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Registro Completo |
Biblioteca(s): |
Embrapa Cerrados. |
Data corrente: |
19/08/2021 |
Data da última atualização: |
19/08/2021 |
Tipo da produção científica: |
Artigo em Periódico Indexado |
Autoria: |
ALTHOFF, D.; RODRIGUES, L. N.; BAZAME, H. C. |
Afiliação: |
DANIEL ALTHOFF; LINEU NEIVA RODRIGUES, CPAC; HELIZANI COUTO BAZAME. |
Título: |
Uncertainty quantification for hydrological models based on neural networks: the dropout ensemble. |
Ano de publicação: |
2021 |
Fonte/Imprenta: |
Stochastic Environmental Research and Risk Assessment, v. 35, p. 1051?1067, 2021. |
Páginas: |
p. 1051-1067 |
DOI: |
https://doi.org/10.1007/s00477-021-01980-8 |
Idioma: |
Inglês |
Conteúdo: |
Abstract The use of neural networks in hydrology has been frequently undermined by limitations regarding the quantification of uncertainty in predictions. Many authors have proposed different methodologies to overcome these limitations, such as running Monte Carlo simulations, Bayesian approximations, and bootstrapping training samples, which come with computational limitations of their own, and two-step approaches, among others. One less-frequently explored alternative is to repurpose the dropout scheme during inference. Dropout is commonly used during training to avoid overfitting. However, it may also be activated during the testing period to effortlessly provide an ensemble of multiple ??sister?? predictions. This study explores the predictive uncertainty in hydrological models based on neural networks by comparing a multiparameter ensemble to a dropout ensemble. The dropout ensemble shows more reliable coverage of prediction intervals, while the multiparameter ensemble results in sharper prediction intervals. Moreover, for neural network structures with optimal lookback series, both ensemble strategies result in similar average interval scores. The dropout ensemble, however, benefits from requiring only a single calibration run, i.e., a single set of parameters. In addition, it delivers important insight for engineering design and decision-making with no increase in computational cost. Therefore, the dropout ensemble can be easily included in uncertainty analysis routines and even be combined with multiparameter or multimodel alternatives. MenosAbstract The use of neural networks in hydrology has been frequently undermined by limitations regarding the quantification of uncertainty in predictions. Many authors have proposed different methodologies to overcome these limitations, such as running Monte Carlo simulations, Bayesian approximations, and bootstrapping training samples, which come with computational limitations of their own, and two-step approaches, among others. One less-frequently explored alternative is to repurpose the dropout scheme during inference. Dropout is commonly used during training to avoid overfitting. However, it may also be activated during the testing period to effortlessly provide an ensemble of multiple ??sister?? predictions. This study explores the predictive uncertainty in hydrological models based on neural networks by comparing a multiparameter ensemble to a dropout ensemble. The dropout ensemble shows more reliable coverage of prediction intervals, while the multiparameter ensemble results in sharper prediction intervals. Moreover, for neural network structures with optimal lookback series, both ensemble strategies result in similar average interval scores. The dropout ensemble, however, benefits from requiring only a single calibration run, i.e., a single set of parameters. In addition, it delivers important insight for engineering design and decision-making with no increase in computational cost. Therefore, the dropout ensemble can be easily included in uncertainty analysis routin... Mostrar Tudo |
Palavras-Chave: |
Modelo hidrológico; Rede neural. |
Thesagro: |
Hidrologia. |
Categoria do assunto: |
-- |
Marc: |
