Title :
Method for estimating the energy consumption of electric vehicles and plug-in hybrid electric vehicles under real-world driving conditions
Author :
Shankar, Raji ; Marco, Jordi
Author_Institution :
Dept. of Automotive Eng., Cranfield Univ., Cranfield, UK
Abstract :
This study presents a novel framework by which the energy consumption of an electric vehicle (EV) or the zero-emissions range of a plug-in hybrid electric vehicle (PHEV) may be predicted over a route. The proposed energy prediction framework employs a neural network and may be used either `off-line´ for better estimating the real-world range of the vehicle or `on-line´ integrated within the vehicle´s energy management control system. The authors propose that this approach provides a more robust representation of the energy consumption of the target EVs compared to standard legislative test procedures. This is particularly pertinent for vehicle fleet operators that may use EVs within a specific environment, such as inner-city public transport or the use of urban delivery vehicles. Experimental results highlight variations in EV range in the order of 50% when different levels of traffic congestion and road type are included in the analysis. The ability to estimate the energy requirements of the vehicle over a given route is also a pre-requisite for using an efficient charge blended control strategy within a PHEV. Experimental results show an accuracy within 20-30% when comparing predicted and measured energy consumptions for over 800 different real-world EV journeys.
Keywords :
energy management systems; hybrid electric vehicles; neural nets; power consumption; power engineering computing; road traffic; EV; PHEV; charge blended control strategy; energy consumption estimation; neural network; plug-in hybrid electric vehicle; real-world driving condition; road type; traffic congestion; vehicle energy management control system; vehicle fleet operator;
Journal_Title :
Intelligent Transport Systems, IET
DOI :
10.1049/iet-its.2012.0114