Implementing machine learning techniques to forecast floods In Bangladesh based on historical data
Abstract
Flooding is a complex phenomenon that, due to its nonlinear and dynamic character,
is difficult to anticipate. As a result, the prediction of floods has emerged as a
critical area of study in the field of hydrology. Numerous researchers have handled
this topic in various ways, spanning from physical models to image processing, however,
the time steps and precision are insufficient for all applications. This report
looks at machine learning approaches for forecasting weather conditions and criteria
and assessing the related margins of uncertainty. The evaluated outputs enable
more accurate and precise flood prediction for a variety of applications, including
transportation systems.
Through the exploration of innovative approaches to flood forecasting, machine
learning algorithms have emerged as a potential solution. Up-and-coming methods,
including ANNs, SVMs, and Random Forests, have shown impressive performance in
identifying intricate patterns and connections in both weather and hydrological data.
By leveraging past weather and water information, these algorithms can generate
advanced predictions of future conditions and anticipate possible flood occurrences.
Responding to emergency scenarios can be made more efficient and beneficial by
exploiting machine learning capabilities and advanced sensor data to more accurately
predict and prepare for the devastation caused by floods, and more easily deliver
aid to flood affected regions.