Conductor Galloping Prediction on Imbalanced Datasets: SVM with Smart Sampling

11/09/2019
by   Kui Wang, et al.
0

Conductor galloping is the high-amplitude, low-frequency oscillation of overhead power lines due to wind. Such movements may lead to severe damages to transmission lines, and hence pose significant risks to the power system operation. In this paper, we target to design a prediction framework for conductor galloping. The difficulty comes from imbalanced dataset as galloping happens rarely. By examining the impacts of data balance and data volume on the prediction performance, we propose to employ proper sample adjustment methods to achieve better performance. Numerical study suggests that using only three features, together with over sampling, the SVM based prediction framework achieves an F_1-score of 98.9

READ FULL TEXT

page 1

page 4

research
10/11/2021

Quantifying the Risk of Wildfire Ignition by Power Lines under Extreme Weather Conditions

This paper presents a surrogate model to quantify the risk of wildfire i...
research
06/19/2022

Primal Estimated Subgradient Solver for SVM for Imbalanced Classification

We aim to demonstrate in experiments that our cost sensitive PEGASOS SVM...
research
10/25/2021

Kernel density estimation-based sampling for neural network classification

Imbalanced data occurs in a wide range of scenarios. The skewed distribu...
research
03/29/2022

A Wavelet, AR and SVM based hybrid method for short-term wind speed prediction

Wind speed modelling and prediction has been gaining importance because ...
research
01/31/2021

A Novel Use of Discrete Wavelet Transform Features in the Prediction of Epileptic Seizures from EEG Data

This paper demonstrates the predictive superiority of discrete wavelet t...
research
07/18/2022

Amplitude Scintillation Forecasting Using Bagged Trees

Electron density irregularities present within the ionosphere induce sig...

Please sign up or login with your details

Forgot password? Click here to reset