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Personalized Energy Consumption Prediction of CAEVs with Personal Driving Cycle Selectionopen access

Authors
Hong, SeokjoonCui, ShengminHwang, HoyeonJoe, InwheeKim, Won-Tae
Issue Date
May-2022
Publisher
Institute of Electrical and Electronics Engineers Inc.
Keywords
Batteries; connected and autonomous electric vehicle; energy consumption; machine learning; Navigation; personalized prediction; Power demand; Prediction algorithms; Roads; State of charge; Vehicle dynamics
Citation
IEEE Access, v.10, pp.54459 - 54473
Indexed
SCIE
SCOPUS
Journal Title
IEEE Access
Volume
10
Start Page
54459
End Page
54473
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/170233
DOI
10.1109/ACCESS.2022.3171654
ISSN
2169-3536
Abstract
For connected and autonomous electric vehicles (CAEVs), drivers must choose a power-efficient route because the energy source of a CAEV is a battery. The driver can find the power-efficient route and reduce the risk of the battery running out if the CAEV navigation system can accurately predict the battery’s state of charge (SOC) based on the power consumption prediction for the selected route. As the driver’s driving pattern and the vehicle’s battery capacity are different for individual vehicles, it is important to predict the power consumption and battery SOC for the selected route. In this paper, the system model of CAEV to collect on-board diagnostics (OBD), OBD data cloud (ODC) to manage the OBD data, and the sequence of message exchange between them is proposed. Further, we propose an algorithm that can learn power consumption based on machine learning (ML) in the ODC. It predicts the battery SOC at the end of a trip using the current SOC when the onboard navigation system requests prediction for a specific route of the CAEV. The algorithm’s performance has been evaluated by the OBD dataset of personal vehicles collected in Michigan based on three road types: downtown, urban road, and highway. The results confirmed that the proposed MLR+DNN model could predict battery consumption with an average accuracy of 92%. Additionally, an average accuracy of 94% was obtained in selecting the most similar personal driving cycle (PDC) using hierarchical grey relational analysis (GRA), which is about 15% higher than the accuracy obtained by using the dynamic time warping (DTW) method.
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