TITLE:
Application of Machine Learning in Electronic Device Fault Diagnosis
AUTHORS:
Mingqi Ma
KEYWORDS:
Machine Learning, Electronic Devices, Fault Diagnosis, Predictive Maintenance, Artificial Intelligence
JOURNAL NAME:
Journal of Computer and Communications,
Vol.12 No.11,
November
26,
2024
ABSTRACT: As electronic devices become increasingly complex, traditional fault diagnosis methods face significant challenges. Machine learning technologies offer new opportunities and solutions for electronic device fault diagnosis. This paper explores the application of machine learning in electronic device fault diagnosis, focusing on common machine learning algorithms, data preprocessing techniques, and diagnostic model construction methods. Case study analysis elucidates the advantages of machine learning in improving diagnostic accuracy, reducing diagnosis time, and implementing predictive maintenance. Research indicates that machine learning techniques can effectively enhance the efficiency and precision of electronic device fault diagnosis, providing robust support for device reliability and maintenance strategy optimization. In the future, as artificial intelligence technology further develops, machine learning will play an increasingly important role in the field of electronic device fault diagnosis.