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Title: Drone‐based digital twins for water quality monitoring: A systematic review
The rapid advancement of drone technology and digital twin systems has significantly transformed environmental monitoring, particularly in the field of water quality assessment. This paper systematically reviews the current state of research on the application of drones, digital twins, and their integration for water quality monitoring and management. It highlights key themes, insights, research trends, commonly used methodologies, and future directions from existing studies, aiming to provide a foundational reference for further research to harness the promising potential of these technologies for effective, scalable solutions in water resource management, addressing both immediate and long‐term environmental challenges. The systematic review followed PRISMA guidelines, rigorously analysing hundreds of relevant papers. Key findings emphasise the effectiveness of drones in capturing real‐time, high‐resolution spatial and temporal data, as well as the value of digital twins for predictive and simulation‐based analysis. Most importantly, the review demonstrates the potential of integrating these technologies to enhance sustainable water management practices. However, it also identifies a significant research gap in fully integrating drones with digital twins for comprehensive water quality management. In response, the review outlines future research directions, including improvements in data integration techniques, predictive models, and interdisciplinary collaboration.  more » « less
Award ID(s):
2302833 2152282
PAR ID:
10562177
Author(s) / Creator(s):
; ;
Publisher / Repository:
John Wiley & Sons, Inc
Date Published:
Journal Name:
Digital Twins and Applications
Volume:
1
Issue:
2
ISSN:
2995-5629
Page Range / eLocation ID:
131 to 160
Format(s):
Medium: X
Sponsoring Org:
National Science Foundation
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