Assessment of long term spatio-temporal variability in temperature over the Kalaburgi District, North Eastern Region of Karnataka, India.

Long term spatio-temporal variability over the Kalaburgi

Authors

  • SIDDHARAM Department Soil and Water Engineering, Kelappaji College of Agricultural,Engineering and Technology, Kerala Agricultural University, Tavanur, Malappuram -679573 India
  • JANARDAN BHIMA KAMBALE University of Agricultural Sciences, Raichur
  • DANDEKAR AT Department of Agricultural Engineering, College of Agriculture, Bheemarayanagudi, University of Agricultural Sciences, Raichur-585104, India
  • BASAVARAJA D Department of Environmental Science, College of Agriculture, Bheemarayanagudi, University of Agricultural Sciences, Raichur-585104, India

DOI:

https://doi.org/10.21921/jas.v9i01.9896

Keywords:

Mann- Kendall Test, Sen’s estimator, Spatial analysis, Interpolation

Abstract

In recent days observed extreme variations in the climate and weather events are increasingly being recognized as key aspects of climate change.  ln this study we assessed  the spatial-temporal variability of minimum and maximum  temperature  over the Kalaburgi district of Karnataka, India for the period 1981-2018, using gridded data with 0.5-degree  resolution obtained from National Aeronautics and Space Administration  prediction  of worldwide energy resource  (NASA POWER) project. Trend detection and quantification in the temperature evaluated using the non-parametric Mann-Kendall (MK) test and Sen’s slope estimator. The overall average of minimum and maximum temperature data and Sen,s estimate showed the increasing  trend  in series  for the  last 38 years. The highest average minimum  temperature  observed  is densly distributed over  the Jewargi with a range of 24.74 0C  to 26.68 0C and all other places found sparsely  distributed with range 19.98 0C  to 23.50 0C. ln the overall,  the spatial  distribution  analysis  results observed the densely distribution  of maximum  temperature  in AIand, Afzalpur, Jewargi  and part of Kalaburgi with  range of 32.88 0C to 33.99 0C. The average maximum temperature exhibited the increasing trend linearly and Sen's slope also estimated increasing trend in the study area.  

Author Biographies

SIDDHARAM, Department Soil and Water Engineering, Kelappaji College of Agricultural,Engineering and Technology, Kerala Agricultural University, Tavanur, Malappuram -679573 India

Ph. D. Scholar, Department Soil and Water Engineering, Kelappaji College of Agricultura,Engineering and Technology, Kerala Agricultural University, Tavanur, Malappuram -679573 India

JANARDAN BHIMA KAMBALE, University of Agricultural Sciences, Raichur

Assistant Professor of Soil and Water Engineering,

DANDEKAR AT , Department of Agricultural Engineering, College of Agriculture, Bheemarayanagudi, University of Agricultural Sciences, Raichur-585104, India

Department of Agricultural Engineering, College of Agriculture, Bheemarayanagudi, University of Agricultural Sciences, Raichur-585104, India 

BASAVARAJA D, Department of Environmental Science, College of Agriculture, Bheemarayanagudi, University of Agricultural Sciences, Raichur-585104, India

Department of Environmental Science, College of Agriculture, Bheemarayanagudi, University of Agricultural Sciences, Raichur-585104, India

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https://power.larc.nasa.gov / data-access-viewer/.

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Published

2022-03-17