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Artificial neural network based breakwater damage estimation considering tidal level variation

机译:考虑潮位变化的基于人工神经网络的防波堤破坏估算

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A new approach to damage estimation of breakwater armor blocks was developed by incorporating a wave height prediction artificial neural network (ANN) into a Monte Carlo simulation (MCS). The ANN was used to predict the wave height in front of a breakwater, with both the deep water wave heights and tidal level being input to the ANN. The waves predicted by the ANN were comparable to those from a wave transform analysis. Using an ANN in wave prediction makes it possible to very simply and quickly obtain numerous waves near the breakwater. Eventually, the analysis time for the expected damage can be reduced. In addition, the effect of the tidal level on the expected damage was revealed by numerical examples. In these numerical examples, it was found that the tidal variation should be taken into account when estimating the expected breakwater damage.
机译:通过将波高预测人工神经网络(ANN)纳入蒙特卡洛模拟(MCS),开发了一种防波堤装甲块破坏估计的新方法。人工神经网络用于预测防波堤前方的波浪高度,同时将深水浪高度和潮汐水位都输入到人工神经网络中。 ANN预测的波浪与波浪变换分析的波浪具有可比性。在波浪预测中使用ANN可以非常简单快速地在防波堤附近获得大量波浪。最终,可以减少预期损坏的分析时间。另外,通过数值示例揭示了潮汐水平对预期破坏的影响。在这些数值示例中,发现在估计预期的防波堤破坏时应考虑潮汐变化。

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