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Neural Network-Based Modeling of Electric Vehicle Energy Demand and All Electric Range (CROSBI ID 265317)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Topić, Jakov ; Škugor, Branimir ; Deur, Joško Neural Network-Based Modeling of Electric Vehicle Energy Demand and All Electric Range // Energies (Basel), 12 (2019), 7; 1396-1416. doi: 10.3390/en12071396

Podaci o odgovornosti

Topić, Jakov ; Škugor, Branimir ; Deur, Joško

engleski

Neural Network-Based Modeling of Electric Vehicle Energy Demand and All Electric Range

A deep neural network-based approach of energy demand modeling of electric vehicles (EV) is proposed in this paper. The model-based prediction of energy demand is based on driving cycle time series used as a model input, which is properly preprocessed and transformed into 1D or 2D static maps to serve as a static input to the neural network. Several deep feedforward neural network architectures are considered for this application along with different model input formats. Two energy demand models are derived, where the first one predicts the battery state-of-charge and fuel consumption at destination for an extended range electric vehicle, and the second one predicts the vehicle all-electric range. The models are validated based on a separate test dataset when compared to the one used in neural network training, and they are compared with the traditional response surface approach to illustrate effectiveness of the method proposed.

electric vehicles ; deep neural networks ; energy demand modeling ; SoC at destination ; fuel consumption ; all-electric range ; big data

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Podaci o izdanju

12 (7)

2019.

1396-1416

objavljeno

1996-1073

10.3390/en12071396

Povezanost rada

Računarstvo, Strojarstvo, Tehnologija prometa i transport

Poveznice
Indeksiranost