Statistical bias correction on the climate model for el nino index prediction

S. Nurdiati, A. Sopaheluwakan, Yoga Abdi Pratama, M. Najib
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Abstract

El Nino can harm many sectors in Indonesia by reducing precipitation levels in some areas. The occurrence of El Nino can be estimated by observing the sea surface temperature in Nino 3.4 region. Therefore, an accurate model on sea surface temperature prediction in Nino 3.4 region is needed to optimize the estimation of the occurrence of El Nino, such as ECMWF. However, the prediction model released by ECMWF still consists of some systematic errors or biases. This research aims to correct these biases using statistical bias correction techniques and evaluate the prediction model before and after correction. The statistical bias correction uses linear scaling, variance scaling, and distribution mapping techniques. The results show that statistical bias correction can reduce the prediction model bias. Also, the distribution mapping and variance scaling are more accurate than the linear scaling technique. Distribution mapping has better RMSE in December-March, and variance scaling has better RMSE in April-June also in October and November. However, in July-September, prediction from ECMWF has better RMSE. The application of statistical bias correction techniques has the highest refinement in January-March at the first lead time and in April at the fifth until the seventh lead time. 
厄尔尼诺指数预测气候模式的统计偏差校正
厄尔尼诺现象可以通过减少一些地区的降水水平来损害印度尼西亚的许多部门。通过观测Nino 3.4区域的海表温度,可以估计El Nino的发生。因此,需要一个准确的预测Nino 3.4区域海温的模式,如ECMWF,来优化对El Nino发生的估计。然而,ECMWF发布的预测模型仍然存在一些系统误差或偏差。本研究旨在利用统计偏差校正技术对这些偏差进行校正,并对校正前后的预测模型进行评估。统计偏差校正使用线性缩放、方差缩放和分布映射技术。结果表明,统计偏差校正可以减小预测模型的偏差。此外,分布映射和方差标度比线性标度更精确。分布映射在12 - 3月有较好的RMSE,方差缩放在4 - 6月有较好的RMSE, 10月和11月也有较好的RMSE。但在7 - 9月,ECMWF预测的均方根误差更好。统计偏差校正技术的应用在1 - 3月的第一个前置期和4月的第5 - 7个前置期的精细化程度最高。
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