首页> 外文期刊>Journal of geophysical research. Earth Surface: JGR >Discrimination of bed form scales using robust spline filters and wavelet transforms: Methods and application to synthetic signals and bed forms of the Río Paraná, Argentina
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Discrimination of bed form scales using robust spline filters and wavelet transforms: Methods and application to synthetic signals and bed forms of the Río Paraná, Argentina

机译:使用健壮的样条滤波器和小波变换识别床形秤:阿根廷里约巴拉那州的合成信号和床形的方法和应用

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There is no standard nomenclature and procedure to systematically identify the scale and magnitude of bed forms such as bars, dunes, and ripples that are commonly present in many sedimentary environments. This paper proposes a standardization of the nomenclature and symbolic representation of bed forms and details the combined application of robust spline filters and continuous wavelet transforms to discriminate these morphodynamic features, allowing the quantitative recognition of bed form hierarchies. Herein the proposed methodology for bed form discrimination is first applied to synthetic bed form profiles, which are sampled at a Nyquist ratio interval of 2.5-50 and a signal-to-noise ratio interval of 1-20 and subsequently applied to a detailed 3-D bed topography from the Río Paraná, Argentina, which exhibits large-scale dunes with superimposed, smaller bed forms. After discriminating the synthetic bed form signals into three-bed form hierarchies that represent bars, dunes, and ripples, the accuracy of the methodology is quantified by estimating the reproducibility, the cross correlation, and the standard deviation ratio of the actual and retrieved signals. For the case of the field measurements, the proposed method is used to discriminate small and large dunes and subsequently obtain and statistically analyze the common morphological descriptors such as wavelength, slope, and amplitude of both stoss and lee sides of these different size bed forms. Analysis of the synthetic signals demonstrates that the Morlet wavelet function is the most efficient in retrieving smaller periodicities such as ripples and smaller dunes and that the proposed methodology effectively discriminates waves of different periods for Nyquist ratios higher than 25 and signal-to-noise ratios higher than 5. The analysis of bed forms in the Río Paraná reveals that, in most cases, a Gamma probability distribution, with a positive skewness, best describes the dimensionless wavelength and amplitude for both the lee and stoss sides of large dunes. For the case of smaller superimposed dunes, the dimensionless wavelength shows a discrete behavior that is governed by the sampling frequency of the data, and the dimensionless amplitude better fits the Gamma probability distribution, again with a positive skewness. This paper thus provides a robust methodology for systematically identifying the scales and magnitudes of bed forms in a range of environments.
机译:没有标准的术语和程序来系统地识别许多沉积环境中普遍存在的诸如棒,沙丘和波纹之类床层的规模和大小。本文提出了床形的命名法和符号表示的标准化方法,并详细介绍了稳健的样条滤波器和连续小波变换相结合的应用,以区分这些形态动力学特征,从而可以定量地识别床形层次。本文中,提出的用于床形识别的方法首先应用于合成床形轮廓,以2.5-50的奈奎斯特比间隔和1-20的信噪比间隔采样,然后应用于详细的3-来自阿根廷里奥·巴拉那(RíoParaná)的D床地形,展示了大型沙丘,上面有重叠的小床。在将合成床形式信号区分为代表条,沙丘和波纹的三床形式层级之后,通过估算实际信号和检索到的信号的可再现性,互相关以及标准偏差比来量化方法的准确性。对于现场测量,所提出的方法用于区分大小沙丘,然后获得并统计分析这些不同尺寸床体形式的共同形态学特征,例如波长,斜率以及波幅和斜面的振幅。对合成信号的分析表明,Morlet小波函数在检索较小的周期性(例如波纹和较小的沙丘)方面最有效,并且所提出的方法可以有效区分奈奎斯特比高于25和信噪比更高的不同周期的波。大于5。对RíoParaná河床形态的分析表明,在大多数情况下,Gamma概率分布具有正偏斜度,可以最好地描述大沙丘背风面和凸背面的无量纲波长和幅度。对于较小的叠加沙丘,无量纲的波长显示出离散的行为,该行为受数据的采样频率控制,无量纲的振幅更适合于Gamma概率分布,并且具有正偏度。因此,本文提供了一种鲁棒的方法,可以系统地识别各种环境中床层的规模和大小。

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