Rainfall data classification using Mann-Kendall test statistics associated with Neuro Fuzzy technique: A case study of Chennai district

A. Raj, H. Henrietta, J. P. Angelena
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Abstract

Climate change, rainfall, weather forecasting is of great concern during the past two decades as scientists and researchers are cautious in building standard numerical models to simulate and forecast the weather parameters in efficient and reliable way. In India, the monsoon is largely responsible for rainfall. India experiences three distinct seasons throughout the year as a result of the monsoon, which originates from the reversal of the predominant wind direction from Southwest to Northeast. Between June and October, the Southwest monsoon, sometimes known as the “wet” season, brings significant rainfall across the majority of the nation. The focus of this research work is to analyse the data of rainfall existed in the past 100 years (1901–2000) and implementing artificial intelligent methods to frame certain classification of algorithm which can forecast the level of rainfall in the future. Data from 1901–2000 of Chennai district has been taken into account for this research. Statistical evaluations are done based on the database and the tabulated results shows the significance of rainfall. Wavelet analysis of multi resolution criteria is obtained to extract the information of heavy rainfall. Mann Kendall (MK) test statistics is utilized for classifying the rainfall data in four levels viz., very-low, low, moderate, high and very high. Trend analysis for the 17 years is tested using Neuro Fuzzy optimisation algorithm. The efficient training of Neuro fuzzy algorithm forecasts the possible trend using the classification analysis of MK test.
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基于神经模糊技术的Mann-Kendall检验统计的降雨数据分类:以金奈地区为例
气候变化、降雨、天气预报是近二十年来人们非常关注的问题,科学家和研究人员在建立标准数值模式以有效可靠地模拟和预报天气参数方面非常谨慎。在印度,季风是降雨的主要原因。印度一年有三个不同的季节,这是季风的结果,它起源于主导风向从西南转向东北的逆转。在6月到10月之间,西南季风,有时被称为“湿”季节,给全国大部分地区带来了大量降雨。本研究工作的重点是分析过去100年(1901-2000年)的降水资料,并采用人工智能方法构建一定的分类算法来预测未来的降水水平。本研究采用了金奈地区1901-2000年的数据。在数据库的基础上进行了统计评估,表格结果显示了降雨的显著性。采用多分辨率判据的小波分析方法提取暴雨信息。利用Mann Kendall (MK)检验统计量将降雨数据分为极低、低、中、高和极高四个等级。采用神经模糊优化算法对17年的趋势分析进行检验。神经模糊算法的有效训练利用MK测试的分类分析预测可能的趋势。
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