A general anomaly detection framework for fleet-based condition monitoring of machines

Mechanical Systems and Signal Processing - Tập 139 - Trang 106585 - 2020
Kilian Hendrickx1,2, Wannes Meert2, Yves Mollet1,3, Johan Gyselinck3, Bram Cornelis1, Konstantinos Gryllias4,5, Jesse Davis2
1Siemens Digital Industries Software, Interleuvenlaan 68, 3001 Leuven, Belgium
2KU Leuven, Department of Computer Science, Celestijnenlaan 200A box 2402, 3001 Leuven, Belgium
3Université Libre de Bruxelles, BEAMS, Avenue Franklin Roosevelt 50 (CP165/52), 1050 Brussels, Belgium
4KU Leuven, Department of Mechanical Engineering, Celestijnenlaan 300, 3001 Leuven, Belgium
5Dynamics of Mechanical and Mechatronic Systems, Flanders Make, Belgium

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