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NTIS 바로가기The Transactions of the Korea Information Processing Society, v.13 no.3, 2024년, pp.130 - 139
박기창 ((주)리쉐니에 제조지능화기술연구소) , 이용관 (한국공학대학교 그랜드ICT연구센터)
Artificial intelligence models are being used to detect facility anomalies using physics data such as vibration, current, and temperature for predictive maintenance in the manufacturing industry. Since the types of facility anomalies, such as facility defects and failures, anomaly detection methods ...
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