|
|
Registros recuperados : 4 | |
1. | | SOUZA, S. F. de; NASCIMENTO, T. S.; MEDEIROS, S. dos S.; ANDRADE, B. M. S.; MOTA, P. S. S.; SANTOS, C. M. C.; CURADO, F. F. Estratégias de comunicação para o ambiente rural: abordagem em sistema agropecuário sustentável para transferência de tecnologias. Scientia Plena, v. 11, n. 4, 2015. Biblioteca(s): Embrapa Tabuleiros Costeiros. |
| |
3. | | SOUZA, S. F. de; ANDRADE, B. M. S.; SANTOS, C. M. C.; RANGEL, J. H. de A.; Juciléia A; MORAIS, J. A. S.; SANTOS, G. R. A.; ALMEIDA, M. R. M. de. Chemical composition of gliricidia in different cropping systems. In: WORLD CONGRESS ON INTEGRATED CROP-LIVESTOCK-FOREST SYSTEMS, 3.; INTERNATIONAL SYMPOSIUM ON INTEGRATED CROP-LIVESTOCK SYSTEMS, 3., 2015, Brasília, DF. Towards sustainable intensification: [proceedings..]. Brasília, DF: Embrapa, 2015. Biblioteca(s): Embrapa Tabuleiros Costeiros. |
| |
4. | | SOUZA, S. F. de; ANDRADE, B. M. S.; SANTOS, C. M. C.; RANGEL, J. H. de A.; MORAIS, J. A. S.; SANTOS, G. R. A.; ALMEIDA, M. R. M. de. Chemical composition of gliricidia in different regions of the Sergipe state. In: WORLD CONGRESS ON INTEGRATED CROP-LIVESTOCK-FOREST SYSTEMS, 3.; INTERNATIONAL SYMPOSIUM ON INTEGRATED CROP-LIVESTOCK SYSTEMS, 3., 2015, Brasília, DF. Towards sustainable intensification: [proceedings..]. Brasília, DF: Embrapa, 2015. Biblioteca(s): Embrapa Tabuleiros Costeiros. |
| |
Registros recuperados : 4 | |
|
|
Registro Completo
Biblioteca(s): |
Embrapa Meio Ambiente. |
Data corrente: |
02/12/2009 |
Data da última atualização: |
20/03/2023 |
Tipo da produção científica: |
Artigo em Periódico Indexado |
Circulação/Nível: |
A - 1 |
Autoria: |
MAIA, A. de H. N.; MEINKE, H. |
Afiliação: |
ALINE DE HOLANDA NUNES MAIA, CNPMA; HOLGER MEINKE, Wageningen University - Centre for Crop Systems Analysis. |
Título: |
Probabilistic methods for seasonal forecasting in a changing climate: Cox-type regression models. |
Ano de publicação: |
2009 |
Fonte/Imprenta: |
International Journal of Climatology, v. 29, 2009. |
DOI: |
DOI: 10.1002/joc.2042 |
Idioma: |
Inglês |
Conteúdo: |
For climate risk management, cumulative distribution functions (CDFs) are an important source of information. They are ideally suited to compare probabilistic forecasts of primary (e.g. rainfall) or secondary data (e.g. crop yields). Summarised as CDFs, such forecasts allow an easy quantitative assessment of possible, alternative actions. Although the degree of uncertainty associated with CDF estimation could influence decisions, such information is rarely provided. Hence, we propose Cox-type regression models (CRMs) as a statistical framework for making inferences on CDFs in climate science. CRMs were designed for modelling probability distributions rather than just mean or median values. This makes the approach appealing for risk assessments where probabilities of extremes are often more informative than central tendency measures. CRMs are semi-parametric approaches originally designed for modelling risks arising from time-to-event data. Here we extend this original concept beyond time-dependent measures to other variables of interest. We also provide tools for estimating CDFs and surrounding uncertainty envelopes from empirical data. These statistical techniques intrinsically account for non-stationarities in time series that might be the result of climate change. This feature makes CRMs attractive candidates to investigate the feasibility of developing rigorous global circulation model (GCM)-CRM interfaces for provision of user-relevant forecasts. To demonstrate the applicability of CRMs, we present two examples for El Ni ? no/Southern Oscillation (ENSO)-based forecasts: the onset date of the wet season (Cairns, Australia) and total wet season rainfall (Quixeramobim, Brazil). This study emphasises the methodological aspects of CRMs rather than discussing merits or limitations of the ENSO-based predictors. MenosFor climate risk management, cumulative distribution functions (CDFs) are an important source of information. They are ideally suited