基于weierstrass mandelbrot函数的多变量台风风速分形数值模拟

Kang Cai , Mingfeng Huang , Qiang Li , Qing Wang , Yi-Qing Ni
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引用次数: 0

摘要

本文提出了一种基于分形的随机Weierstrass Mandelbrot函数模拟多变量非平稳风场的方法。通过系统的分形分析,发现结构函数法比箱计数法、变分法和R/S分析法更适合和可靠地估计随机风速序列的分形维数。在1983年台风“曼德布洛特”期间,在深圳海拔356 m的气象梯度塔上进行了风场测量。分析了不同高度台风风速数据的显著非平稳特性和分形维数,验证了多元台风风速模拟方法的有效性。基于分形方法模拟的多变量风速分量在分形维数、标准差、概率密度函数、风谱和相互关系系数等方面与实测记录吻合较好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fractal-based numerical simulation of multivariate typhoon wind speeds utilizing weierstrass mandelbrot function
This paper proposes a fractal-based technique for simulating multivariate nonstationary wind fields by the stochastic Weierstrass Mandelbrot function. Upon conducting a systematic fractal analysis, it was found that the structure function method is more suitable and reliable than the box counting method, variation method, and R/S analysis method for estimating the fractal dimension of the stochastic wind speed series. Wind field measurement at the meteorological gradient tower with a height of 356 m in Shenzhen was conducted during Typhoon Mandelbrot (1983). Significant non-stationary properties and fractal dimensions of typhoon wind speed data at various heights were analyzed and used to demonstrate the effectiveness of the proposed multivariate typhoon wind speed simulation method. The multivariate wind speed components simulated by the proposed fractal-based method are in good agreement with the measured records in terms of the fractal dimension, standard deviation, probability density function, wind spectrum and cross-correlation coefficient.
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