DocumentCode :
34858
Title :
Drive Cycle Prediction and Energy Management Optimization for Hybrid Hydraulic Vehicles
Author :
Bender, Frank A. ; Kaszynski, Martin ; Sawodny, Oliver
Author_Institution :
Inst. for Syst. Dynamics, Univ. of Stuttgart, Stuttgart, Germany
Volume :
62
Issue :
8
fYear :
2013
fDate :
Oct. 2013
Firstpage :
3581
Lastpage :
3592
Abstract :
Increasing costs of fossil fuels and the requirement of reduced CO2 emissions for road vehicles make the development of alternative propulsion systems a top priority in automotive research. Hybrid hydraulic vehicles (HHVs) can contribute to improving the fuel efficiency of heavy vehicles such as garbage trucks and city buses. The combination of a conventional diesel engine with an additional hydraulic powertrain allows for regenerative braking. Further improvements with regard to fuel efficiency become possible through additional optimization of the energy management strategy, which decides when to apply which propulsion system. Rule-based strategies are the state of the art, but they cannot utilize the full potential because their performance is only superior on the cycles for which they have been developed. Approaches including numerical optimization are independent from the actual drive cycle and result in much higher savings. However, these techniques usually require a prediction of the driving profile. In this paper, a complete solution for predictive energy management in HHVs is presented. The fuel savings obtained through the developed algorithms used for prediction and optimization are determined in a simulation study, and the functionality of the concept is proven in a hybrid hydraulic testing vehicle.
Keywords :
air pollution control; diesel engines; electric propulsion; energy management systems; hydraulic systems; power transmission (mechanical); regenerative braking; road vehicles; HHV; automotive research; city buses; diesel engine; drive cycle prediction; driving profile prediction; energy management optimization; fossil fuel cost; fuel efficiency; fuel savings; garbage trucks; heavy vehicles; hybrid hydraulic testing vehicle; hydraulic powertrain; numerical optimization; predictive energy management; propulsion system development; reduced carbon dioxide emissions; regenerative braking; road vehicles; rule-based strategy; Acceleration; Energy management; Mechanical power transmission; Optimization; Propulsion; Torque; Vehicles; Drive cycle prediction; energy management optimization; hybrid hydraulic vehicles (HHVs); learning vehicle;
fLanguage :
English
Journal_Title :
Vehicular Technology, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9545
Type :
jour
DOI :
10.1109/TVT.2013.2259645
Filename :
6507615
Link To Document :
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