Neural network based daily precipitation generator (NNGEN-P)
Daily weather generators are used in many applications and risk analyses. The present paper explores the potential of neural network architectures to design daily weather generator models. Focusing this first paper on precipitation, we design a collection of neural networks (multi-layer perceptrons...
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2007
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paper:paper_09307575_v28_n2-3_p307_Boulanger2023-06-08T15:52:37Z Neural network based daily precipitation generator (NNGEN-P) Martínez, Fernando Luis Penalba, Olga C. Segura, Enrique Carlos artificial neural network data set empirical analysis Markov chain precipitation (climatology) rainfall simulation Daily weather generators are used in many applications and risk analyses. The present paper explores the potential of neural network architectures to design daily weather generator models. Focusing this first paper on precipitation, we design a collection of neural networks (multi-layer perceptrons in the present case), which are trained so as to approximate the empirical cumulative distribution (CDF) function for the occurrence of wet and dry spells and for the precipitation amounts. This approach contributes to correct some of the biases of the usual two-step weather generator models. As compared to a rainfall occurrence Markov model, NNGEN-P represents fairly well the mean and standard deviation of the number of wet days per month, and it significantly improves the simulation of the longest dry and wet periods. Then, we compared NNGEN-P to three parametric distribution functions usually applied to fit rainfall cumulative distribution functions (Gamma, Weibull and double-exponential). A data set of 19 Argentine stations was used. Also, data corresponding to stations in the United States, in Europe and in the Tropics were included to confirm the results. One of the advantages of NNGEN-P is that it is non-parametric. Unlike other parametric function, which adapt to certain types of climate regimes, NNGEN-P is fully adaptive to the observed cumulative distribution functions, which, on some occasions, may present complex shapes. On-going works will soon produce an extended version of NNGEN to temperature and radiation. © Springer-Verlag 2006. Fil:Martinez, F. Universidad de Buenos Aires. Facultad de Ciencias Exactas y Naturales; Argentina. Fil:Penalba, O. Universidad de Buenos Aires. Facultad de Ciencias Exactas y Naturales; Argentina. Fil:Segura, E.C. Universidad de Buenos Aires. Facultad de Ciencias Exactas y Naturales; Argentina. 2007 https://bibliotecadigital.exactas.uba.ar/collection/paper/document/paper_09307575_v28_n2-3_p307_Boulanger http://hdl.handle.net/20.500.12110/paper_09307575_v28_n2-3_p307_Boulanger |
institution |
Universidad de Buenos Aires |
institution_str |
I-28 |
repository_str |
R-134 |
collection |
Biblioteca Digital - Facultad de Ciencias Exactas y Naturales (UBA) |
topic |
artificial neural network data set empirical analysis Markov chain precipitation (climatology) rainfall simulation |
spellingShingle |
artificial neural network data set empirical analysis Markov chain precipitation (climatology) rainfall simulation Martínez, Fernando Luis Penalba, Olga C. Segura, Enrique Carlos Neural network based daily precipitation generator (NNGEN-P) |
topic_facet |
artificial neural network data set empirical analysis Markov chain precipitation (climatology) rainfall simulation |
description |
Daily weather generators are used in many applications and risk analyses. The present paper explores the potential of neural network architectures to design daily weather generator models. Focusing this first paper on precipitation, we design a collection of neural networks (multi-layer perceptrons in the present case), which are trained so as to approximate the empirical cumulative distribution (CDF) function for the occurrence of wet and dry spells and for the precipitation amounts. This approach contributes to correct some of the biases of the usual two-step weather generator models. As compared to a rainfall occurrence Markov model, NNGEN-P represents fairly well the mean and standard deviation of the number of wet days per month, and it significantly improves the simulation of the longest dry and wet periods. Then, we compared NNGEN-P to three parametric distribution functions usually applied to fit rainfall cumulative distribution functions (Gamma, Weibull and double-exponential). A data set of 19 Argentine stations was used. Also, data corresponding to stations in the United States, in Europe and in the Tropics were included to confirm the results. One of the advantages of NNGEN-P is that it is non-parametric. Unlike other parametric function, which adapt to certain types of climate regimes, NNGEN-P is fully adaptive to the observed cumulative distribution functions, which, on some occasions, may present complex shapes. On-going works will soon produce an extended version of NNGEN to temperature and radiation. © Springer-Verlag 2006. |
author |
Martínez, Fernando Luis Penalba, Olga C. Segura, Enrique Carlos |
author_facet |
Martínez, Fernando Luis Penalba, Olga C. Segura, Enrique Carlos |
author_sort |
Martínez, Fernando Luis |
title |
Neural network based daily precipitation generator (NNGEN-P) |
title_short |
Neural network based daily precipitation generator (NNGEN-P) |
title_full |
Neural network based daily precipitation generator (NNGEN-P) |
title_fullStr |
Neural network based daily precipitation generator (NNGEN-P) |
title_full_unstemmed |
Neural network based daily precipitation generator (NNGEN-P) |
title_sort |
neural network based daily precipitation generator (nngen-p) |
publishDate |
2007 |
url |
https://bibliotecadigital.exactas.uba.ar/collection/paper/document/paper_09307575_v28_n2-3_p307_Boulanger http://hdl.handle.net/20.500.12110/paper_09307575_v28_n2-3_p307_Boulanger |
work_keys_str_mv |
AT martinezfernandoluis neuralnetworkbaseddailyprecipitationgeneratornngenp AT penalbaolgac neuralnetworkbaseddailyprecipitationgeneratornngenp AT seguraenriquecarlos neuralnetworkbaseddailyprecipitationgeneratornngenp |
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1768544739172286464 |