This paper aims to examine renewable energy conversion systems with an eye towards using deep learning for fault diagnosis and detection. Nevertheless, hyperparameter selection is crucial to the performance of deep learning models. The work exploits a genetic algorithm to tweak these hyperparameters in this study to improve the overall efficiency and performance of the considered renewable energy conversion system. By conducting extensive simulations and analysis, the study determines how to optimise the hyperparameters to minimise the effects of the system’s performance, tackling possible faults and making the most of deep learning within the framework of a renewable energy conversion system. The diagnostic achievements show that the calculation time is improved and the efficiency is achieved when compared to classical solutions available in the related literature.

Deep Learning for Fault Diagnosis

Simani, Silvio
Ultimo
Writing – Review & Editing
2026

Abstract

This paper aims to examine renewable energy conversion systems with an eye towards using deep learning for fault diagnosis and detection. Nevertheless, hyperparameter selection is crucial to the performance of deep learning models. The work exploits a genetic algorithm to tweak these hyperparameters in this study to improve the overall efficiency and performance of the considered renewable energy conversion system. By conducting extensive simulations and analysis, the study determines how to optimise the hyperparameters to minimise the effects of the system’s performance, tackling possible faults and making the most of deep learning within the framework of a renewable energy conversion system. The diagnostic achievements show that the calculation time is improved and the efficiency is achieved when compared to classical solutions available in the related literature.
2026
9783032071088
9783032071095
Deep learning, Fault detection and diagnosis, Parameter optimisation, Renewable energy conversion systems, Evolutionary algorithm, Simulation and analysis
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11392/2607816
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