Abstract
This paper presents a new fault diagnosis and location method for electrical power supply and distribution of buildings using Bayesian and wavelet neural network (WNN). Aiming at the complex trunk-type power supply and distribution structure of buildings, wavelet transform (WT) is adopted to process the current, voltage and phase data of each branch to extract the features that can distinguish faults effectively. And the fault diagnosis model based on Bayesian network is established by the above features. In order to improve the accuracy of WNN in fault location in buildings, a WNN method optimised by dragonfly algorithm (DA) is proposed to obtain better thresholds and weights, which are utilised to enhance the prediction ability. A simulation study was made with MATLAB/Simulink to verify the performance of the proposed method on a power supply and distribution model.
Published Version
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have