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Real time wave forecasting using wind time history and numerical model

机译:利用风时历史和数值模型进行实时海浪预报

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Operational activities in the ocean like planning for structural repairs or fishing expeditions require real time prediction of waves over typical time duration of say a few hours. Such predictions can be made by using a numerical model or a time series model employing continuously recorded waves. This paper presents another option to do so and it is based on a different time series approach in which the input is in the form of preceding wind speed and wind direction observations. This would be useful for those stations where the costly wave buoys are not deployed and instead only meteorological buoys measuring wind are moored. The technique employs alternative artificial intelligence approaches of an artificial neural network (ANN), genetic programming (GP) and model tree (MT) to carry out the time series modeling of wind to obtain waves. Wind observations at four offshore sites along the east coast of India were used. For calibration purpose the wave data was generated using a numerical model. The predicted waves obtained using the proposed time series models when compared with the numerically generated waves showed good resemblance in terms of the selected error criteria. Large differences across the chosen techniques of ANN, GP, MT were not noticed. Wave hindcasting at the same time step and the predictions over shorter lead times were better than the predictions over longer lead times. The proposed method is a cost effective and convenient option when a site-specific information is desired.
机译:海洋中的操作活动,例如结构修复计划或捕鱼探险,需要在几个小时的典型时间内实时预测海浪。这样的预测可以通过使用数值模型或采用连续记录的波的时间序列模型来进行。本文提出了这样做的另一种选择,它基于不同的时间序列方法,其中输入采用先前风速和风向观测的形式。这对于那些没有部署昂贵的波浪浮标,而仅系泊测量风的气象浮标的站将是有用的。该技术采用了人工神经网络(ANN),遗传编程(GP)和模型树(MT)的替代人工智能方法来对风进行时间序列建模以获得波浪。使用了印度东海岸四个海上站点的风向观测资料。出于校准目的,使用数值模型生成了波浪数据。与选择的误差标准相比,使用建议的时间序列模型获得的预测波与数值生成的波进行比较显示出良好的相似性。并未注意到ANN,GP,MT所选技术之间的巨大差异。在同一时间步长的波后播和对较短交货时间的预测要优于较长交货时间的预测。当需要特定于站点的信息时,建议的方法是一种经济高效且方便的选择。

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