Open Access
Issue |
E3S Web Conf.
Volume 460, 2023
International Scientific Conference on Biotechnology and Food Technology (BFT-2023)
|
|
---|---|---|
Article Number | 06029 | |
Number of page(s) | 12 | |
Section | Agri-Food Transport and Logistics Systems | |
DOI | https://doi.org/10.1051/e3sconf/202346006029 | |
Published online | 11 December 2023 |
- T.A. Kozlova, Methodology for finding rational constructionist parmeters of a heavy electric vehicle manufacturer, Online journal “Science Studies”, 8 (5) (2016) http://naukovedenie.ru/PDF/86TVN516.pdf (Last accessed 11.09.2023) [Google Scholar]
- M. Potashnikov, V. Shishkina, A. Muravev, A. Kartashov, Development of vehicle driving cycles based on a set of real traffic data, E3S Web of Conf., International Scientific Siberian Transport Forum - Trans-Siberia 2023, 402 (2023) [Google Scholar]
- V. Grinin, E. Shkarupelov, A. Muravev, A. Kartashov, S. Nazarenko, A. Klimov, The method of using vehicle driving cycles to assess the durability of electromechanical transmissions of trucks, E3S Web Conference, International Scientific Siberian Transport Forum - Transsibir 2023, 402 (2023) [Google Scholar]
- S. I. Antipov, Yu.V. Dementiev, Modern test driving cycles and their relevance when creating an algorithm for the operation of a car control system with a KEU, Proceedings of the Volgograd Technical University. Series: Ground transport systems, 10 (113), 8–11 (2013) [Google Scholar]
- S. V. Gusakov, V. A. Markov, D. V. Mikhryachev, Computational and experimental methodology for adjusting the driving cycle for the phase of vehicle movement in urban conditions, Proceedings of higher educational institutions, Moscow, Mechanical Engineering, EDN: OXDJPP, 5, 23–30 (2012) [Google Scholar]
- B.U. Akunov, Driving cycles for assessing the fuel efficiency of passenger cars, Bulletin of the Tajik Technical University, 1 (25), 92–95 (2014) [Google Scholar]
- S. Manyashin, Modeling of fuel consumption by cars based on a driving cycle in low- temperature operating conditions: dissertation of Candidate of Technical Sciences: 05.22.10, Orenburg, 172, ill. RGB OD, 61 13-5/1777 (2013) [Google Scholar]
- N.A. Shilippova, B.M. Muta, A.V. Sidorenko, Anal due to the development of a nihilistic system, specialized cargo transport management, Synergy of Sciences, eISSN: 2500-0950 (2019) [Google Scholar]
- D.A. Moiseikin, S.A. Kozhevnikova, Innovative processes in the transport industry, Concept, 2034(04), 14538 [Google Scholar]
- N.A. Filippova, V.M. Vlasov, V.M. Belyaev, Navigation management of cargo transportation in the North of Russia, The world of transport and transportation facilities, 17 (4), 218–231 (2019) https://doi.org/10.30932/1992-3252-2019-17-4-218-231 [Google Scholar]
- L. Park, K. Fender, Assessment of the use of navigation systems in the trucking industry, December 2014, Journal of Transportation Research Record of the Transportation Research Council DOI: 10.3141/2411-13 [Google Scholar]
- V. Vyugin, Mathematical foundations of machine learning and forecasting [Google Scholar]
- Soledad Galli, A Cookbook on Developing Python functionality [Google Scholar]
- Xinyi Jia, Huw Wang, Liangfei Xu, Qing Wang, Hang Li, Junyan Hu, Jianqiu Li, Mingao Ouyang, Constructing a representative driving cycle for a heavy-duty vehicle based on the Markov chain method taking into account road slope, energy and artificial intelligence, 6, 100115 (2021) [Google Scholar]
- I.K. Yeo, R.A. Johnson, A new family of power transformations for improving normality or symmetry, Biometrics, 87 (4), 954–959 (2000) [Google Scholar]
- R. Madhuri Desinedi, S. Mahesh, Gitakrishnan Ramadurai, Development of driving cycles using k-means clustering and determination of their optimal duration, WCTR 2019, Mumbai, May 26-31 (2019) DOI: 10.1016/j.trpro.2020.08.268 [Google Scholar]
Current usage metrics show cumulative count of Article Views (full-text article views including HTML views, PDF and ePub downloads, according to the available data) and Abstracts Views on Vision4Press platform.
Data correspond to usage on the plateform after 2015. The current usage metrics is available 48-96 hours after online publication and is updated daily on week days.
Initial download of the metrics may take a while.