Identificador persistente para citar o vincular este elemento: http://hdl.handle.net/10553/136428
Título: Quantum variational vs. quantum kernel machine learning models for partial discharge classification in dielectric oils
Autores/as: Monzón Verona, José Miguel 
Garcia-Alonso Montoya, Santiago 
Santana Martin, Francisco Jorge 
Clasificación UNESCO: 3306 Ingeniería y tecnología eléctricas
Palabras clave: Partial discharges
Mineral oils
Quantum machine learning
Quantum variatonal model
Quantum kernel model, et al.
Fecha de publicación: 2025
Publicación seriada: Sensors (Switzerland) 
Resumen: In this paper, electrical discharge images are classified using AI with quantum machine learning techniques. These discharges were originated in dielectric mineral oils and were detected by a high-resolution optical sensor. The captured images were processed in a Scikit-image environment to obtain a reduced number of features or qubits for later training of quantum circuits. Two quantum binary classification models were developed and compared in the Qiskit environment for four discharge binary combinations. The first was a quantum variational model (QVM), and the second was a conventional support vector machine (SVM) with a quantum kernel model (QKM). The execution of these two models was realized on three fault-tolerant physical quantum IBM computers. The novelty of this article lies in its application to a real problem, unlike other studies that focus on simulated or theoretical data sets. In addition, a study is carried out on the impact of the number of qubits in QKM, and it is shown that increasing the number of qubits in this model significantly improves the accuracy in the classification of the four binary combinations studied. In the QVM, with two qubits, an accuracy of 92% was observed in the first discharge combination in the three quantum computers used, with a margin of error of 1% compared to the simulation obtained on classical computers.
URI: http://hdl.handle.net/10553/136428
ISSN: 1424-8220
DOI: 10.3390/s25041277
Fuente: Sensors (Switzerland) [1424-8220], v.25, p. 1-26
Colección:Artículos
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