Abstract

Abstract Floods are one of the most common natural disasters in the world that affect all aspects of life, including human beings, agriculture, industry, and education. Research for developing models of flood predictions has been ongoing for the past few years. These models are proposed and built-in proportion for risk reduction, policy proposition, loss of human lives, and property damages associated with floods. However, flood status prediction is a complex process and demands extensive analyses on the factors leading to the occurrence of flooding. Consequently, this research proposes an Internet of Things-based flood status prediction (IoT-FSP) model that is used to facilitate the prediction of the rivers flood situation. The IoT-FSP model applies the Internet of Things architecture to facilitate the flood data acquisition process and three machine learning (ML) algorithms, which are Decision Tree (DT), Decision Jungle, and Random Forest, for the flood prediction process. The IoT-FSP model is implemented in MATLAB and Simulink as development platforms. The results show that the IoT-FSP model successfully performs the data acquisition and prediction tasks and achieves an average accuracy of 85.72% for the three-fold cross-validation results. The research finding shows that the DT scores the highest accuracy of 93.22%, precision of 92.85, and recall of 92.81 among the three ML algorithms. The ability of the ML algorithm to handle multivariate outputs of 13 different flood textual statuses provides the means of manifesting explainable artificial intelligence and enables the IoT-FSP model to act as an early warning and flood monitoring system.

Highlights

  • Natural disasters have caused a lot of damages to mankind, causing huge material and moral losses that affected the lives of 200 million people and affected the economy, with a loss of about $95 billion

  • The risk of natural disasters increases, especially with the rapid growth in urban areas, where there is an increase in the density of human structures, which causes a lack of efficient water resources management [4], sanitation networks, and poor management of solid waste

  • The results show that the Alternating Decision Trees (ADT) model has the highest prediction capability for flash flood susceptibility assessment, followed by the NBT, the Logistic Model Trees (LMT), and the Reduced Error Pruning Trees (REPT), respectively

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Summary

Introduction

Natural disasters have caused a lot of damages to mankind, causing huge material and moral losses that affected the lives of 200 million people and affected the economy, with a loss of about $95 billion. The risk of natural disasters increases, especially with the rapid growth in urban areas, where there is an increase in the density of human structures, which causes a lack of efficient water resources management [4], sanitation networks, and poor management of solid waste. This may result in health problems, floods, and landslides. [5], the percentage of human losses in the Asian continent as a result of natural disasters is about 90%, which is often caused by floods Due to these issues, floods and mitigating the damage they cause are essential and important strategies to consider [2,6]. Hydrological models are used to determine areas at risk of flooding; forecasting the severity of the floods and assessing the anthropogenic mitigation measures will be required in the future [8]

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