to compare probabilistic forecasts of primary (e.g. rainfall) or secondary data (e.g. crop yields). Summarised as CDFs, such forecasts allow an easy quantitative assessment of possible, alternative actions. Although the degree of uncertainty associated with CDF estimation could influence decisions, such information is rarely provided. Hence, we propose Cox-type regression models (CRMs) as a statistical framework for making inferences on CDFs in climate science. CRMs were designed for modelling probability distributions rather than just mean or median values. This makes the approach appealing for risk assessments where probabilities of extremes are often more informative than central tendency measures. CRMs are semi-parametric approaches originally designed for modelling risks arising from time-to-event data. Here we extend this original concept beyond time-dependent measures to other variables of interest. We also provide tools for estimating CDFs and surrounding uncertainty envelopes from empirical data. These statistical techniques intrinsically account for non-stationarities in time series that might be the result of climate change. This feature makes CRMs attractive candidates to investigate the feasibility of developing rigorous global circulation model (GCM)-CRM interfaces for provision of user-relevant forecasts. To demonstrate the appl... Mostrar Tudo |
Thesagro: |
Climatologia. |
Categoria do assunto: |
X Pesquisa, Tecnologia e Engenharia |
URL: |
https://ainfo.cnptia.embrapa.br/digital/bitstream/item/143767/1/2009AP-02.pdf
|
Marc: |
LEADER 02337naa a2200157 a 4500 001 1577033 005 2023-03-20 008 2009 bl uuuu u00u1 u #d 024 7 $aDOI: 10.1002/joc.2042$2DOI 100 1 $aMAIA, A. de H. N. 245 $aProbabilistic methods for seasonal forecasting in a changing climate$bCox-type regression models.$h[electronic resource] 260 $c2009 520 $aFor climate risk management, cumulative distribution functions (CDFs) are an important source of information. They are ideally suited to compare probabilistic forecasts of primary (e.g. rainfall) or secondary data (e.g. crop yields). Summarised as CDFs, such forecasts allow an easy quantitative assessment of possible, alternative actions. Although the degree of uncertainty associated with CDF estimation could influence decisions, such information is rarely provided. Hence, we propose Cox-type regression models (CRMs) as a statistical framework for making inferences on CDFs in climate science. CRMs were designed for modelling probability distributions rather than just mean or median values. This makes the approach appealing for risk assessments where probabilities of extremes are often more informative than central tendency measures. CRMs are semi-parametric approaches originally designed for modelling risks arising from time-to-event data. Here we extend this original concept beyond time-dependent measures to other variables of interest. We also provide tools for estimating CDFs and surrounding uncertainty envelopes from empirical data. These statistical techniques intrinsically account for non-stationarities in time series that might be the result of climate change. This feature makes CRMs attractive candidates to investigate the feasibility of developing rigorous global circulation model (GCM)-CRM interfaces for provision of user-relevant forecasts. To demonstrate the applicability of CRMs, we present two examples for El Ni ? no/Southern Oscillation (ENSO)-based forecasts: the onset date of the wet season (Cairns, Australia) and total wet season rainfall (Quixeramobim, Brazil). This study emphasises the methodological aspects of CRMs rather than discussing merits or limitations of the ENSO-based predictors. 650 $aClimatologia 700 1 $aMEINKE, H. 773 $tInternational Journal of Climatology$gv. 29, 2009.
Download
Esconder MarcMostrar Marc Completo |
Registro original: |
Embrapa Meio Ambiente (CNPMA) |
|
Biblioteca |
ID |
Origem |
Tipo/Formato |
Classificação |
Cutter |
Registro |
Volume |
Status |
Fechar
|
Nenhum registro encontrado para a expressão de busca informada. |
|
|