which can adapt to different requirements of fluctuating wind power spectral density at different conditions.
The present invention proposes a wind field interpolation simulation method based on isogeometric sampling for wind load simulation of a large structure, and provides an efficient calculation method for the design and safety assessment of a large structure subjected to wind load.
The technical solution of the present invention is as follows:
A wind field interpolation simulation method based on isogeometric sampling, comprising the following steps:
where, n is a frequency, satisfying n∈[na, nb], na and nb are respectively the left and right endpoints of the definition domain of the objective function R(n), i.e., the starting and ending frequencies of the target power spectral density for wind field simulation; μ is a real number between 0 and 1, which is adjusted according to the calculation result; L(n) and K (n) are respectively the arc length and total curvature from R(na) to R(n), wherein
integrands of both integrals are greater than or equal to 0 and are not always 0, λ(n) is strictly monotonically increasing, λ(na)=0, and λ(nb)=1;
where, arg min(⋅) is the value of the independent variable when the minimum value of “⋅” is taken, i.e., the value of l; m is the number of simulation points in a wind field,
is the ending frequency of simulation, and N is a frequency isodisperse;
where, R1(n) and R2(n) respectively represent the arithmetic square roots of the power spectral function at the lowest and highest positions of all simulation points, {circumflex over (R)}1(n) and {circumflex over (R)}2(n) are respectively fitting functions of R1(n) and R2(n), and i=1, 2, . . . , k1;
The present invention has the following beneficial effects:
To make the purpose, features and advantages of the present invention more clear and legible, the technical solution in the embodiments of the present invention will be clearly and fully described below in combination with the drawings in the embodiments of the present invention. Apparently, the described embodiments are merely part of the embodiments of the present invention, not all of the embodiments. Based on the embodiments in the present invention, all other embodiments obtained by those ordinary skilled in the art without contributing creative labor will belong to the protection scope of the present invention.
Referring to
For embodiment data source, please refer to “Fu X and L H N, Dynamic analysis of transmission tower-line system subjected to wind and rain loads, Journal of Wind Engineering and Industrial Aerodynamics, 2016, 157, 95-103”.
In an embodiment of the present invention, wind field simulation of the simulation points is generated by MATLAB software, which is specifically described with reference to the flow shown in
where, a curvature weight is taken as μ=0.2 in the embodiment.
Inputting the number of sampling points k1 (with the left and right endpoints removed), and calculating all λ(lΔn) according to a definite integral, wherein l is a variable with a value of 2, . . . , N−1. Obtaining the lith frequency, i.e., obtaining the frequency nkl, of a double-indexing interpolation point, as shown in formula (3):
where, R1(n) and R2(n) respectively represent the arithmetic square roots of the power spectral function at the lowest and highest positions of all simulation points, {circumflex over (R)}1(n) and {circumflex over (R)}2(n) are respectively fitting functions of R1(n) and R2(n), and i=1, 2, . . . , k1;
{tilde over (H)}(n)=H(ni)+H′(ni)(n−ni)+a1(n−ni)2+a2(n−ni)2(n−ni+1) (9)
where, the matrix form and parameter matrices a1 and a2 for obtaining the approximate derivative of each element of H can be calculated according to formulae (6) to (8):
Using the interpolation function of formula (5) to solve approximate lower triangular matrices Ĥ at other frequencies approximately, obtaining all the elements of matrix H required, substituting the elements into a formula of a Deodatis double-indexing frequency simulation method, and then generating a fluctuating wind speed time series at each point based on FFT algorithm. A whole simulation process is shown in
Attention shall be paid during the use of the present invention: in actual simulation, the curvature weight μ needs to be adjusted according to a wind spectrum function curve and selected as a real number between 0 and 1, so as to achieve a better simulation effect; the interpolation function is not limited to the Hermite interpolation function and is selected according to actual needs.
The above embodiments are only used for describing the technical solution of the present invention rather than limiting the same. Although the present invention is described in detail by referring to the above embodiments, those ordinary skilled in the art should understand that: the technical solution recorded in each of the above embodiments can be still amended, or some technical features therein can be replaced equivalently. However, these amendments or replacements do not enable the essence of the corresponding technical solutions to depart from the spirit and the scope of the technical solutions of various embodiments of the present invention.
| Filing Document | Filing Date | Country | Kind |
|---|---|---|---|
| PCT/CN2022/098012 | 6/10/2022 | WO |