Smart disaster prediction application using flood risk analytics towards sustainable climate action

Disaster prediction devices for early warning system are used by many countries for disaster awareness. This study developed smart disaster prediction application using microcontrollers and sensors to analyze the river water level for flood using flood risk analytics. Specifically, it monitors the r...

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Main Authors: Orozco Michael M., Caballero Jonathan M.
Format: Article
Language:English
Published: EDP Sciences 2018-01-01
Series:MATEC Web of Conferences
Online Access:https://doi.org/10.1051/matecconf/201818910006
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spelling doaj-cf6e953ee0ff48ac8597952c603cf3062021-03-02T09:37:58ZengEDP SciencesMATEC Web of Conferences2261-236X2018-01-011891000610.1051/matecconf/201818910006matecconf_meamt2018_10006Smart disaster prediction application using flood risk analytics towards sustainable climate actionOrozco Michael M.Caballero Jonathan M.Disaster prediction devices for early warning system are used by many countries for disaster awareness. This study developed smart disaster prediction application using microcontrollers and sensors to analyze the river water level for flood using flood risk analytics. Specifically, it monitors the river water level, water pressure and rain fallusing microcontroller, applying statistical modeling algorithms for river flood prediction, and monitor flood in a web-based system with SMS notification and alarm to the community as an early warning. The researchers used the system development method to measure the prototype feasibility study. The researchers applied the statistical modeling algorithm as the data can be observed from time to time or on a daily basis for the predictive analytics. Based on the 7-days observation result, rainfall resulted in precipitation average of 10.96 mm, water pressure with an average of 40.92 pound per square inch (psi) and water level averaged 138.78 cm. The tropical depression during the 7 days’observation reflected the average data result from the sensors as the target of the study. The result of the prototype device used the City Disaster Risk and Reduction management office (CDRRMO) as history logs for a flood risk and it was proven accurate which makes a good use for disaster prediction.https://doi.org/10.1051/matecconf/201818910006
collection DOAJ
language English
format Article
sources DOAJ
author Orozco Michael M.
Caballero Jonathan M.
spellingShingle Orozco Michael M.
Caballero Jonathan M.
Smart disaster prediction application using flood risk analytics towards sustainable climate action
MATEC Web of Conferences
author_facet Orozco Michael M.
Caballero Jonathan M.
author_sort Orozco Michael M.
title Smart disaster prediction application using flood risk analytics towards sustainable climate action
title_short Smart disaster prediction application using flood risk analytics towards sustainable climate action
title_full Smart disaster prediction application using flood risk analytics towards sustainable climate action
title_fullStr Smart disaster prediction application using flood risk analytics towards sustainable climate action
title_full_unstemmed Smart disaster prediction application using flood risk analytics towards sustainable climate action
title_sort smart disaster prediction application using flood risk analytics towards sustainable climate action
publisher EDP Sciences
series MATEC Web of Conferences
issn 2261-236X
publishDate 2018-01-01
description Disaster prediction devices for early warning system are used by many countries for disaster awareness. This study developed smart disaster prediction application using microcontrollers and sensors to analyze the river water level for flood using flood risk analytics. Specifically, it monitors the river water level, water pressure and rain fallusing microcontroller, applying statistical modeling algorithms for river flood prediction, and monitor flood in a web-based system with SMS notification and alarm to the community as an early warning. The researchers used the system development method to measure the prototype feasibility study. The researchers applied the statistical modeling algorithm as the data can be observed from time to time or on a daily basis for the predictive analytics. Based on the 7-days observation result, rainfall resulted in precipitation average of 10.96 mm, water pressure with an average of 40.92 pound per square inch (psi) and water level averaged 138.78 cm. The tropical depression during the 7 days’observation reflected the average data result from the sensors as the target of the study. The result of the prototype device used the City Disaster Risk and Reduction management office (CDRRMO) as history logs for a flood risk and it was proven accurate which makes a good use for disaster prediction.
url https://doi.org/10.1051/matecconf/201818910006
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AT caballerojonathanm smartdisasterpredictionapplicationusingfloodriskanalyticstowardssustainableclimateaction
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