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首页> 外文期刊>Ocean Dynamics >Highly nonlinear wind waves in Currituck Sound: dense breather turbulence in random ocean waves
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Highly nonlinear wind waves in Currituck Sound: dense breather turbulence in random ocean waves

机译:Currituck声音中的高度非线性风波:随机海浪中密集的呼吸湍流

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摘要

We analyze surface wave data taken in Currituck Sound, North Carolina, during a storm on 4 February 2002. Our focus is on the application of nonlinear Fourier analysis (NLFA) methods (Osborne 2010) to analyze the data set: The approach spectrally decomposes a nonlinear wave field into sine waves, Stokes waves, and phase-locked Stokes waves otherwise known as breather trains. Breathers are nonlinear beats, or packets which breathe up and down smoothly over cycle times of minutes to hours. The maximum amplitudes of the packets during the cycle have a largest central wave whose properties are often associated with the study of rogue waves. The mathematical physics of the nonlinear Schrodinger (NLS) equation is assumed and the methods of algebraic geometry are applied to give the nonlinear spectral representation. The distinguishing characteristic of the NLFA method is its ability to spectrally decompose a time series into its nonlinear coherent structures (Stokes waves and breathers) rather than just sine waves. This is done by the implementation of multidimensional, quasi-periodic Fourier series, rather than ordinary Fourier series. To determine preliminary estimates of nonlinearity, we use the significant wave height H-s, the peak period T-p, and the length of the time series T. The time series analyzed here have 8192 points and T =1677.72 s = 27.96 min. Near the peak of the storm, we find H-s approximate to 0.55 m, T-p approximate to 2.4 s so that for the wave steepness of a near Gaussian process, we find S approximate to 0.17, quite high for ocean waves. Likewise, we estimate the Benjamin-Feir (BF) parameter for a near Gaussian process, HsT/Tp3, and we find I-BF approximate to 119. Since the BF parameter describes the nonlinear behavior of the modulational instability, leading to the formation of breather packets in a measured wave train, we find the I-BF for these storm waves to be a surprisingly high number. This is because I-BF, as derived here, roughly estimates the number of breather trains in a near Gaussian time series. The BF parameter suggests that there are roughly 119 breather trains in a time series of length 28 min near the peak of the storm, meaning that we would have average breather packets of about 14 s each with about 5-6 waves in each packet. Can these surprising results, estimated from simple parameters, be true from the point of view of the complex nonlinear wave dynamics of the BF instability and the NLS equation? We analyze the data set with the NLFA to verify, from a nonlinear spectral point of view, the presence of large numbers of breather trains and we determine many of their properties, including the rise time for the breathers to grow to their maximum amplitudes from a quiescent initial state. Energetically, about 95% of the NLFA components are found to consist of breather trains; the remaining small amplitude components are sine and Stokes waves. The presence of a large number of densely packed breather trains suggests an interpretation of the data in terms of breather turbulence, highly nonlinear integrable turbulence theoretically predicted for the NLS equation, providing an interesting paradigm for the nonlinear wave motion, in contrast to the random phase Gaussian approximation often considered in the analysis of data.
机译:我们分析了2002年2月4日在北卡罗来纳州Currituck Sound采集的表面波数据。我们的重点是非线性傅里叶分析(NLFA)方法的应用(Osborne 2010),以分析数据集:该方法从频谱上分解了非线性波场分为正弦波,斯托克斯波和锁相斯托克斯波,也称为呼吸列车。呼吸是非线性的搏动,或在数分钟至数小时的循环时间内平稳地上下呼吸的包。数据包在周期中的最大振幅具有最大的中心波,该中心波的特性通常与流氓波的研究有关。假设非线性薛定inger方程(NLS)的数学物理性质,并采用代数几何方法给出非线性光谱表示。 NLFA方法的显着特征是它能够将时间序列频谱分解为非线性相干结构(斯托克斯波和通气管),而不仅仅是正弦波。这是通过实现多维准周期傅立叶级数而不是普通傅立叶级数来实现的。为了确定非线性的初步估计,我们使用有效的波高H-s,峰值周期T-p和时间序列T的长度。此处分析的时间序列有8192个点,T = 1677.72 s = 27.96分钟。在风暴的峰值附近,我们发现H-s约为0.55 m,T-p约为2.4 s,因此对于高斯附近过程的波陡度,我们发现S约为0.17,对于海浪来说相当高。同样,我们估计了接近高斯过程的Benjamin-Feir(BF)参数HsT / Tp3,发现I-BF近似为119。由于BF参数描述了调制不稳定性的非线性行为,导致形成了在经过测量的波列中找到呼吸数据包,我们发现这些风暴波的I-BF值高得惊人。这是因为,如此处所推导的I-BF大致估计了接近高斯时间序列的通气列车的数量。 BF参数表明在风暴高峰附近28分钟的时间序列中大约有119个呼吸列车,这意味着我们将获得平均呼吸包约14 s,每个包中约有5-6波。从高炉不稳定性和NLS方程的复杂非线性波动力学的观点来看,从简单参数估计的这些令人惊讶的结果是否正确?我们使用NLFA分析数据集,以从非线性频谱角度验证是否存在大量呼吸道,并确定它们的许多特性,包括呼吸道从上升到最大振幅的上升时间。静态初始状态。从能量上讲,发现约有95%的NLFA成分由呼吸机组成;其余的小振幅分量是正弦波和斯托克斯波。大量密集填充的呼吸运动的存在表明,对呼吸湍流,对NLS方程理论上预测的高度非线性可积湍流的数据进行了解释,与随机相位相比,为非线性波动提供了有趣的范例在数据分析中经常考虑高斯近似。

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