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Developing Computer Vision-Based Digital Twin for Vegetation Management near Power Distribution Networks

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Developing Computer Vision-Based Digital Twin for Vegetation Management near Power Distribution Networks

Bahreini, Fardin ORCID: https://orcid.org/0000-0002-6832-2597, Nik-Bakht, Mazdak and Hammad, Amin ORCID: https://orcid.org/0000-0002-2507-4976 (2025) Developing Computer Vision-Based Digital Twin for Vegetation Management near Power Distribution Networks. Remote Sensing, 17 (21). 3565/1-34. ISSN 2072-4292

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Official URL: https://doi.org/10.3390/rs17213565

Abstract

The maintenance of power distribution lines is critically challenged by vegetation encroachment, posing significant risks to the reliability and safety of power utilities. Traditional manual inspection methods are resource-intensive and lack the precision required for effective and proactive maintenance. This paper presents an automated, accurate, and efficient approach to vegetation management near power lines by leveraging advancements in LiDAR as a remote sensing technology and deep learning algorithms. The RandLA-Net model is employed for semantic segmentation of large-scale point clouds to accurately identify vegetation, poles, and power lines. A comprehensive sensitivity analysis is conducted to optimize the model’s hyperparameters, enhancing segmentation accuracy. Post-processing techniques, including clustering and rule-based thresholding, are applied to refine the semantic segmentation results. Proximity detection is applied using spatial queries based on a KDTree structure to assess potential risks of vegetation near power lines. Furthermore, a digital twin of the power distribution network and surrounding trees is developed by integrating 3D object registration and surface generation, enriching it with semantic attributes and incorporating it into City Information Modeling (CIM) systems. This framework demonstrates the potential of remote sensing data integration for efficient environmental monitoring in urban infrastructure. The results of the case study on the Toronto-3D dataset demonstrate the computational efficiency and accuracy of the proposed method, presenting a promising solution for power utilities in proactive vegetation management and infrastructure planning. The optimized full 9-class model achieved an overall accuracy of 96.90% and IoU scores of 97.05% for vegetation, 88.09% for power lines, and 82.33% for poles, supporting comprehensive digital twin creation. An auxiliary 4-class model further improved targeted performance, with IoUs of 99.55% for vegetation, 88.79% for poles, and 87.18% for power lines.

Divisions:Concordia University > Gina Cody School of Engineering and Computer Science > Concordia Institute for Information Systems Engineering
Item Type:Article
Refereed:Yes
Authors:Bahreini, Fardin and Nik-Bakht, Mazdak and Hammad, Amin
Journal or Publication:Remote Sensing
Date:28 October 2025
Digital Object Identifier (DOI):10.3390/rs17213565
Keywords:digital twin; computer vision; 3D point cloud; power line; proximity detection; semantic segmentation; city information modeling
ID Code:996406
Deposited By: Fardin Bahreini
Deposited On:31 Oct 2025 14:56
Last Modified:31 Oct 2025 14:56
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