Pape Leo, Ruessink B G, Wiering Marco A, Turner Ian L
Department of Physical Geography, Faculty of Geosciences, IMAU, Utrecht University, Utrecht, The Netherlands.
Neural Netw. 2007 May;20(4):509-18. doi: 10.1016/j.neunet.2007.04.007. Epub 2007 Apr 29.
The temporal evolution of nearshore sandbars (alongshore ridges of sand fringing coasts in water depths less than 10 m and of paramount importance for coastal safety) is commonly predicted using process-based models. These models are autoregressive and require offshore wave characteristics as input, properties that find their neural network equivalent in the NARX (Nonlinear AutoRegressive model with eXogenous input) architecture. Earlier literature results suggest that the evolution of sandbars depends nonlinearly on the wave forcing and that the sandbar position at a specific moment contains 'memory', that is, time-series of sandbar positions show dependencies spanning several days. Using observations of an outer sandbar collected daily for over seven years at the double-barred Surfers Paradise, Gold Coast, Australia several data-driven models are compared. Nonlinear and linear models as well as recurrent and nonrecurrent parameter estimation methods are applied to investigate the claims about nonlinear and long-term dependencies. We find a small performance increase for long-term predictions (>40 days) with nonlinear models, indicating that nonlinear effects expose themselves for larger prediction horizons, and no significant difference between nonrecurrent and recurrent methods meaning that the effects of dependencies spanning several days are of no importance.
近岸沙洲(沿海水深小于10米、对海岸安全至关重要的沿岸沙质脊)的时间演变通常使用基于过程的模型进行预测。这些模型是自回归的,需要以近海波浪特征作为输入,这些属性在NARX(带外生输入的非线性自回归模型)架构中有其神经网络等效物。早期文献结果表明,沙洲的演变非线性地取决于波浪强迫,并且特定时刻的沙洲位置包含“记忆”,即沙洲位置的时间序列显示出跨越数天的相关性。利用在澳大利亚黄金海岸冲浪者天堂双沙洲处每日收集的七年多的外沙洲观测数据,对几种数据驱动模型进行了比较。应用非线性和线性模型以及递归和非递归参数估计方法来研究关于非线性和长期相关性的说法。我们发现非线性模型在长期预测(>40天)时性能略有提高,这表明非线性效应在更大的预测范围内显现出来,并且非递归方法和递归方法之间没有显著差异,这意味着跨越数天的相关性影响并不重要。