Comparing Spatial Interpolation Methods for CMIP5 Monthly Precipitation at Catchment Scale

Use of Regional Climate Models (RCMs) is prevalent in downscaling the large scale climate information from the General Circulation Models (GCMs) to local scale. But it is computationally intensive and requires application of a numerical weather prediction model. For more straightforward computation,...

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Main Authors: Hossain, MD Monowar, Garg, Nikhil, Anwar, Faisal, Prakash, Mahesh
Format: Journal Article
Published: 2021
Subjects:
Online Access:http://iwrs.org.in/journal/apr2021/5apr.pdf
http://hdl.handle.net/20.500.11937/87549
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author Hossain, MD Monowar
Garg, Nikhil
Anwar, Faisal
Prakash, Mahesh
author_facet Hossain, MD Monowar
Garg, Nikhil
Anwar, Faisal
Prakash, Mahesh
author_sort Hossain, MD Monowar
building Curtin Institutional Repository
collection Online Access
description Use of Regional Climate Models (RCMs) is prevalent in downscaling the large scale climate information from the General Circulation Models (GCMs) to local scale. But it is computationally intensive and requires application of a numerical weather prediction model. For more straightforward computation, spatial interpolation are commonly used to re-gridding the GCM data to local scales. There are many interpolation methods available, but mostly they are chosen randomly, especially for GCM data. This study compared eight interpolation methods (linear, bi-linear, nearest neighbour, distance weighted average, inverse distance weighted average, first-order conservative, second-order conservative and bi-cubic interpolation) for re-gridding of CMIP5 decadal experimental data to a catchment scale. For this, CMIP5 decadal precipitation data from three GCMs were collected and subset for Australia and then re-gridded to 0.05 degree spatial resolution matching with the observed gridded data. The re-gridded data were subset for Brisbane catchment in Queensland, Australia and a number of skill tests (root mean squared error, mean absolute error, correlation coefficient, Pearson correlation, Kendal’s tau correlation and index of agreement) were conducted for a selected observed point to check the performances of different interpolation methods. Additionally, temporal skills were computed over the entire catchment and compared. Based on the skill tests over the study area, the second-order conservative (SOC) method was found to be an appropriate choice for interpolating the gridded dataset.
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spelling curtin-20.500.11937-875492022-03-01T05:58:46Z Comparing Spatial Interpolation Methods for CMIP5 Monthly Precipitation at Catchment Scale Hossain, MD Monowar Garg, Nikhil Anwar, Faisal Prakash, Mahesh 0905 - Civil Engineering Use of Regional Climate Models (RCMs) is prevalent in downscaling the large scale climate information from the General Circulation Models (GCMs) to local scale. But it is computationally intensive and requires application of a numerical weather prediction model. For more straightforward computation, spatial interpolation are commonly used to re-gridding the GCM data to local scales. There are many interpolation methods available, but mostly they are chosen randomly, especially for GCM data. This study compared eight interpolation methods (linear, bi-linear, nearest neighbour, distance weighted average, inverse distance weighted average, first-order conservative, second-order conservative and bi-cubic interpolation) for re-gridding of CMIP5 decadal experimental data to a catchment scale. For this, CMIP5 decadal precipitation data from three GCMs were collected and subset for Australia and then re-gridded to 0.05 degree spatial resolution matching with the observed gridded data. The re-gridded data were subset for Brisbane catchment in Queensland, Australia and a number of skill tests (root mean squared error, mean absolute error, correlation coefficient, Pearson correlation, Kendal’s tau correlation and index of agreement) were conducted for a selected observed point to check the performances of different interpolation methods. Additionally, temporal skills were computed over the entire catchment and compared. Based on the skill tests over the study area, the second-order conservative (SOC) method was found to be an appropriate choice for interpolating the gridded dataset. 2021 Journal Article http://hdl.handle.net/20.500.11937/87549 http://iwrs.org.in/journal/apr2021/5apr.pdf unknown
spellingShingle 0905 - Civil Engineering
Hossain, MD Monowar
Garg, Nikhil
Anwar, Faisal
Prakash, Mahesh
Comparing Spatial Interpolation Methods for CMIP5 Monthly Precipitation at Catchment Scale
title Comparing Spatial Interpolation Methods for CMIP5 Monthly Precipitation at Catchment Scale
title_full Comparing Spatial Interpolation Methods for CMIP5 Monthly Precipitation at Catchment Scale
title_fullStr Comparing Spatial Interpolation Methods for CMIP5 Monthly Precipitation at Catchment Scale
title_full_unstemmed Comparing Spatial Interpolation Methods for CMIP5 Monthly Precipitation at Catchment Scale
title_short Comparing Spatial Interpolation Methods for CMIP5 Monthly Precipitation at Catchment Scale
title_sort comparing spatial interpolation methods for cmip5 monthly precipitation at catchment scale
topic 0905 - Civil Engineering
url http://iwrs.org.in/journal/apr2021/5apr.pdf
http://hdl.handle.net/20.500.11937/87549