Bibliograph. Daten | Fieschi, Andrea: Friction Potential Estimation at low levels of Friction Consumption using 1D Convolutional Neural Networks. Universität Stuttgart, Fakultät Informatik, Elektrotechnik und Informationstechnik, Masterarbeit Nr. 117 (2021). 86 Seiten, englisch.
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| Kurzfassung | This thesis explores a data-based approach to the problem of Friction Potential Estimation of Tyre-Ground systems. A Neural Network is specifically tailored to reliably draw conclusions on the available Friction Potential. A performance baseline is extrapolated from the evaluation of an LSTM Neural Network applied to the same problem. The architecture, chosen as a starting point for this job is, a Mono Dimensional Convolutional Neural Network. From there on, structural enhancement, such as multiple output training, are added to the mix. The dataset has been built by measurements gathered from a real-life vehicle, which has been run on a Test Bench.
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| Abteilung(en) | Universität Stuttgart, Institut für Künstliche Intelligent, Analytic Computing
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| Betreuer | Staab, Prof. Steffen; Wagner, Prof. Andreas; Potyka, Dr. Nico; Todotovic, Smiljana |
| Eingabedatum | 18. September 2024 |
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