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World Electric Vehicle Journal is published by MDPI from Volume 9 issue 1 (2018). Previous articles were published by The World Electric Vehicle Association (WEVA) and its member the European Association for e-Mobility (AVERE), the Electric Drive Transportation Association (EDTA), and the Electric Vehicle Association of Asia Pacific (EVAAP). They are hosted by MDPI on mdpi.com as a courtesy and upon agreement with AVERE.
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Article

The Development of Remote Self-Learning Platform for Hybrid Electric Vehicle

Zhuang JiHui State Key Laboratory of Engine, Tianjin University, Tianjin 300072, China
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Author to whom correspondence should be addressed.
World Electr. Veh. J. 2010, 4(4), 727-732; https://doi.org/10.3390/wevj4040727
Published: 31 December 2010

Abstract

The analysis of statistic data from real-time driving cycle of hybrid electric vehicle shows relationships that help to optimize control strategy. This paper presents a remote self-learning platform based on general packer radio service (GPRS) for control strategy optimization to hybrid electric vehicle. The platform adopts an in-vehicle device to acquire real-time driving data through CAN bus and communicate wirelessly with central server by GPRS network and INTERNET. A fast clustering method is introduced to classify real-time driving data as different driving cycle. According to driving cycle, online statistical analysis is implemented in central server to obtain energy consumption result, and the optimized control strategy is updated by in-vehicle device. During the process of update to control strategy, the wireless communication quality is a vital factor for completeness of data. A Model-based control algorithm to solve wireless network congestion problem is realized depending on the characteristics of the communication quality. The test result shows that the communication process can be improved greatly and the communication quality is increased 30% at least by this algorithm. The transmission load would be reduced automatically in order to make the communication be normal as soon as possible when the network is under congestion.
The study shows that the remote self-learning platform is effective to define and characterize driving cycle of hybrid electric vehicle. In the sample application, remote self-learning platform plays an importance role in optimizing the control and energy management strategy of hybrid electric vehicle.
Keywords: control strategy; driving cycle; hybrid electric vehicle; model-based control control strategy; driving cycle; hybrid electric vehicle; model-based control

Share and Cite

MDPI and ACS Style

Zhuang, J.; Xie, H.; Yan, Y.; Zhu, Z.; Yan, F. The Development of Remote Self-Learning Platform for Hybrid Electric Vehicle. World Electr. Veh. J. 2010, 4, 727-732. https://doi.org/10.3390/wevj4040727

AMA Style

Zhuang J, Xie H, Yan Y, Zhu Z, Yan F. The Development of Remote Self-Learning Platform for Hybrid Electric Vehicle. World Electric Vehicle Journal. 2010; 4(4):727-732. https://doi.org/10.3390/wevj4040727

Chicago/Turabian Style

Zhuang, JiHui, Hui Xie, Ying Yan, ZhongWen Zhu, and FangChao Yan. 2010. "The Development of Remote Self-Learning Platform for Hybrid Electric Vehicle" World Electric Vehicle Journal 4, no. 4: 727-732. https://doi.org/10.3390/wevj4040727

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