Spatiotemporal variability of extreme temperature indices and their implications over the heterogeneous river basin, India

被引:0
作者
Shubham M. Jibhakate
Lalit Kumar Gehlot
P. V. Timbadiya
P. L. Patel
机构
[1] Sardar Vallabhbhai National Institute of Technology Surat,Department of Civil Engineering
来源
Environmental Monitoring and Assessment | 2023年 / 195卷
关键词
Extreme temperature indices; Trend detection; Principal component analysis (PCA); Cluster analysis; Heat stress; Tapi River basin;
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中图分类号
学科分类号
摘要
The current study on spatiotemporal variability of temperature presents a holistic approach for quantifying the joint space–time variability of extreme temperature indices over the physio-climatically heterogeneous Tapi River basin (TRB) using two unsupervised machine learning algorithms, i.e., principal component analysis (PCA) and cluster analysis. The long-term variability in extreme temperature indices, recommended by the Expert Team on Climate Change Detection and Indices (ETCCDI), was evaluated for 1951–2016. The magnitude and statistical significance of the temporal trend in extreme temperature indices were estimated using non-parametric Sen’s slope estimator and modified Mann Kendall (MMK) tests, respectively. The multivariate assessment of temporal trends using PCA resulted in four principal components (PCs) encapsulating more than 90% variability. The cluster analysis of corresponding PCs resulted in two spatial clusters exhibiting homogeneous spatiotemporal variability. Cluster 1 is characterized by significantly increasing hottest, very hot, and extremely hot days with rising average maximum temperature and intraday temperature variability. On the other hand, cluster 2 showed significantly rising coldest nights, mean minimum, mean temperature, and Tx37 with significantly decreasing intraday and interannual temperature variability, very cold, and extremely cold nights with reducing cold spell durations. The summertime heat stress computation revealed that the Purna sub-catchment of the Tapi basin is more vulnerable to various health issues and decreased work performance (> 10%) for more than 45 days per year. The current study dealing with the associated effects of rising temperature variability on crop yield, human health, and work performance would help policymakers formulate better planning and management strategies to safeguard society and the environment.
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[81]  
Yu R(2013)Observed variability and trends in extreme temperature indices and rice–wheat productivity over two districts of Bihar, India—A case study Theoretical and Applied Climatology 111 235-687
[82]  
Zheng H(2013)Global hot-spots of heat stress on agricultural crops due to climate change Agricultural and Forest Meteorology 170 206-138
[83]  
Gan M(2020)Spatio-temporal trends and shift analysis of temperature for Wainganga sub-basin, India International Journal of Environmental Studies 77 464-1360
[84]  
Fischer EM(2015)Analysis of monsoon rainfall variability over Narmada basin in central India: Implication of climate change Journal of Water and Climate Change 6 615-381
[85]  
Knutti R(2017)Trend analysis of temperature and precipitation extremes in major grain producing area of China International Journal of Climatology 37 672-677
[86]  
Fuka DR(2011)Changes in precipitation with climate change Climate Research 47 123-60608
[87]  
Walter MT(2021)Exploring extreme warm temperature trends in South Africa: 1960–2016 Theoretical and Applied Climatology 143 1341-692
[88]  
MacAlister C(2018)Extreme heat in India and anthropogenic climate change Natural Hazards and Earth System Sciences 18 365-1087
[89]  
Degaetano AT(1990)Empirical data on contemporary global climate changes (temperature and precipitation) Journal of Climate 3 662-131
[90]  
Steenhuis TS(2021)Mortality risk attributable to diurnal temperature range: A multicity study in Yunnan of southwest China Environmental Science and Pollution Research 28 60597-59