Probabilistic Prediction Of Energy Demand And Driving Range For Electric Vehicles With Federated Learning


Download Probabilistic Prediction Of Energy Demand And Driving Range For Electric Vehicles With Federated Learning PDF/ePub or read online books in Mobi eBooks. Click Download or Read Online button to get Probabilistic Prediction Of Energy Demand And Driving Range For Electric Vehicles With Federated Learning book now. This website allows unlimited access to, at the time of writing, more than 1.5 million titles, including hundreds of thousands of titles in various foreign languages.

Download

Probabilistic Prediction of Energy Demand and Driving Range for Electric Vehicles with Federated Learning


Probabilistic Prediction of Energy Demand and Driving Range for Electric Vehicles with Federated Learning

Author: Thorgeirsson, Adam Thor

language: en

Publisher: KIT Scientific Publishing

Release Date: 2024-09-03


DOWNLOAD





In this work, an extension of the federated averaging algorithm, FedAvg-Gaussian, is applied to train probabilistic neural networks. The performance advantage of probabilistic prediction models is demonstrated and it is shown that federated learning can improve driving range prediction. Using probabilistic predictions, routing and charge planning based on destination attainability can be applied. Furthermore, it is shown that probabilistic predictions lead to reduced travel time.

Constrained-layer damping in hybrid fibre metal elastomer laminates and its tolerance to damage


Constrained-layer damping in hybrid fibre metal elastomer laminates and its tolerance to damage

Author: Jackstadt, Alexander

language: en

Publisher: KIT Scientific Publishing

Release Date: 2025-04-07


DOWNLOAD





This work presents experimental, analytical and numerical methods for predicting structural behaviour as well as damping capabilities of hybrid fibre metal elastomer laminates (FMELs), particularly for the assessment and optimisation of constrained-layer damping (CLD) with regard to its tolerance to damage.

13. Kolloquium Mobilhydraulik : Karlsruhe, 8./9. Oktober 2024


13. Kolloquium Mobilhydraulik : Karlsruhe, 8./9. Oktober 2024

Author: Geimer, Marcus

language: de

Publisher: KIT Scientific Publishing

Release Date: 2024-10-09


DOWNLOAD





Der Tagungsband „13. Kolloquium Mobilhydraulik“ enthält die gesammelten Beiträge zu den Vorträgen der gleichnamigen Veranstaltung am 08./09. Oktober 2024 in Karlsruhe. In neun Artikeln wird über den Stand der Forschung und neue Entwicklungen auf dem Gebiet der Mobilhydraulik berichtet. - The manuscript “13th Mobile hydraulic colloquium” contains the collected contributions to the presentations of the event of the same name, which took place on the 8th/9th October 2024 in Karlsruhe. In nine articles the research state and new developments in the field of mobile hydraulics are reported.