@inproceedings{9a326bdad7d049fc9180fc71b14332a7,
title = "Predictive modeling for vehicle time-series data",
abstract = "The majority of data in current vehicles is evaluated solely in a local manner. The proposed method offers the possibility of using the latest data analysis techniques to develop functions for active safety and driver assistance systems, or vehicle testing of automated driving systems. We show an approach that combines the advantages of machine learning for logged vehicle data with the ability to use the predictive models created online in vehicles. Starting with intelligent data pre-processing, optimal conditions for the analysis step are established. Using machine learning techniques, predictive models are created to estimate various kinds of outcome variables. The concept is shown using the example of estimating the dynamic criticality in vehicles, based on driving dynamics signals and radar data.",
author = "J. Wallner and F. Diermeyer and S. Engel",
note = "Publisher Copyright: {\textcopyright} 2017 Taylor & Francis Group, London.; 13th International Symposium on Advanced Vehicle Control, AVEC 2016 ; Conference date: 13-09-2016 Through 16-09-2016",
year = "2017",
language = "English",
isbn = "9781315265285",
series = "Advanced Vehicle Control AVEC{\textquoteright}16: Proceedings of the 13th International Symposium on Advanced Vehicle Control (AVEC'16)",
publisher = "CRC Press/Balkema",
pages = "477--482",
editor = "Johannes Edelmann and Manfred Plochl and Pfeffer, {Peter E.}",
booktitle = "Advanced Vehicle Control AVEC{\textquoteright}16 - Proceedings of the 13th International Symposium on Advanced Vehicle Control AVEC{\textquoteright}16",
}