Papers
arxiv:2407.01001

Flood Prediction Using Classical and Quantum Machine Learning Models

Published on Jul 1, 2024

Abstract

A hybrid model combining classical machine learning with quantum machine learning techniques improves flood forecasting accuracy and efficiency for daily events along Germany's Wupper River in 2023.

AI-generated summary

This study investigates the potential of quantum machine learning to improve flood forecasting we focus on daily flood events along Germany's Wupper River in 2023 our approach combines classical machine learning techniques with QML techniques this hybrid model leverages quantum properties like superposition and entanglement to achieve better accuracy and efficiency classical and QML models are compared based on training time accuracy and scalability results show that QML models offer competitive training times and improved prediction accuracy this research signifies a step towards utilizing quantum technologies for climate change adaptation we emphasize collaboration and continuous innovation to implement this model in real-world flood management ultimately enhancing global resilience against floods

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