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Forecasting of Time Series Significant Wave Height Using Wavelet Decomposed Neural Network

机译:采用小波分解神经网络预测时间序列显着波高的预测

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In this current study, a hybrid model of wavelet and Artificial Neural Network (WLNN) has been developed to forecast time series significant wave height for lead times up to 48 h. The data used in the hybrid model are significant wave heights (Hs) belongs to two stations, one near to New Mangalore port, Indian ocean and another near to west of Eureka, Canada in North Pacific ocean. The three hourly significant wave height data for a period of one year was first decomposed through discrete wavelet transformation in order to obtain frequencies of different bands in the form of wavelet coefficients. Later these coefficients are used as inputs into Levenberg Marquardt artificial neural network models to forecast time series significant wave heights at multistep lead time. Two different methods WLNN-1 &WLNN-2 employed for the first station data to forecast significant wave heights at higher lead times. From the result it is found that the second method (WLNN-2) in wavelet-ANN model performed better than first method (WLNN-1).Model results obtained for two stations showed good predictions at lower lead times but slight deviation observed at higher lead times. As compared to first station results, the second station results are slightly poor because of more statistical variations in the data set.
机译:在当前的研究中,小波和人工神经网络(WLNN)的混合模式已经发展到预测的时间序列的交货时间,显著波高可达48小时。在混合模型中使用的数据是显著波高(HS)属于两个站,一个靠近新芒格洛尔港口,印度洋和另一个附近的尤里卡,加拿大西部的北太平洋。对于为期一年的三个小时显著波高数据是为了获得在小波系数的形式不同的频带的频率通过离散小波变换首先被分解。后来这些系数作为在多级前置时间投入的Levenberg马夸特人工神经网络模型来预测时间序列显著浪高。用于第一站的数据采用两种不同的方法WLNN-1。&WLNN-2来预测在更高的交货时间,显著波高度。从该结果可以发现,在小波-ANN模型的第二个方法(WLNN-2)比第一种方法进行更好(WLNN-1)。型号的结果获得的两个站表现出良好的预测在较低的交货时间,但稍有偏差在更高的观察交货时间。相比于第一站的结果,所述第二站的结果是,因为在数据集中更多的统计变化的稍差。

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