DocumentCode :
722943
Title :
Support vector machines for determination of an operational strategy for hybrid electric vehicles
Author :
Innerwinkler, Pamela ; Ebner, Wolfgang ; Stolz, Michael
Author_Institution :
VIRTUAL VEHICLE Res. Center, Graz, Austria
fYear :
2015
fDate :
16-19 June 2015
Firstpage :
709
Lastpage :
714
Abstract :
In this paper a data driven operational strategy for a hybrid electric vehicle (HEV) is developed. There are two big benefits of the proposed approach: The possibility of real-time implementation within embedded control units and the high potential for automated calibration. Starting point is a user defined set of fuel-optimized driving cycles for a hybrid vehicle, which is generated applying e.g. state of the art dynamic programming techniques. From this data the introduced methodology extracts a control strategy that determines the torque-split factor for a given driving situation. The approach is based on a combination of optimization and classification, as well as regression strategies. The data created by a dynamic programming algorithm (DP) is used to train support vector machines (SVMs) in order to get rid of the necessity of a-priori knowledge of the whole driving cycle. From the resulting functions a control law is derived that is able to identify a suitable torque-split factor, independent of the further driving course. Since reducing the information input into the control law will per definition reduce performance, validation of the methodology is based on comparison with optimized driving cycles generated by dynamic programming that use the whole driving cycle information.
Keywords :
dynamic programming; hybrid electric vehicles; optimal control; regression analysis; road vehicles; support vector machines; HEV; SVMs; automated calibration; data driven operational strategy; driving cycle information; dynamic programming techniques; embedded control units; fuel-optimized driving cycles; hybrid electric vehicles; regression strategies; support vector machines; torque-split factor; Batteries; Fuels; Mathematical model; Support vector machines; Torque; Training data; Vehicles; Automotive; Dynamic programming; Hybrid vehicles; Model-based; Optimal control; Support vector machines; Systems theory;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Control and Automation (MED), 2015 23th Mediterranean Conference on
Conference_Location :
Torremolinos
Type :
conf
DOI :
10.1109/MED.2015.7158829
Filename :
7158829
Link To Document :
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