Hassab, YoucefYoucefHassabHillebrecht, TilTilHillebrechtLurz, FabianFabianLurzSchuster, ChristianChristianSchuster2024-12-052024-12-052024-10-16IEEE Transactions on Electromagnetic Compatibility 66 (6): 2150-2158 (2024)https://hdl.handle.net/11420/52309A novel approach for the validation of data in signal integrity and power integrity using machine learning is proposed. This approach presents an alternative to the feature selective validation method outlined in the IEEE Standard 1597.1 for the validation of computational electromagnetics,computer modeling and simulations. The proposed approach focuses on replicating the human visual assessment by using data collected and labeled by expert engineers to train time series classification networks that predict the degree of agreement between two curves. The trained networks are then used for the systematic and automated validation of 1-D datasets. The performance and suitability of this approach for systematic data validation is evaluated and discussed. The trained network surpasses the single human subjects in predicting the expert opinion with an accuracy higher than 70%.en0018-9375IEEE transactions on electromagnetic compatibility2024621502158IEEEData validation | electromagnetic compatibility (EMC) | feature selective validation | machine learning | power integrity | signal integrity | time series classification (TSC)MLE@TUHHComputer Science, Information and General Works::004: Computer SciencesTechnology::621: Applied Physics::621.3: Electrical Engineering, Electronic EngineeringMachine Learning based data validation for signal integrity and power integrity using supervised time series classificationJournal Article10.1109/TEMC.2024.3474917Journal Article