LEADER 02241naa a2200205 a 4500 001 2133739 005 2021-08-19 008 2021 bl uuuu u00u1 u #d 024 7 $ahttps://doi.org/10.1007/s00477-021-01980-8$2DOI 100 1 $aALTHOFF, D. 245 $aUncertainty quantification for hydrological models based on neural networks$bthe dropout ensemble.$h[electronic resource] 260 $c2021 300 $ap. 1051-1067 520 $aAbstract The use of neural networks in hydrology has been frequently undermined by limitations regarding the quantification of uncertainty in predictions. Many authors have proposed different methodologies to overcome these limitations, such as running Monte Carlo simulations, Bayesian approximations, and bootstrapping training samples, which come with computational limitations of their own, and two-step approaches, among others. One less-frequently explored alternative is to repurpose the dropout scheme during inference. Dropout is commonly used during training to avoid overfitting. However, it may also be activated during the testing period to effortlessly provide an ensemble of multiple ??sister?? predictions. This study explores the predictive uncertainty in hydrological models based on neural networks by comparing a multiparameter ensemble to a dropout ensemble. The dropout ensemble shows more reliable coverage of prediction intervals, while the multiparameter ensemble results in sharper prediction intervals. Moreover, for neural network structures with optimal lookback series, both ensemble strategies result in similar average interval scores. The dropout ensemble, however, benefits from requiring only a single calibration run, i.e., a single set of parameters. In addition, it delivers important insight for engineering design and decision-making with no increase in computational cost. Therefore, the dropout ensemble can be easily included in uncertainty analysis routines and even be combined with multiparameter or multimodel alternatives. 650 $aHidrologia 653 $aModelo hidrológico 653 $aRede neural 700 1 $aRODRIGUES, L. N. 700 1 $aBAZAME, H. C. 773 $tStochastic Environmental Research and Risk Assessment$gv. 35, p. 1051?1067, 2021.
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Embrapa Cerrados (CPAC) |
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Registro Completo
Biblioteca(s): |
Embrapa Pecuária Sul. |
Data corrente: |
19/11/2014 |
Data da última atualização: |
19/11/2014 |
Tipo da produção científica: |
Artigo em Anais de Congresso |
Autoria: |
CORRÊA, N. S.; LARRÉ, C. F.; MORAES, C. L.; TONEL, F. R.; SILVA, G. M. da; MORAES, D. M. de. |
Afiliação: |
Natália Silveira Corrêa, DOUTORANDA UFPEL; Cristina Ferreira Larré, UFPEL; Caroline Leivas Moraes, POSDOUTORANDA UFPEL; Fernanda Reolon Tonel, DOUTORANDA UFPEL; GUSTAVO MARTINS DA SILVA, CPPSUL; Dario Munt de Moraes, UFPEL. |
Título: |
Efeito do Imazetapir sobre a germinação e crescimento inicial de trevo vermelho. |
Ano de publicação: |
2014 |
Fonte/Imprenta: |
In: JORNADA DE PÓS-GRADUAÇÃO E PESQUISA, 12.; MOSTRA DE INICIAÇÃO CIENTÍFICA, 12.; MOSTRA DE INICIAÇÃO CIENTÍFICA JÚNIOR, 10.; MOSTRA INTERNACIONAL DE FOTOGRAFIA, 2., 2014, Bagé. Anais... Bagé: Ediurcamp, 2014. |
Descrição Física: |
1 CD-ROM. |
Idioma: |
Português |
Notas: |
CONGREGA. |
Palavras-Chave: |
Trifolium pratense L. |
Categoria do assunto: |
-- |
URL: |
https://ainfo.cnptia.embrapa.br/digital/bitstream/item/111954/1/239.pdf
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Marc: |
LEADER 00756nam a2200193 a 4500 001 2000559 005 2014-11-19 008 2014 bl uuuu u00u1 u #d 100 1 $aCORRÊA, N. S. 245 $aEfeito do Imazetapir sobre a germinação e crescimento inicial de trevo vermelho.$h[electronic resource] 260 $aIn: JORNADA DE PÓS-GRADUAÇÃO E PESQUISA, 12.; MOSTRA DE INICIAÇÃO CIENTÍFICA, 12.; MOSTRA DE INICIAÇÃO CIENTÍFICA JÚNIOR, 10.; MOSTRA INTERNACIONAL DE FOTOGRAFIA, 2., 2014, Bagé. Anais... Bagé: Ediurcamp$c2014 300 $c1 CD-ROM. 500 $aCONGREGA. 653 $aTrifolium pratense L 700 1 $aLARRÉ, C. F. 700 1 $aMORAES, C. L. 700 1 $aTONEL, F. R. 700 1 $aSILVA, G. M. da 700 1 $aMORAES, D. M. de
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