Department of Water Resources & Ocean Engineering, National Institute of Technology Karnataka, Surathkal, Mangalore, 575 025, India.
Environ Monit Assess. 2022 Jun 13;194(7):498. doi: 10.1007/s10661-022-10011-0.
Studies on historical patterns of climate variables and climate indices have attained significant importance because of the increasing frequency and severity of extreme events worldwide. While the recent events in the tropical state of Kerala (India) have drawn attention to the catastrophic impacts of extreme rainfall events leading to landslides and loss of human lives, a comprehensive and long-term spatiotemporal assessment of climate variables is still lacking. This study investigates the long-term trend analysis (119 years) of climate variables at 5% significance level over the state using gridded datasets of daily rainfall (0.25° × 0.25° spatial resolution) and temperature (1° × 1° spatial resolution) at annual and seasonal scales (south-west monsoon, north-east monsoon, winter and summer). Five trend analysis techniques including the Mann-Kendall test (MK), three modified Mann-Kendall tests and innovative trend analysis (ITA) test were performed in the study. It is evident from the trend analysis results that more than 83% of grid points were showing negative trends in annual and south-west monsoon season rainfall series (at a mean rate of 39.70 mm and 28.30 mm per decade respectively). All the trend analysis tests identified statistically significant increasing trends in mean and maximum temperature at annual and seasonal scales (0.10 to 0.20 °C/decade) for all grids. The K-means clustering algorithm delineated 59 grid points into five clusters for annual rainfall, illustrating a clear geographical pattern over the study area. There is a clear gradient in rainfall distribution and concentration inside the state at annual as well as seasonal scales. The majority of annual rainfall is concentrated in a few months of the year. That may lead the state vulnerable to water scarcity in non-rainy seasons.
由于全球极端事件的频率和严重程度不断增加,对历史气候变量和气候指数模式的研究变得尤为重要。虽然印度热带喀拉拉邦(Kerala)最近发生的事件引起了人们对导致山体滑坡和人员伤亡的极端降雨事件的灾难性影响的关注,但对气候变量的全面和长期时空评估仍然缺乏。本研究使用每日降雨量(空间分辨率为 0.25°×0.25°)和温度(空间分辨率为 1°×1°)的网格化数据集,在 5%的显著水平上,对该州的气候变量进行了长达 119 年的长期趋势分析(年和季节尺度:西南季风、东北季风、冬季和夏季)。在研究中进行了五种趋势分析技术,包括 Mann-Kendall 检验(MK)、三种改进的 Mann-Kendall 检验和创新趋势分析(ITA)检验。趋势分析结果表明,超过 83%的格点在年降雨量和西南季风季节降雨量序列中呈负趋势(平均速率分别为 39.70mm 和 28.30mm/十年)。所有趋势分析检验都确定了年和季节尺度上平均和最高温度呈统计学上显著的上升趋势(所有网格的 0.10 到 0.20°C/十年)。K-means 聚类算法将 59 个格点划分为五个聚类,用于年降雨量,清晰地描绘了研究区域内的地理模式。在年和季节尺度上,该州内部的降雨量分布和集中程度存在明显的梯度。大部分年降雨量集中在一年中的几个月。这可能使该州在非雨季容易出现水资源短缺。