Publication: Early Warning for Pre and Post Flood Risk Management by Using IoT and Machine Learning
Type:
Article
Date
2021-12-09
Journal Title
Journal ISSN
Volume Title
Publisher
2021 3rd International Conference on Advancements in Computing (ICAC), SLIIT
Abstract
Flooding has been a very treacherous situation in
Sri Lanka. Therefore, developing a structure to forecast risky
weather conditions will be a great aid for citizens who are
affected from flood d isasters. I n t his s tudy, t he a uthors explore
the use of Machine Learning (ML), Deep Learning (DL), Internet
of Things (IoT), and crowdsourcing to provide insights into
the development of the pre and post flood r isk management
system as a solution to manage and mitigate potential flood
risks. Machine learning and deep learning algorithms are used
to predict upcoming flooding s ituations and r ainfall occurrences
by using predicted weather information and historical data set
of flood a nd r ainfall. Crowdsourcing i s u sed a s a n ovel method
for identifying flood t hreatening a reas. Weather i nformation is
gathered from citizens and it will help to build a procedure
to notify the public and authorities of imminent flood risks.
The IoT device tracks the real-time meteorological conditions
and monitors continuously. The overall outcome showcases that
machine learning models, deep learning algorithms, IoT and
crowdsourcing information are equally contributing to predict
and forecast risky weather conditions. The integration of the
above components with machine learning techniques, together
with the availability of historical data set, can forecast flood
occurrences and disastrous weather conditions with above 0.70
accuracy in specific areas of Sri Lanka.
Description
Keywords
Crowdsourcing, Deep Learning (DL), Internet of Things (IoT), Machine learning (ML), Rainfall prediction, Flood prediction
