Innovative trend analysis technique with fuzzy logic and K-means clustering approach for identification of homogenous rainfall region: A long-term rainfall data analysis over Bangladesh

IF 2.9 Q2 GEOGRAPHY, PHYSICAL
Sujit Kumar Roy , Abrar Morshed , Pratik Mojumder , Md. Mahmudul Hasan , A.K.M. Saiful Islam
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Abstract

Understanding regional climatic trends is crucial for taking appropriate actions to mitigate the impacts of climate change and managing water resources effectively. This study aims to investigate the dissimilarities and similarities among various climate stations in Bangladesh from 1981 to 2021. Fuzzy C-means (FCM) and K-means clustering techniques were employed to identify regions with comparable rainfall patterns. Moreover, the innovative trend analysis (ITA) and the Mann-Kendall (MK) test family were utilized to analyze rainfall trends. The results indicate that both K-means and FCM methods successfully detected two rainfall regions in Bangladesh with distinct patterns. The ITA curve analysis revealed that out of the 29 stations, 13 had a non-monotonic increasing trend having no monotonic increasing trend, 8 had a non-monotonic decreasing trend, and 8 exhibited a monotonic decreasing trend. Additionally, the MK tests employed in the study showed predominantly negative trends across Bangladesh. The majority of stations (65.51%) fell into Cluster 1, while the remaining 34.48% were in Cluster 2. In terms of ITA analysis, 17.24% of stations exhibited a monotonic decrease, while there were no stations with a monotonic increase. However, 37.93% of stations showed a non-monotonic increase, and 44.83% displayed a non-monotonic decrease. These identified regions can provide valuable insights for water resource management, disaster risk reduction, and agricultural planning. Moreover, detailed rainfall analysis can help policymakers and scientists develop sustainable and effective regional-scale policies for managing the country's flood and drought situations, ultimately supporting agricultural development and environmental planning.

采用模糊逻辑和 K-means 聚类方法的创新趋势分析技术,用于识别同质降雨区域:孟加拉国长期降雨量数据分析
了解区域气候趋势对于采取适当行动减轻气候变化的影响和有效管理水资源至关重要。本研究旨在调查 1981 年至 2021 年孟加拉国各气候站之间的异同。研究采用了模糊 C 均值(FCM)和 K 均值聚类技术,以确定降雨模式具有可比性的地区。此外,还利用创新趋势分析(ITA)和 Mann-Kendall (MK)测试系列来分析降雨趋势。结果表明,K-means 和 FCM 方法都成功地检测出了孟加拉国两个具有不同降雨模式的地区。ITA 曲线分析表明,在 29 个站点中,13 个站点的降雨量呈非单调递增趋势,8 个站点的降雨量呈非单调递减趋势,8 个站点的降雨量呈单调递减趋势。此外,研究中采用的 MK 检验表明,孟加拉国各地的趋势主要为负值。大多数站点(65.51%)属于第 1 组,其余 34.48%属于第 2 组。在 ITA 分析方面,17.24%的站点呈单调下降趋势,没有站点呈单调上升趋势。然而,37.93%的站点呈现非单调上升,44.83%的站点呈现非单调下降。这些确定的区域可为水资源管理、减少灾害风险和农业规划提供宝贵的见解。此外,详细的降雨分析可以帮助政策制定者和科学家制定可持续和有效的区域尺度政策,以管理国家的洪水和干旱状况,最终支持农业发展和环境规划。
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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来源期刊
Quaternary Science Advances
Quaternary Science Advances Earth and Planetary Sciences-Earth-Surface Processes
CiteScore
4.00
自引率
13.30%
发文量
16
审稿时长
61 days
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