Title :
Predictive Driving Guidance of Full Electric Vehicles Using Particle Swarm Optimization
Author :
Kachroudi, Sofiene ; Grossard, Mathieu ; Abroug, Neil
Author_Institution :
Veolia Environ. Services, Nanterre, France
Abstract :
This paper focuses on the development of computational algorithms for determining online energy-based driving guidance for an electric vehicle (EV) endowed with regenerative breaking system capabilities. A predictive decision support system is designed to optimally distribute energy flow between the instantaneous power demand requested by the driver for the powertrain engine and the different auxiliaries relating to comfort performance, such as the heating system. The proposed methodology uses an online particle swarm optimization (PSO) algorithm to search for a global optimum relative to specific objective functions, which take into account battery autonomy, driving comfort indexes, and travel time. Our methodology has been validated for a heavy motorized quadricycle vehicle using hardware-in-loop (HIL) simulations, for which the energy management system has been implemented in a digital signal processing (DSP) board communicating through a controller area network (CAN) protocol.
Keywords :
battery powered vehicles; controller area networks; decision support systems; digital signal processing chips; energy management systems; engines; load flow; particle swarm optimisation; power engineering computing; power transmission (mechanical); protocols; regenerative braking; CAN protocol; DSP; EV; HIL simulation; PSO algorithm; battery autonomy; computational algorithm development; controller area network protocol; digital signal processing; driving comfort index; energy flow distribution; energy management system; full electric vehicle; hardware-in-loop simulation; heating system; heavy motorized quadricycle vehicle; instantaneous power demand; online energy-based predictive driving guidance; particle swarm optimization algorithm; powertrain engine driver; predictive decision support system; regenerative breaking system; Batteries; Electric motors; Energy management; Optimization; Resistance heating; Torque; Vehicles; Decision support; energy management system (EMS); full-electric vehicle (EV); particle swarm optimization (PSO); predictive strategy;
Journal_Title :
Vehicular Technology, IEEE Transactions on
DOI :
10.1109/TVT.2012.2212735