A simple model for predicting agronomy floods in rice fields in Bicol, Philippines
Climate change is expected to intensify the impacts of flood events on agricultural production, particularly in flood-prone regions like the Philippines, where rice farming is heavily affected by frequent typhoons. Flood forecasting and early warning systems can aid in mitigating these risks; howeve...
| Main Authors: | , , , , , |
|---|---|
| Format: | Manuscript-unpublished |
| Language: | Inglés |
| Published: |
2025
|
| Subjects: | |
| Online Access: | https://hdl.handle.net/10568/174436 |
| _version_ | 1855526368245186560 |
|---|---|
| author | Wei, Xiaojing Balanza Girly, Jane Raviz, Jeny Castillo, Rowena Baradas, Airene Laborte, Alice |
| author_browse | Balanza Girly, Jane Baradas, Airene Castillo, Rowena Laborte, Alice Raviz, Jeny Wei, Xiaojing |
| author_facet | Wei, Xiaojing Balanza Girly, Jane Raviz, Jeny Castillo, Rowena Baradas, Airene Laborte, Alice |
| author_sort | Wei, Xiaojing |
| collection | Repository of Agricultural Research Outputs (CGSpace) |
| description | Climate change is expected to intensify the impacts of flood events on agricultural production, particularly in flood-prone regions like the Philippines, where rice farming is heavily affected by frequent typhoons. Flood forecasting and early warning systems can aid in mitigating these risks; however, the insufficient coverage of hydrometric monitoring stations and limited computational resources can be barriers for developing countries. Remote sensing technology offers a promising solution to bridge these gaps, providing critical hydrometric data and enabling more accessible flood prediction models. Leveraging high-spatial resolution, remote sensing-based flood extent data specifically developed for rice fields, we explore the possibility of predicting agronomical flood extent in the Bicol region of the Philippines using a series of simple logistic regression models with different lookback windows. The model predictors only included rainfall at two spatial scales and flow accumulation. The best-performed model, with three-day lookback window, captured 65% of variation in flooding among events. However, the best model did not predict well the variation in flooding within basins, nor did it account for the heterogeneity in the response of flooding to rainfall among basins. We suggested several avenues for improving the model, including incorporating basin characteristics and additional predictors for better capture variation in flooding within and among basins. |
| format | Manuscript-unpublished |
| id | CGSpace174436 |
| institution | CGIAR Consortium |
| language | Inglés |
| publishDate | 2025 |
| publishDateRange | 2025 |
| publishDateSort | 2025 |
| record_format | dspace |
| spelling | CGSpace1744362025-11-11T18:49:57Z A simple model for predicting agronomy floods in rice fields in Bicol, Philippines Wei, Xiaojing Balanza Girly, Jane Raviz, Jeny Castillo, Rowena Baradas, Airene Laborte, Alice climate change modelling flooding oryza-rice (plant) Climate change is expected to intensify the impacts of flood events on agricultural production, particularly in flood-prone regions like the Philippines, where rice farming is heavily affected by frequent typhoons. Flood forecasting and early warning systems can aid in mitigating these risks; however, the insufficient coverage of hydrometric monitoring stations and limited computational resources can be barriers for developing countries. Remote sensing technology offers a promising solution to bridge these gaps, providing critical hydrometric data and enabling more accessible flood prediction models. Leveraging high-spatial resolution, remote sensing-based flood extent data specifically developed for rice fields, we explore the possibility of predicting agronomical flood extent in the Bicol region of the Philippines using a series of simple logistic regression models with different lookback windows. The model predictors only included rainfall at two spatial scales and flow accumulation. The best-performed model, with three-day lookback window, captured 65% of variation in flooding among events. However, the best model did not predict well the variation in flooding within basins, nor did it account for the heterogeneity in the response of flooding to rainfall among basins. We suggested several avenues for improving the model, including incorporating basin characteristics and additional predictors for better capture variation in flooding within and among basins. 2025-02-04 2025-05-06T11:54:10Z 2025-05-06T11:54:10Z Manuscript-unpublished https://hdl.handle.net/10568/174436 en Open Access application/pdf Wei, X.; Balanza Girly, J.; Raviz, J.; Castillo, R.; Baradas, A.; Laborte, A. (2025) A simple model for predicting agronomy floods in rice fields in Bicol, Philippines. EarthArXiv. Published on 04 February 2025. DOI: https://doi.org/10.31223/X5PT5Sa |
| spellingShingle | climate change modelling flooding oryza-rice (plant) Wei, Xiaojing Balanza Girly, Jane Raviz, Jeny Castillo, Rowena Baradas, Airene Laborte, Alice A simple model for predicting agronomy floods in rice fields in Bicol, Philippines |
| title | A simple model for predicting agronomy floods in rice fields in Bicol, Philippines |
| title_full | A simple model for predicting agronomy floods in rice fields in Bicol, Philippines |
| title_fullStr | A simple model for predicting agronomy floods in rice fields in Bicol, Philippines |
| title_full_unstemmed | A simple model for predicting agronomy floods in rice fields in Bicol, Philippines |
| title_short | A simple model for predicting agronomy floods in rice fields in Bicol, Philippines |
| title_sort | simple model for predicting agronomy floods in rice fields in bicol philippines |
| topic | climate change modelling flooding oryza-rice (plant) |
| url | https://hdl.handle.net/10568/174436 |
| work_keys_str_mv | AT weixiaojing asimplemodelforpredictingagronomyfloodsinricefieldsinbicolphilippines AT balanzagirlyjane asimplemodelforpredictingagronomyfloodsinricefieldsinbicolphilippines AT ravizjeny asimplemodelforpredictingagronomyfloodsinricefieldsinbicolphilippines AT castillorowena asimplemodelforpredictingagronomyfloodsinricefieldsinbicolphilippines AT baradasairene asimplemodelforpredictingagronomyfloodsinricefieldsinbicolphilippines AT labortealice asimplemodelforpredictingagronomyfloodsinricefieldsinbicolphilippines AT weixiaojing simplemodelforpredictingagronomyfloodsinricefieldsinbicolphilippines AT balanzagirlyjane simplemodelforpredictingagronomyfloodsinricefieldsinbicolphilippines AT ravizjeny simplemodelforpredictingagronomyfloodsinricefieldsinbicolphilippines AT castillorowena simplemodelforpredictingagronomyfloodsinricefieldsinbicolphilippines AT baradasairene simplemodelforpredictingagronomyfloodsinricefieldsinbicolphilippines AT labortealice simplemodelforpredictingagronomyfloodsinricefieldsinbicolphilippines |