Litcius/Paper detail

Lightning Location and Peak Current Estimation From Lightning-Induced Voltages on Transmission Lines With a Machine Learning Approach

Martino Nicora, Mauro Tucci, Sami Barmada, Massimo Brignone, Renato Procopio

2024IEEE Transactions on Electromagnetic Compatibility15 citationsDOIOpen Access PDF

Abstract

In this article, a machine-learning-based model for the regression of cloud-to-ground lightning location and peak current from time-domain waveforms of lightning-induced voltage measurements on overhead transmission lines is presented. A principal component analysis (PCA) procedure is applied for extracting significant features and decreasing the dimension of the input vector. Then, a shallow neural network is trained with the results of the PCA. The obtained results show that the proposed approach can be the base for a tool able to regress lighting location with an accuracy comparable to or even better than traditional methods [i.e., lightning location system (LLS)] and provide a peak current estimate more accurate than LLS and more actual and widespread than direct tower measurements (which are limited to a reduced number of recorded events in some specific regions). Such a tool would also have significant advantages in terms of costs, since it would not require a dedicated instrumentation.

Topics & Concepts

Lightning (connector)Electric power transmissionLightning strikeVoltageElectrical engineeringCurrent (fluid)Transmission (telecommunications)Transmission lineEstimationComputer scienceLightning arresterEngineeringPhysicsPower (physics)Systems engineeringQuantum mechanicsLightning and Electromagnetic PhenomenaTraffic Prediction and Management TechniquesPower Systems Fault Detection
Lightning Location and Peak Current Estimation From Lightning-Induced Voltages on Transmission Lines With a Machine Learning Approach | Litcius