Deep learning based framework for flood prediction
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Abstract
Floods are among the most frequent and devastating natural disasters,
newlineresulting in significant loss of life, destruction of property, and disruption of
newlinecommunities. The increasing unpredictability of weather patterns, exacerbated by
newlineclimate change, has made accurate flood prediction a critical component of
newlinedisaster management and water resource planning. Flood prediction refers to
newlineconsidering various meteorological, hydrological, and atmospheric factors to
newlinepredict the likelihood of a flood event and its potential severity. Flood prediction
newlinehas come a long way, from relying on basic observations and local knowledge to
newlineusing intricate computer models incorporating various data sources for precise
newlinepredictions.
newlineIn recent years, there has been a rise in the usage of Artificial
newlineIntelligence (AI) and its subfields, such as Machine Learning (ML) and Deep
newlineLearning (DL) approaches, to address the manifoldness of modeling issues related
newlineto the environment. Deep learning, a branch of machine learning, leverages its
newlineability to extract valuable patterns and insights from extensive datasets. Deep
newlinelearning captures hidden associations between meteorological forcing and
newlinehydrological responses, enabling more accurate predictions. Deep Learning
newlinemodels have proven valuable tools in flood analysis and prediction in hydro
newlinemeteorological studies, especially flood prediction. Deep learning models offer a
newlinewide range of applications, covering diverse prediction units such as daily or
newlineseasonal predictions and varying lead times from short-term to long-term
newlinepredictions with their efficacy in accurately predicting floods. Therefore, data
newlinedriven approaches based on artificial intelligence are investigated to predict
newlinefloods.
newline