Methodology for the Detection and Classification of Power Quality Disturbances Using CWT and CNN

Author:

Perez-Anaya Eduardo1,Jaen-Cuellar Arturo Yosimar2ORCID,Elvira-Ortiz David Alejandro2ORCID,Romero-Troncoso Rene de Jesus1ORCID,Saucedo-Dorantes Juan Jose12ORCID

Affiliation:

1. Engineering Faculty, Autonomous University of Queretaro, Campus San Juan del Río, Av. Río Moctezuma 249, San Juan del Rio 76807, QRO, Mexico

2. Academic Center of Advanced and Sustainable Technology (CATAS), Autonomous University of Queretaro, Tequisquiapan Campus, Carretera No. 120, San Juan del Río-Xilitla, Km 19+500, Tequisquiapan 76750, QRO, Mexico

Abstract

Energy generation through renewable processes has represented a suitable option for power supply; nevertheless, wind generators and photovoltaic systems can suddenly operate under undesired conditions, leading to power quality problems. In this regard, the development of condition-monitoring strategies applied to the detection of power quality disturbances becomes mandatory to ensure proper working conditions of electrical machinery. Therefore, in this work we propose a diagnosis methodology for detecting power quality disturbances by means of the continuous wavelet transform (CWT) and convolutional neural network (CNN). The novelty of this work lies in the image processing that allows us to precisely highlight the discriminant patterns through spectrograms into 2D images; the images are cropped and reduced to a standard size of 128x128 pixels to retain the most relevant information. Subsequently, the identification of six power quality disturbances is automatically performed by a convolutional neural network. The effectiveness of the proposed method is validated under a set of synthetic data as well as a real data set; the obtained results make the proposal suitable for being incorporated into the monitoring of power quality disturbances in renewable energy systems.

Funder

Mexican Council of Humanities Sciences and Technology

Universidad Autonoma de Querétaro

Publisher

MDPI AG

Reference38 articles.

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