Title :
Estimation of Wooden Cross-Arm Integrity Using Artificial Neural Networks and Laser Vibrometry
Author :
Stack, J. ; Harley, Ronald G. ; Springer, P. ; Mahaffey, J. A.
Author_Institution :
Georgia Institute of Technology; NEETRAC; Air2 LLC
Abstract :
A significant problem faced by utility operators is the degradation and failure of wooden cross-arms on transmission line support structures. A nondestructive, noncontact, reliable method is proposed that can evaluate the structural integrity of these cross-arms quickly and cost-effectively. This method utilizes a helicopter-based laser vibrometer to measure vibrations induced in a cross-arm by the helicopter´s rotors and engine. An artificial neural network (ANN) then uses these vibration spectra to estimate cross-arm breaking strength. The first type of ANN employed is the feed-forward artificial neural network (FFANN). After proper training, the FFANN can reliably discern healthy cross-arms from those that are in need of replacement based on vibration spectra. Next, a self-organizing map is applied to this same problem, and its advantages are discussed. Finally, an FFANN-based data compression scheme is presented for use as a preprocessor for the vibration spectra.
Keywords :
Artificial neural networks; Circuits; Conductors; Data compression; Degradation; Interference; Power system harmonics; Rail transportation; Transmission line measurements; Vibration measurement; Data compression; laser measurements; neural networks; nondestructive testing; self-organizing feature maps; transmission lines;
Journal_Title :
Power Engineering Review, IEEE
DOI :
10.1109/MPER.2002.4311942