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Forecasting Monthly Rainfall in the Bowen Basin of Queensland, Australia, Using Neural Networks with Nino Indices

机译:使用Nino指数的神经网络预测澳大利亚昆士兰州Bowen盆地的月降雨量

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For three decades there has been a significant global effort to improve El Nino-Southern Oscillation (ENSO) forecasts with the focus on using fully physical ocean-atmospheric coupled general circulation models (GCMs). Despite increasing sophistication of these models and the computational power of the computers that drive them, their predictive skill remains comparable with relatively simple statistical models. In this study, an artificial neural network (ANN) is used to forecast four indices that describe ENSO, namely Nino 1+2, 3, 3.4 and 4. The skill of the forecast for Nino 3.4 is compared with forecasts from GCMs and found to be more accurate particularly for forecasts with longer-lead times, and with no evidence of a Spring Predictability Barrier. The forecast values for Nino 1 + 2, 3, 3.4 and 4 were subsequendy used as input to an ANN to forecast rainfall for Nebo, a locality in the Bowen Basin, a major coal-mining region of Queensland.
机译:三十年来,全球一直在努力改善厄尔尼诺-南方涛动(ENSO)预报,重点是使用完全物理的海洋-大气耦合的一般环流模型(GCM)。尽管这些模型的复杂性和驱动它们的计算机的计算能力日益提高,但其预测能力仍可与相对简单的统计模型相提并论。在这项研究中,使用人工神经网络(ANN)来预测描述ENSO的四个指标,即Nino 1 + 2、3、3.4和4。将Nino 3.4的预测技巧与GCM的预测进行比较,发现特别是对于交货时间较长的预测,并且没有春季可预测性障碍的证据时,更准确。 Nino 1 + 2、3、3.4和4的预报值随后被用作ANN的输入,以预报Nebo(昆士兰州主要的煤炭开采地区Bowen盆地)的降雨量。

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