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NTIS 바로가기전자통신동향분석 = Electronics and telecommunications trends, v.36 no.5, 2021년, pp.82 - 91
박노삼 (지능형휴먼트윈연구센터)
This study reviews application of data-driven anomaly detection techniques to the aviation domain. Recent advances in deep learning have inspired significant anomaly detection research, and numerous methods have been proposed. However, some of these advances have not yet been explored in aviation sy...
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