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Near-shore swell estimation from a global wind-wave model: Spectral process, linear, and artificial neural network models

机译:从全球风浪模型估算近岸涌浪:频谱过程,线性和人工神经网络模型

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摘要

Estimation of swell conditions in coastal regions is important for a variety of public, government, and research applications. Driving a model of the near-shore wave transformation from an offshore global swell model such as NOAA WaveWatch3 is an economical means to arrive at swell size estimates at particular locations of interest. Recently, some work (e.g. Browne et al. [Browne, M., Strauss, D., Castelle, B., Blumenstein, M., Tomlinson, R., 2006. Local swell estimation and prediction from a global wind-wave model. IEEE Geoscience and Remote Sensing Letters 3 (4), 462-466.]) has examined an artificial neural network (ANN) based, empirical approach to wave estimation. Here, we provide a comprehensive evaluation of two data driven approaches to estimating waves near-shore (linear and ANN), and also contrast these with a more traditional spectral wave simulation model (SWAN). Performance was assessed on data gathered from a total of 17 near-shore locations, with heterogenous geography and bathymetry, around the continent of Australia over a 7 month period. It was found that the ANNs out-performed SWAN and the non-linear architecture consistently out-performed the linear method. Variability in performance and differential performance with regard to geographical location could largely be explained in terms of the underlying complexity of the local wave transformation.
机译:对于各种公共,政府和研究应用,估算沿海地区的涨潮条件非常重要。从诸如NOAA WaveWatch3之类的离岸全球膨胀模型中驱动近岸波浪转换模型是一种经济的方法,可以在感兴趣的特定位置获得膨胀大小的估计值。最近,一些工作(例如,Browne等人[Browne,M.,Strauss,D.,Castelle,B.,Blumenstein,M.,Tomlinson,R.,2006。根据全球风浪模型进行的局部膨胀估计和预测(IEEE Geoscience and Remote Sensing Letters 3(4),462-466。])已经研究了基于人工神经网络(ANN)的经验方法进行波估计。在这里,我们提供了两种数据驱动方法的综合评估,这些方法用于估计近岸波(线性和ANN),并将它们与更传统的频谱波仿真模型(SWAN)进行对比。在7个月的时间内,根据在澳大利亚大陆周围总共17个近岸地点收集的数据进行了性能评估,这些地点具有不同的地理位置和测深法。结果发现,人工神经网络的性能优于SWAN,非线性架构的性能始终优于线性方法。关于地理位置的性能差异和差异性能可以在很大程度上根据本地电波转换的潜在复杂性来解释。

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