DocumentCode :
3574662
Title :
Fuzzy Logic Control for energy saving in Autonomous Electric Vehicles
Author :
Al-Jazaeri, A.O. ; Samaranayake, L. ; Longo, S. ; Auger, D.J.
Author_Institution :
Centre for Automotive Eng., Cranfield Univ., Cranfield, UK
fYear :
2014
Firstpage :
1
Lastpage :
6
Abstract :
Limited battery capacity and excessive battery dimensions have been two major limiting factors in the rapid advancement of electric vehicles. An alternative to increasing battery capacities is to use better: intelligent control techniques which save energy on-board while preserving the performance that will extend the range with the same or even smaller battery capacity and dimensions. In this paper, we present a Type-2 Fuzzy Logic Controller (Type-2 FLC) as the speed controller, acting as the Driver Model Controller (DMC) in Autonomous Electric Vehicles (AEV). The DMC is implemented using realtime control hardware and tested on a scaled down version of a back to back connected brushless DC motor setup where the actual vehicle dynamics are modelled with a Hardware-In-the-Loop (HIL) system. Using the minimization of the Integral Absolute Error (IAE) has been the control design criteria and the performance is compared against Type-1 Fuzzy Logic and Proportional Integral Derivative DMCs. Particle swarm optimization is used in the control design. Comparisons on energy consumption and maximum power demand have been carried out using HIL system for NEDC and ARTEMIS drive cycles. Experimental results show that Type-2 FLC saves energy by a substantial amount while simultaneously achieving the best IAE of the control strategies tested.
Keywords :
brushless DC motors; electric vehicles; fuzzy control; intelligent control; particle swarm optimisation; real-time systems; three-term control; velocity control; ARTEMIS drive cycles; NEDC; actual vehicle dynamics; autonomous electric vehicles; battery capacity; battery dimensions; brushless DC motor setup; driver model controller; energy consumption; energy saving; hardware-in-the-loop system; integral absolute error; intelligent control techniques; particle swarm optimization; proportional integral derivative; real time control hardware; scaled down version; speed controller; type-2 fuzzy logic controller; Batteries; Generators; Mathematical model; Power demand; Torque; Vehicle dynamics; Vehicles; Type 2 fuzzy logic controller; autonomous electric vehicle; driver model controller; energy saving; hardware in the loop;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Electric Vehicle Conference (IEVC), 2014 IEEE International
Type :
conf
DOI :
10.1109/IEVC.2014.7056100
Filename :
7056100
Link To Document :
بازگشت