A Machine Learning Approach to Statistical Analysis and Prediction of Rainfall and Drought in the Marathwada Subregion

Chandrakant M. Kadam, S. Kale, U. Bhosle, R. S. Holambe
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引用次数: 1

Abstract

Monitoring, mitigating, and forecasting rainfall has been a concern on a global basis up to now. Numerous natural disasters, such as drought, are directly related to it and are impacted by it. Drought is the most hazardous of all the disasters. Identifying drought is difficult as it has no universal definition. It varies from region to region and climate to climate. There are various contributing factors in the judgment. It can be regional resources like climate, soil type, flora and fauna, precipitation, crop culture, etc. Also, many indicators are available that can define a drought and its type. Scientists have tried to find the most reliable indicator to identify the drought. They have concluded that no best indicator exists. In order to find the best fit, researchers recommend focusing on regional resources. The goal of the study is to make an analysis of the rainfall in the semi-arid region of Marathwada and implement a suitable machine learning approach to enhance the outcome. Over 41 years of regional precipitation data are used for the analysis. The monthly rainfall data is prepared for this study. Time series data is modelled with a machine learning approach.
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马拉特瓦达地区降雨和干旱统计分析与预测的机器学习方法
迄今为止,监测、减轻和预报降雨一直是全球关注的问题。许多自然灾害,如干旱,都与它直接相关,并受到它的影响。干旱是所有灾害中最危险的。识别干旱是困难的,因为它没有普遍的定义。它因地区和气候而异。在这个判断中有各种各样的影响因素。它可以是气候、土壤类型、动植物、降水、作物栽培等区域资源。此外,有许多指标可以确定干旱及其类型。科学家们试图找到最可靠的指标来确定干旱。他们的结论是,不存在最好的指标。为了找到最合适的人选,研究人员建议关注地区资源。该研究的目的是对马拉特瓦达半干旱地区的降雨进行分析,并实施合适的机器学习方法来提高结果。分析使用了超过41年的区域降水资料。为本研究准备了月降雨量数据。时间序列数据用机器学习方法建模。
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