确定分析印度东部四个流域长期(120 年)年降雨量和季节降雨量趋势的最佳方法

IF 1.3 4区 地球科学 Q3 GEOSCIENCES, MULTIDISCIPLINARY Journal of Earth System Science Pub Date : 2024-04-04 DOI:10.1007/s12040-024-02282-7
Gaurav Patel, Subhasish Das, Rajib Das
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引用次数: 0

摘要

研究降雨模式非常重要,因为农业生产和洪水条件取决于适当的水资源管理。因此,要实现这一目标,准确识别气候情景的趋势至关重要。因此,本研究采用曼-肯德尔检验法(MKT)、修正曼-肯德尔检验法(MMKT)、斯皮尔曼秩相关法(SRC)、森斜率估计法(SSE)和创新趋势分析法(ITAM)分析降雨趋势。这项调查利用 1901 年至 2020 年最广泛的水文气象时间序列分析了年降雨量、季风降雨量、秋季降雨量、夏季降雨量和冬季降雨量的趋势。其中五种趋势分析方法使用了印度气象局提供的 120 年网格气象数据,涉及印度东部相邻的四个河流流域:康萨巴蒂(Kangsabati)、凯里亚海(Keliaghai)、西拉巴蒂(Silabati)和德瓦克斯维尔(Dwarkeswer)。在冬季,使用 MKT、MMKT、SRC 和 SSE 没有检测到明显的趋势。而 ITAM 在研究区域 88% 的网格点检测到了明显的趋势。在其他季节,MKT、MMKT、SRC 和 SSE 在 76% 的网格点上发现了趋势,但显著性低于 ITAM 方法。事实证明,使用 ITAM 和 MMKT 方法得出的总体结果在探测敏感趋势方面更为有效。这项研究可为识别和战略性减缓气候变化对水资源管理的影响提供科学支持,从而降低气候变化的风险。
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Determine the best method for analysing long-term (120 years) annual and seasonal rainfall trends in four east India river basins

Studying rainfall patterns is very important because agricultural production and flood conditions depend on proper water management. Therefore, accurately identifying trends in climate scenarios is essential to achieve this goal. This study, therefore, analyses rainfall trends using the Mann–Kendall test (MKT), modified Mann–Kendall test (MMKT), Spearman rank correlation (SRC), Şen slope estimator (SSE), and innovative trend analysis method (ITAM). This investigation analyses annual, monsoon, autumn, summer, and winter rainfall trends using the most extensive hydrometeorological time series from 1901 to 2020. Five such methods of trend analysis use 120 years of gridded meteorological data from the India Meteorological Department for the neighbouring four river basins Kangsabati, Keliaghai, Silabati, and Dwarkeswer in east India. For the winter period, no significant trend is detected using the MKT, MMKT, SRC, and SSE. While the ITAM detects a significant trend at 88% of grid points of the study area. During other seasons, the MKT, MMKT, SRC and SSE notice trends for 76% of grid points with less significance than the ITAM method. Overall results obtained using the ITAM and MMKT methods are proved to be more effective in detecting sensitive trends. This study can serve as scientific support for the identification and strategic mitigation of climatic change impacts on water management to reduce the risk of climate change.

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来源期刊
Journal of Earth System Science
Journal of Earth System Science Earth and Planetary Sciences-General Earth and Planetary Sciences
CiteScore
3.20
自引率
5.30%
发文量
226
期刊介绍: The Journal of Earth System Science, an International Journal, was earlier a part of the Proceedings of the Indian Academy of Sciences – Section A begun in 1934, and later split in 1978 into theme journals. This journal was published as Proceedings – Earth and Planetary Sciences since 1978, and in 2005 was renamed ‘Journal of Earth System Science’. The journal is highly inter-disciplinary and publishes scholarly research – new data, ideas, and conceptual advances – in Earth System Science. The focus is on the evolution of the Earth as a system: manuscripts describing changes of anthropogenic origin in a limited region are not considered unless they go beyond describing the changes to include an analysis of earth-system processes. The journal''s scope includes the solid earth (geosphere), the atmosphere, the hydrosphere (including cryosphere), and the biosphere; it also addresses related aspects of planetary and space sciences. Contributions pertaining to the Indian sub- continent and the surrounding Indian-Ocean region are particularly welcome. Given that a large number of manuscripts report either observations or model results for a limited domain, manuscripts intended for publication in JESS are expected to fulfill at least one of the following three criteria. The data should be of relevance and should be of statistically significant size and from a region from where such data are sparse. If the data are from a well-sampled region, the data size should be considerable and advance our knowledge of the region. A model study is carried out to explain observations reported either in the same manuscript or in the literature. The analysis, whether of data or with models, is novel and the inferences advance the current knowledge.
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