Accesso libero

Influence of External Environmental Factors on Range Estimation of Autonomous Hybrid Vehicles

INFORMAZIONI SU QUESTO ARTICOLO

Cita

Xu, Q., Yang. K., Peng, S., Hong, L., 2018. A Distance-Adaptive Refueling Recommendation Algorithm for Self-Driving Travel. March, International Journal of Geo-Information 7(3):94. DOI:10.3390/ijgi7030094 Search in Google Scholar

LKW-Einkauf, Logistik inside. https://www.gefahrgutnline.de/fm/3576/LOGISTIK_inside_LKW_Dieselverbrauch.pdf Search in Google Scholar

Delp, M., Autonomous vehicle refueling locator. US9400500B2. https://patents.google.com/patent/US9400500 Search in Google Scholar

Csiszár, Cs,, Csonka, B., Földes, D., Wirth, E., Lovas, T., 2018. Az országos átjárhatóságat biztosító elektromos villám töltő-állomások helyszínét kijelölő módszer. Közlekedéstudományi szemle, Közlekedéstudományi szemle, 68 (1-4). Search in Google Scholar

Jakobson, C., 2016. Einflussgrößen auf den Kraftstoffverbrauch. Teil 1 Limousinen, Der Autokritiker. http://derautokritiker.de/technik/151016_Einflussgr%C3%B6%C3%9Fen%20auf%20den%20Kraftstoffverbrauch%20Limousinen.pdf Search in Google Scholar

Gołębiewski, W. Stoeck, T., 2014. Prediction of the Mileage Fuel Consumption of Passenger Car in the Urban Driving Cycle. Teka Commission of motorization and energetics in agriculture, Vol. 14, No. 3, 17–24. Search in Google Scholar

https://www.bussgeldkatalog.org/sprit-sparen/sparsame-autos/ - 2018.12.01 Search in Google Scholar

https://www.marktundmittelstand.de/themen/nutzfahrzeuge/die-zukunft-des-autos-istnicht-nur-elektrisch-1262591/ - 2018.11.28 Search in Google Scholar

Almér, H., 2015. Machine learning and statistical analysis in fuelconsumption prediction for heavy vehicles. Master’s Thesis at CSC. https://www.diva-portal.org/smash/get/diva2:846386/FULLTEXT01.pdf Search in Google Scholar

Ritz, J., Mobilitätswende – Autonome Autos erobern unsere Strassen 5,6. Springer Verlag. ISBN 978-3-658-20953-7 Search in Google Scholar

Rabl, H., Makarenko, I., 2008. Spritsparendes Autofahren University of Applied Sciences Regensburg. Wissenschaftszentrum Straubing, 8. Search in Google Scholar

Rumbholz, P., Untersuchung der Fahrereinflüsse auf den Energieverbrauch und die Potentiale von verbrauchsreduzierende Verzögerungsassistenzfunktionen bei PKW. Search in Google Scholar

www.sae.org/misc/pdfs/automated_driving.pdf Search in Google Scholar

www.vda.de/de/themen/innovation-und-technik/automatisiertes-fahren/automatisiertes-fahren.html Search in Google Scholar

Polak, F., 2018. REV’s Hybrid Vehicle Range Modeling. Journal of KONES Powertrain and Transport, Vol. 25, No. 2, 281-286. DOI: 10.5604/01.3001.0012.2814 Search in Google Scholar

Varga, B., Iclodean, C., Mariasiu, F., 2016. Energetic Efficiency of Vehicles Equipped with Hybrid and Electric Drive Systems. Electric and Hybrid Buses for Urban Transport. DOI: 10.1007/978-3-319-41249-8_2 Search in Google Scholar

Török, A., Török, A., Heinitz, F., 2014. Usage of Production Functions in the Comparative Analysis of Transport Related Fuel Consumption. Transport and Telecommunication Journal, 15(4), 292-298. https://doi.org/10.2478/ttj-2014-0025 Search in Google Scholar

Ildarkhanov, R., 2017. The Calculation of the Fuel Cost for a Car. Periodica Polytechnica Transportation Engineering. doi: https://doi.org/10.3311/PPtr.10553 Search in Google Scholar

Szalay, Z., Tettamanti, T., Esztergár-Kiss, D., Varga, I., Bartolini, C., 2018. Development of a Test Track for Driverless Cars: Vehicle Design, Track Configuration, and Liability Considerations. Periodica Polytechnica Transportation Engineering, 46(1), 29-35. doi: https://doi.org/10.3311/PPtr.10753 Search in Google Scholar