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Bay of Bengal wave forecast based on genetic algorithm: A comparison of univariate and multivariate approaches

机译:基于遗传算法的孟加拉湾海浪预测:单变量和多变量方法的比较

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Prediction of significant wave height (SWH) field is carried out in the Bay of Bengal (BOB) using a combination of empirical orthogonal function (EOF) analysis and genetic algorithm (GA). EOF analysis is performed on 4 years (2005-2008) of numerical wave model generated SWH field, and analyzed fields of zonal (U) and meridional (V) winds. This is to decompose the space-time distributed data into spatial modes ranked by their temporal variances. Two different variants of GA are tested. In the first one, univariate GA is applied to the time series of the first principal component (PC) of SWH in the training dataset after a filtering with singular spectrum analysis (SSA) for effecting noise reduction. The generated equations are used to carry out forecast of SWH field with various lead times. In the second method, multivariate GA is applied to the SSA filtered time series of the first PC of SWH, and time- lagged first PCs of U and V and again forecast equations are generated. Once again the forecast of SWH is carried out with same lead times. The quality of forecast is evaluated in terms of root mean square error of forecast. The results are also compared with buoy data at a location. It is concluded that the method can serve as a cost-effective alternate prediction technique in the BOB.
机译:结合经验正交函数(EOF)分析和遗传算法(GA)在孟加拉湾(BOB)中进行了重要波高(SWH)场的预测。对4年(2005-2008年)的数值波模型产生的SWH场进行EOF分析,并分析了纬向(U)和子午(V)风的场。这是为了将时空分布的数据分解为按其时间方差排序的空间模式。测试了GA的两个不同变体。在第一个中,将单变量GA应用于训练数据集中SWH的第一个主成分(PC)的时间序列,然后使用奇异频谱分析(SSA)进行滤波以实现降噪。所产生的方程式被用来进行具有不同提前期的SWH场的预测。在第二种方法中,将多元GA应用于SWH的第一个PC的经SSA滤波的时间序列,然后生成U和V的时滞的第一个PC,并再次生成预测方程。再次以相同的交付周期进行SWH的预测。根据预测的均方根误差评估预测的质量。还将结果与某个位置的浮标数据进行比较。结论是,该方法可以作为BOB中具有成本效益的替代预测技术。

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