Analyzing Weather Patterns for Predicting Floods with Regression Models
Weather and flood assessment are known to be of great importance for the early notification of flood disasters worldwide. Therefore, predicting flood risks is crucial to ensuring the safety of the general public from this disaster. Unfortunately, the Philippines continues to be one of the countries...
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oai:animorepository.dlsu.edu.ph:conf_shsrescon-11602023-02-13T01:39:50Z Analyzing Weather Patterns for Predicting Floods with Regression Models Ruaro, Erickson Neil G., II So, Neil Harry S. Cu, Gregory G. Weather and flood assessment are known to be of great importance for the early notification of flood disasters worldwide. Therefore, predicting flood risks is crucial to ensuring the safety of the general public from this disaster. Unfortunately, the Philippines continues to be one of the countries severely affected by typhoons every year. This is due to both its geographical location, and its lack of preparation on dealing with flood hazards. Towards prediction improvement, this study identifies the weather patterns involved in three different cities; Makati, Cebu, and Iloilo. One of the main causes of floods is brought upon by heavy rainfall (precipitation). This study also examines the relationship of the different feature variables collected to the hourly precipitation recorded through the Pearson correlation coefficient. Furthermore, the study also uses two machine learning regression models to predict the hourly precipitation in the three different cities mentioned above. The regression models used were namely Random Forest, and Gradient Tree Boosting. Modelling experiments were conducted on weather data recorded from December 2021, until March 2022, with 80% of it used for training, and the remaining 20% used for testing. 2022-05-12T22:30:00Z text application/pdf https://animorepository.dlsu.edu.ph/conf_shsrescon/2022/paper_csr/8 https://animorepository.dlsu.edu.ph/cgi/viewcontent.cgi?article=1160&context=conf_shsrescon DLSU Senior High School Research Congress Animo Repository flood assessment weather data machine learning hazards time-series forecasting |
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flood assessment weather data machine learning hazards time-series forecasting Ruaro, Erickson Neil G., II So, Neil Harry S. Cu, Gregory G. Analyzing Weather Patterns for Predicting Floods with Regression Models |
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Weather and flood assessment are known to be of great importance for the early notification of flood disasters worldwide. Therefore, predicting flood risks is crucial to ensuring the safety of the general public from this disaster. Unfortunately, the Philippines continues to be one of the countries severely affected by typhoons every year. This is due to both its geographical location, and its lack of preparation on dealing with flood hazards. Towards prediction improvement, this study identifies the weather patterns involved in three different cities; Makati, Cebu, and Iloilo. One of the main causes of floods is brought upon by heavy rainfall (precipitation). This study also examines the relationship of the different feature variables collected to the hourly precipitation recorded through the Pearson correlation coefficient. Furthermore, the study also uses two machine learning regression models to predict the hourly precipitation in the three different cities mentioned above. The regression models used were namely Random Forest, and Gradient Tree Boosting. Modelling experiments were conducted on weather data recorded from December 2021, until March 2022, with 80% of it used for training, and the remaining 20% used for testing. |
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Ruaro, Erickson Neil G., II So, Neil Harry S. Cu, Gregory G. |
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Ruaro, Erickson Neil G., II So, Neil Harry S. Cu, Gregory G. |
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Ruaro, Erickson Neil G., II |
title |
Analyzing Weather Patterns for Predicting Floods with Regression Models |
title_short |
Analyzing Weather Patterns for Predicting Floods with Regression Models |
title_full |
Analyzing Weather Patterns for Predicting Floods with Regression Models |
title_fullStr |
Analyzing Weather Patterns for Predicting Floods with Regression Models |
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Analyzing Weather Patterns for Predicting Floods with Regression Models |
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analyzing weather patterns for predicting floods with regression models |
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Animo Repository |
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2022 |
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https://animorepository.dlsu.edu.ph/conf_shsrescon/2022/paper_csr/8 https://animorepository.dlsu.edu.ph/cgi/viewcontent.cgi?article=1160&context=conf_shsrescon |
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