Real-time electric vehicle mass identification

被引:0
|
作者
Wilhelm, Erik [1 ]
Rodgers, Lennon [2 ]
Bornatico, Raffaele [3 ]
机构
[1] Singapore University of Technology and Design, Singapore
[2] Massachusetts Institute of Technology, United States
[3] ETH-Zurich, Switzerland
来源
World Electric Vehicle Journal | 2013年 / 6卷 / 01期
关键词
D O I
10.3390/wevj6010141
中图分类号
U46 [汽车工程];
学科分类号
080204 ; 082304 ;
摘要
A technique capable of identifying electric vehicle (EV) mass in real-time has been a topic of research for several years due to the advantages it presents, such as the ability to dramatically improve range estimates, perform more effective torque vectoring for ABS/ESC, track delivery vehicle weight, etc.. Some crucial issues in mass identification impede an easy implementation of such an algorithm, however, and this work introduces a simple method to calculate EV mass on-the-fly using standard data available on most CAN buses and therefore without the need of additional sensors. The results presented here are achieved using an eight step technique suitable for accurate mass estimations during wide-open-throttle acceleration events. The algorithm's instantaneous error is less than 10%, and converges to better than 3% absolute accuracy performance with subsequent measurements. A preliminary analysis of trips lacking hard acceleration presented in this paper show an inability to differentiate between loaded and unloaded conditions. © 2013 WEVA Page.
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页码:141 / 146
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