Viedo robotizēto risinājumu lietojums datu vākšanā un apstrādē inženierkomunikāciju infrastruktūras tehnisko datu uzturēšanas optimizācijai

Summary of Doctoral Thesis

Diāna Gauče, Riga Technical University, Latvia
ORCID iDhttps://orcid.org/0009-0004-9111-2186

The thesis focuses on data-driven solutions for infrastructure inspection using RGB and LiDAR data collected by unmanned aerial vehicles. A large-scale data processing model has been developed to assess the technical condition of infrastructure with the help of machine learning. The study analyses the digital transformation of processes in the energy sector, the inspection of Latvia’s distribution system infrastructure, and alternative defect detection methods. An inspection solution based on optical and spatial data has been experimentally tested. The research was performed in collaboration with “Sadales tīkls” JSC, and the results have been published in five scientific articles.

Additional information

Publication type

DOI

https://doi.org/10.7250/9789934371899

Defence date

27.06.2025.

Format

ISBN (pdf)

Pages

56

Publication date

Published online

Publication language

Publisher

RTU Press

Country of Publication

Latvia

Funding source

,