Universidad de Burgos RIUBU Principal Default Universidad de Burgos RIUBU Principal Default
  • español
  • English
  • français
  • Deutsch
  • português (Brasil)
  • italiano
Universidad de Burgos RIUBU Principal Default
  • Ayuda
  • Contacto
  • Sugerencias
  • Acceso abierto
    • Archivar en RIUBU
    • Acuerdos editoriales para la publicación en acceso abierto
    • Controla tus derechos, facilita el acceso abierto
    • Sobre el acceso abierto y la UBU
    • español
    • English
    • français
    • Deutsch
    • português (Brasil)
    • italiano
    • español
    • English
    • français
    • Deutsch
    • português (Brasil)
    • italiano
    JavaScript is disabled for your browser. Some features of this site may not work without it.

    Listar

    Todo RIUBUComunidadesFechaAutor / DirectorTítuloMateria / AsignaturaEsta colecciónFechaAutor / DirectorTítuloMateria / Asignatura

    Mi cuenta

    AccederRegistro

    Estadísticas

    Ver Estadísticas de uso

    Compartir

    Ver ítem 
    •   RIUBU Principal
    • E-Prints y Datos de investigación
    • Grupos de investigación
    • Solar and Wind Feasibility Technologies (SWIFT)
    • Artículos SWIFT
    • Ver ítem
    •   RIUBU Principal
    • E-Prints y Datos de investigación
    • Grupos de investigación
    • Solar and Wind Feasibility Technologies (SWIFT)
    • Artículos SWIFT
    • Ver ítem

    Por favor, use este identificador para citar o enlazar este ítem: https://hdl.handle.net/10259/11528

    Título
    Identification of Simultaneous Soft Faults in Analog Circuits Using a Hybrid PSO-Machine Learning Approach
    Autor
    Dieste Velasco, Mª IsabelAutoridad UBU Orcid
    Publicado en
    Circuits, Systems, and Signal Processing. 2026
    Editorial
    Springer
    Fecha de publicación
    2026-03
    ISSN
    0278-081X
    DOI
    10.1007/s00034-026-03531-4
    Resumen
    Analog circuits are fundamental to a wide range of industrial systems, where their evaluation is essential for ensuring operational reliability and preventing system failures. However, diagnostic methodologies for analog circuits are markedly less developed than those for their digital counterparts, primarily due to the inherent difficulty of detecting soft faults within analog environments. One particularly challenging category of faults involves simultaneous degradations across multiple components that do not result in a hard failure of the circuit. Indeed, there is a notable lack of studies addressing the detection of simultaneous soft faults in analog circuits. This study proposes a method for identifying this type of soft fault occurrence in analog circuits by combining Machine Learning (ML) techniques, specifically Random Forests and Artificial Neural Networks, with an Evolutionary Algorithm (EA) based on Particle Swarm Optimization (PSO). The proposed approach is validated on a second-order Sallen-Key band-pass filter, a circuit in which soft fault classification is particularly challenging. Furthermore, the study highlights the performance improvements achieved through the proposed combined method in detecting and classifying simultaneous soft faults. This study demonstrates that an iterative process combining ML and EA techniques enables accurate fault prediction in electronic circuits. Moreover, the integration of these strategies can enhance the performance of classification problems that are traditionally addressed using either ML or EA in isolation. The effectiveness of the proposed method is evaluated using several statistical metrics, including the Matthews Correlation Coefficient (MCC), F1-score, and others.
    Palabras clave
    Machine learning
    Evolutionary algorithm
    RF
    ANN
    PSO
    Simultaneous soft fault diagnosis
    Fault classification
    Materia
    Electrónica analógica
    Analog electronic systems
    Aprendizaje automático
    Machine learning
    URI
    https://hdl.handle.net/10259/11528
    Aparece en las colecciones
    • Artículos SWIFT
    Atribución 4.0 Internacional
    Documento(s) sujeto(s) a una licencia Creative Commons Atribución 4.0 Internacional
    Ficheros en este ítem
    Nombre:
    Dieste-cssp_2026.pdf
    Tamaño:
    2.922Mb
    Formato:
    Adobe PDF
    Thumbnail
    Visualizar/Abrir

    Métricas

    Citas

    Ver estadísticas de uso

    Exportar

    RISMendeleyRefworksZotero
    • edm
    • marc
    • xoai
    • qdc
    • ore
    • ese
    • dim
    • uketd_dc
    • oai_dc
    • etdms
    • rdf
    • mods
    • mets
    • didl
    • premis
    Mostrar el registro completo del ítem

    Universidad de Burgos

    Powered by MIT's. DSpace software, Version 5.10