Basin-Scale Prediction of Sea Surface Temperature with Artificial Neural Networks

K. Patil, M. Deo
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引用次数: 31

Abstract

Prediction of sea surface temperature (SST) is desired for several applications ranging from climate studies to maintenance of coastal eco-system. Such prediction with the help of artificial, or simply, neural network has by now fairly stabilized. However corresponding studies are mostly applicable only to a specified single location. In this study we have expanded them to cover an entire sea basin. The basin under consideration is Bay of Bengal (BoB) located on the east side of the Indian peninsula. We have predicted SST at the daily time scale using time series approach in which we feed a selected length of past daily SST observations to the neural network and derive the predicted value of SST at multiple lead times (days) as output. The gridded NOAA v2 high resolution dataset derived from satellites was used for this purpose. At every grid in the BoB feed forward back propagation type of neural network was developed. The networks were trained using 70% of data and tested with the help of remaining 30%. The performance in testing of such large spatial-scale networks was judged on the basis of the error statistics of correlation coefficient, ‘r’, and root mean square error, RMSE. The prediction skill of ANN models were found to be very good at shorter lead times (1-3 days) and reasonably good at higher lead times (4-7 days). Apart from that, these ANN models were also evaluated for their performance during extreme weather events which are peculiar to BoB region and found to be capturing such events in advance with sufficient time. Overall therefore it is claimed that the basin-scale neural networks developed in this study can not only carry out multiple time step predictions of daily SST at individual grid points simultaneously but can also predict basin scale weather phenomena in advance.
基于人工神经网络的海盆尺度海表温度预测
从气候研究到沿海生态系统的维护,许多应用都需要海表温度(SST)的预测。在人工或简单的神经网络的帮助下,这种预测到目前为止已经相当稳定。然而,相应的研究大多只适用于特定的单一地点。在这项研究中,我们将它们扩展到覆盖整个海盆。考虑中的盆地是位于印度半岛东侧的孟加拉湾(BoB)。我们使用时间序列方法预测了日时间尺度上的海温,其中我们将过去每日海温观测的选定长度输入神经网络,并推导出多个提前期(天)的海温预测值作为输出。为此目的使用了来自卫星的网格化NOAA v2高分辨率数据集。在BoB的每个网格上都建立了前馈-反向传播型神经网络。这些网络使用70%的数据进行训练,并使用剩余30%的数据进行测试。根据相关系数r和均方根误差RMSE的误差统计来判断这种大空间尺度网络的测试性能。人工神经网络模型的预测能力在较短的交货期(1-3天)非常好,在较长的交货期(4-7天)也相当好。此外,这些人工神经网络模型还对其在BoB地区特有的极端天气事件中的表现进行了评估,并发现它们在足够的时间内提前捕获了这些事件。综上所述,本研究开发的流域尺度神经网络不仅可以同时对单个网格点的日海温进行多时间步预测,而且可以提前预测流域尺度的天气现象。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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