학술논문

Health Index Prediction of Overhead Transmission Lines: A Machine Learning Approach
Document Type
Periodical
Source
IEEE Transactions on Power Delivery IEEE Trans. Power Delivery Power Delivery, IEEE Transactions on. 37(1):50-58 Feb, 2022
Subject
Power, Energy and Industry Applications
Poles and towers
Predictive models
Visualization
Data models
Aging
Training
Inspection
asset management
classification
health index
modelling
prediction model
supervised machine learning
Language
ISSN
0885-8977
1937-4208
Abstract
This paper presents an asset health index (HI) prediction methodology for high voltage transmission overhead lines (OHLs) using supervised machine learning and structured, unambiguous visual inspections. We propose a framework for asset HI predictions to determine the technical condition of individual OHL towers to improve grid reliability in a cost-effective manner. The paper focuses on asset HI prediction and the selection of the most parsimonious model. Based on the technical specifications and HI data, our methodology allows for the prediction of a HI for OHLs without HI data, and models asset aging behaviour. Technical specifications and the HI as defined in this paper are taken from the Estonian TSO periodical visual inspections implemented in 2018. The case study successfully demonstrates that the proposed methodology can predict tower HI values for a single OHL with nearly 80 percent accuracy without the need for additional measurements.