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Multiple regression modelling approach for rainfall prediction using large-scale climate indices as potential predictors

机译:使用大规模气候指数作为潜在预测因子的降雨预测的多元回归建模方法

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摘要

Some studies established the associations with different climate indices (Southern Oscillation Index, Indian Ocean Dipole and Southern Annular Mode) and seasonal rainfalls of different parts of Australia. Nevertheless, maximum predictability of South Australian rainfall was only 20% with individual effects of potential predictor. To establish a better relationship for South Australian spring rainfall prediction, this paper presents two further investigations: 1) relationship of lagged climate indices with rainfall; 2) combined influence of these lagged climate indicators on rainfall. Multiple linear regression (MLR) modelling was used to evaluate the influence of combined predictors. Three rainfall stations were selected from South Australia as a case study. It was revealed that significantly increased rainfall predictability has been achieved through MR models using the influences of combine-lagged climate predictors. The rainfall predictability ranging from 41% to 45% has been achieved using combined lagged-indices, whereas maximum 33% predictability can be achieved using individual climate index.
机译:一些研究建立了与不同气候指数(南方涛动指数,印度洋偶极子和南方环状模式)和澳大利亚不同地区的季节性降雨之间的联系。然而,南澳大利亚降水的最大可预测性只有20%,并具有潜在预测因素的个别影响。为了建立南澳大利亚春季降水预测的更好关系,本文提出了两个进一步的研究:1)滞后气候指数与降雨的关系; 2)这些滞后的气候指标对降雨的综合影响。多元线性回归(MLR)建模用于评估组合预测变量的影响。从南澳大利亚选择了三个降雨站作为案例研究。结果表明,利用结合滞后气候预报器的影响,通过MR模型已实现了显着提高的降雨预报性。使用组合的滞后指标可实现41%至45%的降雨可预测性,而使用单独的气候指数可实现最大33%的可预测性。

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