Predictors and their domain for statistical downscaling of climate in Bangladesh

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Abstract

Reliable projection of future rainfall in Bangladesh is very important for the assessment of possible impacts of climate change and implementation of necessary adaptation and mitigation measures. Statistical downscaling methods are widely used for downscaling coarse resolution general circulation model (GCM) output at local scale. Selection of predictors and their spatial domain is very important to facilitate downscaling future climate projected by GCMs. The present paper reports the finding of the study conducted to identify the GCM predictors and demarcate their climatic domain for statistical downscaling in Bangladesh at local or regional scale. Twenty-six large scale atmospheric variables which are widely simulated GCM predictors from 45 grid points around the country were analysed using various statistical methods for this purpose. The study reveals that large-scale atmospheric variables at the grid points located in the central-west part of Bangladesh have the highest influence on rainfall. It is expected that the finding of the study will help different meteorological and agricultural organizations of Bangladesh to project rainfall and temperature at local scale in order to provide various agricultural or hydrological services.

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APA

Alamgir, M., Hadi Pour, S., Mohsenipour, M., Mehedi Hasan, M., & Ismail, T. (2016). Predictors and their domain for statistical downscaling of climate in Bangladesh. Jurnal Teknologi, 78(6–12), 51–56. https://doi.org/10.11113/jt.v78.9232

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