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Cited 2 time in webofscience Cited 1 time in scopus
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Real driving cycle-based state of charge prediction for ev batteries using deep learning methodsopen access

Authors
Hong, SeokjoonHwang, HoyeonKim, DanielCui, ShengminJoe, Inwhee
Issue Date
Dec-2021
Publisher
MDPI
Keywords
Electric vehicle; Real driving cycle; Recurrent neural network; Simulation; State of charge; Temporal attention
Citation
APPLIED SCIENCES-BASEL, v.11, no.23, pp.1 - 20
Indexed
SCIE
SCOPUS
Journal Title
APPLIED SCIENCES-BASEL
Volume
11
Number
23
Start Page
1
End Page
20
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/138565
DOI
10.3390/app112311285
Abstract
An accurate prediction of the State of Charge (SOC) of an Electric Vehicle (EV) battery is important when determining the driving range of an EV. However, the majority of the studies in this field have either been focused on the standard driving cycle (SDC) or the internal parameters of the battery itself to predict the SOC results. Due to the significant difference between the real driving cycle (RDC) and SDC, a proper method of predicting the SOC results with RDCs is required. In this paper, RDCs and deep learning methods are used to accurately estimate the SOC of an EV battery. RDC data for an actual driving route have been directly collected by an On-Board Diagnostics (OBD)-II dongle connected to the author’s vehicle. The Global Positioning System (GPS) data of the traffic lights en route are used to segment each instance of the driving cycles where the Dynamic Time Warping (DTW) algorithm is adopted, to obtain the most similar patterns among the driving cycles. Finally, the acceleration values are predicted from deep learning models, and the SOC trajectory for the next trip will be obtained by a Functional Mock-Up Interface (FMI)-based EV simulation environment where the predicted accelerations are fed into the simulation model by each time step. As a result of the experiments, it was confirmed that the Temporal Attention Long–Short-Term Memory (TA-LSTM) model predicts the SOC more accurately than others.
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서울 공과대학 > 서울 컴퓨터소프트웨어학부 > 1. Journal Articles

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