A coupled K-nearest neighbour and Bayesian neural network model for daily rainfall downscaling
A coupled K-nearest neighbour (KNN) and Bayesian neural network (BNN) model was developed for downscaling daily rainfall at a single site. The KNN was used for classification of dry/wet day and rainfall typing based on rainfall magnitude. The BNN was applied for prediction of rainfall amount. The pr...
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sg-ntu-dr.10356-1007492020-03-07T11:43:46Z A coupled K-nearest neighbour and Bayesian neural network model for daily rainfall downscaling Lu, Y. Qin, Xiaosheng School of Civil and Environmental Engineering Earth Observatory of Singapore DRNTU::Engineering::Civil engineering A coupled K-nearest neighbour (KNN) and Bayesian neural network (BNN) model was developed for downscaling daily rainfall at a single site. The KNN was used for classification of dry/wet day and rainfall typing based on rainfall magnitude. The BNN was applied for prediction of rainfall amount. The proposed method was applied to rainfall downscaling at Singapore Island. The Climate Forecast System Reanalysis (CFSR) data were used for providing large-scale predictors at a high spatial resolution; 31-years daily rainfall record at two typical weather stations on the island was used as predictand. The performance of KNN–BNN was compared with two classical downscaling tools including automated statistical downscaling tool (ASD) and generalized linear model (GLM). The study results indicated that, the proposed model performed equally good or better than both ASD and GLM, in terms of prediction of basic statistical indicators (i.e. mean, SD, probability of wet days, 90th percentile rainfall amount, and maximum rainfall); it notably outperformed others in generating narrower uncertainty intervals for all indicators, especially for monthly mean and maximum rainfall. It was also demonstrated that separation of yearly data into monthly or seasonal could considerably enhance the performance of KNN–BNN. 2014-06-12T03:05:04Z 2019-12-06T20:27:36Z 2014-06-12T03:05:04Z 2019-12-06T20:27:36Z 2014 2014 Journal Article Lu, Y., & Qin, X. S. (2014). A coupled K-nearest neighbour and Bayesian neural network model for daily rainfall downscaling. International Journal of Climatology, 34(11), 3221-3236. 0899-8418 https://hdl.handle.net/10356/100749 http://hdl.handle.net/10220/19688 10.1002/joc.3906 en International journal of climatology © 2014 Royal Meteorological Society. |
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DRNTU::Engineering::Civil engineering Lu, Y. Qin, Xiaosheng A coupled K-nearest neighbour and Bayesian neural network model for daily rainfall downscaling |
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A coupled K-nearest neighbour (KNN) and Bayesian neural network (BNN) model was developed for downscaling daily rainfall at a single site. The KNN was used for classification of dry/wet day and rainfall typing based on rainfall magnitude. The BNN was applied for prediction of rainfall amount. The proposed method was applied to rainfall downscaling at Singapore Island. The Climate Forecast System Reanalysis (CFSR) data were used for providing large-scale predictors at a high spatial resolution; 31-years daily rainfall record at two typical weather stations on the island was used as predictand. The performance of KNN–BNN was compared with two classical downscaling tools including automated statistical downscaling tool (ASD) and generalized linear model (GLM). The study results indicated that, the proposed model performed equally good or better than both ASD and GLM, in terms of prediction of basic statistical indicators (i.e. mean, SD, probability of wet days, 90th percentile rainfall amount, and maximum rainfall); it notably outperformed others in generating narrower uncertainty intervals for all indicators, especially for monthly mean and maximum rainfall. It was also demonstrated that separation of yearly data into monthly or seasonal could considerably enhance the performance of KNN–BNN. |
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School of Civil and Environmental Engineering |
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School of Civil and Environmental Engineering Lu, Y. Qin, Xiaosheng |
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Article |
author |
Lu, Y. Qin, Xiaosheng |
author_sort |
Lu, Y. |
title |
A coupled K-nearest neighbour and Bayesian neural network model for daily rainfall downscaling |
title_short |
A coupled K-nearest neighbour and Bayesian neural network model for daily rainfall downscaling |
title_full |
A coupled K-nearest neighbour and Bayesian neural network model for daily rainfall downscaling |
title_fullStr |
A coupled K-nearest neighbour and Bayesian neural network model for daily rainfall downscaling |
title_full_unstemmed |
A coupled K-nearest neighbour and Bayesian neural network model for daily rainfall downscaling |
title_sort |
coupled k-nearest neighbour and bayesian neural network model for daily rainfall downscaling |
publishDate |
2014 |
url |
https://hdl.handle.net/10356/100749 http://hdl.handle.net/10220/19688 |
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1681041594976829440 |