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Title: | Characterization of Partial Discharges in Dielectric Oils Using High-Resolution CMOS Image Sensor and Convolutional Neural Networks | Authors: | Monzón-Verona, José Miguel González Domínguez, Pablo García-Alonso, Santiago |
UNESCO Clasification: | 3307 Tecnología electrónica | Keywords: | Cmos Image Sensor Convolutional Neural Network Deep Learning Mineral Oils Non-Destructive Diagnosis, et al |
Issue Date: | 2024 | Journal: | Sensors (Switzerland) | Abstract: | In this work, an exhaustive analysis of the partial discharges that originate in the bubbles present in dielectric mineral oils is carried out. To achieve this, a low-cost, high-resolution CMOS image sensor is used. Partial discharge measurements using that image sensor are validated by a standard electrical detection system that uses a discharge capacitor. In order to accurately identify the images corresponding to partial discharges, a convolutional neural network is trained using a large set of images captured by the image sensor. An image classification model is also developed using deep learning with a convolutional network based on a TensorFlow and Keras model. The classification results of the experiments show that the accuracy achieved by our model is around 95% on the validation set and 82% on the test set. As a result of this work, a non-destructive diagnosis method has been developed that is based on the use of an image sensor and the design of a convolutional neural network. This approach allows us to obtain information about the state of mineral oils before breakdown occurs, providing a valuable tool for the evaluation and maintenance of these dielectric oils. | URI: | http://hdl.handle.net/10553/129246 | ISSN: | 1424-8220 | DOI: | 10.3390/s24041317 | Source: | Sensors[ISSN 1424-8220],v. 24 (4), (Febrero 2024) |
Appears in Collections: | Artículos |
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