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Multi-model ensemble predictions of precipitation and temperature using machine learning algorithms

Multi-Model Ensembles (MMEs) are often employed to reduce the uncertainties related to GCM simulations/projections. The objective of this study was to evaluate the performance of MMEs developed using machine learning (ML) algorithms with different combinations of GCMs ranked based on their performan...

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Bibliographic Details
Published in:Atmospheric research 2020-05, Vol.236, p.104806, Article 104806
Main Authors: Ahmed, Kamal, Sachindra, D.A., Shahid, Shamsuddin, Iqbal, Zafar, Nawaz, Nadeem, Khan, Najeebullah
Format: Article
Language:English
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Summary:Multi-Model Ensembles (MMEs) are often employed to reduce the uncertainties related to GCM simulations/projections. The objective of this study was to evaluate the performance of MMEs developed using machine learning (ML) algorithms with different combinations of GCMs ranked based on their performance and determine the optimum number of GCMs to be included in an MME. In this study ML algorithms; Artificial Neural Network (ANN), K-Nearest Neighbour (KNN), Support Vector Machine (SVM) and Relevance Vector Machine (RVM) were used to develop MMEs for annual, monsoon and winter; precipitation (P), maximum (Tmax) and minimum (Tmin) temperature over Pakistan using 36 Coupled Model Intercomparison Project Phase 5 GCMs. GCMs were ranked using Taylor Skill Score for individual seasons and variables, and then using a comprehensive Rating Metric (RM) overall rank of each GCM was determined. It was found that, HadGEM2-AO is the most skilled GCM and IPSL-CM5B-LR is the least skilled GCMs in simulating the 3 climate variables. The performance of MMEs did not improve after the inclusion of about 18 top-ranked GCMs. Thus, it was understood that the optimum performance of MMEs is achieved when about 50% of the top-ranked GCMs are used. The inter-comparison of MMEs developed with ANN, KNN, SVM and RVM revealed that KNN and RVM-based MMEs show better skills. It was found that RVM yields MMEs which show smaller variations in performance over space unlike ANN which displayed large fluctuations in performance over space. KNN and RVM are recommended over SVM and ANN for the development of MMEs over Pakistan. •Optimum performance of multi-model ensemble is achieved with 50% of top-ranked GCMs.•K-Nearest Neighbour and Relevance Vector Machine are good for multi-model ensembles.•Artificial Neural Network multi-model ensembles showed large performance fluctuations in space.•Machine learning-based multi-model ensembles outperformed simple ensmeble mean.
ISSN:0169-8095
1873-2895
DOI:10.1016/j.atmosres.2019.104806