Identification of Rainfall events on Climate Phenomena in Medan based on Machine Learning

Deassy Eirene Diana Doloksaribu, Kerista Tarigan, R. M. Putra, Yahya Darmawan
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Abstract

Indonesia has diverse topographical conditions that result in Indonesia having a unique climate. One of the unique climate elements to be studied is rainfall, because rainfall has a different pattern in each region, this different rainfall pattern is caused by several climate phenomena factors that affect the rainfall pattern, including El-Nino Southern Oscillation (ENSO), Indian Ocean Dipole (IOD) and Madden Julian Oscillation (MJO). Medan City is the capital of North Sumatra province which is one of the areas in the flood-prone category in North Sumatra, where the factor of flooding is due to rainfall events in a long period of time, so the author wants to know which climatic phenomena factors can affect rainfall events in Medan city by using Machine Learning technology through the Matlab application, where in this study has a method by forming four combination models, namely the combination of the influence of IOD, SOI and MJO; second combination of IOD and SOI; third combination of SOI and MJO; and fourth combination of MJO and IOD, these four combinations will be the rainfall value of the four models. Furthermore, the rainfall value of the model is compared with the observed rainfall value and verification test using Mean Absolute Error (MAE) and correlation. Then the calculation of the comparison between the four rainfall models with the observed rainfall obtained the lowest MAE value during the SOI and MJO phenomenon of 15.0 mm and the highest correlation value during the IOD and SOI and SOI and MJO phenomena. So it is concluded that the combination of SOI and MJO has the best verification value. This shows that based on Machine Learning modeling, the model shown as the best predictor in Medan city is when the model combination consists of SOI and MJO.
基于机器学习的棉兰降雨事件对气候现象的识别
印度尼西亚地形条件多样,气候独特。需要研究的独特气候因素之一是降雨,因为每个地区的降雨模式不同,这种不同的降雨模式是由影响降雨模式的几种气候现象因素引起的,包括厄尔尼诺南方涛动(ENSO)、印度洋偶极子(IOD)和麦登-朱利安涛动(MJO)。棉兰市是北苏门答腊省的首府,北苏门答腊省是北苏门答腊易发洪水的地区之一,洪水的因素是由于长时间的降雨事件,因此作者想通过Matlab应用程序使用机器学习技术来了解哪些气候现象因素会影响棉兰市的降雨事件,其中,本研究有一种方法,通过形成四个组合模型,即IOD、SOI和MJO的影响组合;IOD和SOI的第二组合;SOI和MJO的第三种组合;MJO和IOD的第四个组合,这四个组合将是四个模型的降雨量值。此外,将模型的降雨量与观测降雨量进行了比较,并使用平均绝对误差(MAE)和相关性进行了验证试验。然后,将四个降雨模型与观测到的降雨量进行比较计算,得出SOI和MJO现象期间的MAE值最低为15.0mm,IOD和SOI以及SOI和MJ现象期间的相关值最高。因此,SOI和MJO的组合具有最佳的验证价值。这表明,基于机器学习建模,棉兰市的最佳预测模型是当模型组合由SOI和MJO组成时。
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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