Litcius/Paper detail

Digital Twin-Assisted Fuzzy Logic-Inspired Intelligent Approach for Flood Prediction

Ankush Manocha, Sandeep K. Sood, Munish Bhatia

2023IEEE Sensors Journal23 citationsDOI

Abstract

Natural hazards causing catastrophic damage and infrastructure destruction have increased in recent decades, with floods being a serious problem that leads to crop damage, population loss, infrastructure degradation, and public service collapse. Digital Twin (DT) technology is a promising solution for alerting communities of oncoming floods and providing sufficient time for evacuation and property protection. This research introduces a digital twin-inspired intelligent framework that analyzes hydrological and meteorological parameters causing floods, validated using data from the Indian Meteorological Department (IMD). Artificial intelligence (AI) algorithms improve situational analysis and decision-making for flood forecasting, while advanced blockchain security features keep recorded and analyzed data secure. A case study demonstrates the proposed approach’s efficacy in smart catastrophe management with the best training and testing accuracy of 97.23% and 95.58%, respectively.

Topics & Concepts

Flood mythComputer scienceFuzzy logicSituation awarenessPopulationNatural disasterComputer securityArtificial intelligenceEngineeringGeographyMeteorologyDemographyAerospace engineeringArchaeologySociologyAdvanced Technologies in Various Fields
Digital Twin-Assisted Fuzzy Logic-Inspired Intelligent Approach for Flood Prediction | Litcius