DocumentCode :
120932
Title :
Design, modeling and simulation study of a cascaded optimal neural network based fuel cell Powered Electric Vehicle
Author :
Karthik, M. ; Gomathi, K.
Author_Institution :
Dept. of EEE, Kongu Eng. Coll., Erode, India
fYear :
2014
fDate :
7-9 Jan. 2014
Firstpage :
71
Lastpage :
76
Abstract :
In this paper, the performance analysis of the ANN (Artificial Neural Network) based fuel cell powered electric vehicle is investigated for the two popular drive cycles such as M-UDDS and M-NEDC. The complex mathematical model of the fuel cell system is substituted with the black box neural network model that provides an appropriate mapping between the input and output parameters. The performance comparison of the two different cascaded connected neural networks is carried out to examine the prediction ability of the proposed network models in terms of error minimization value and convergence rate. The optimum network acquired from the comparative analysis can be used as an ancillary model instead of using a complex fuel cell model for developing any kind of fuel cell powered application. An attempt is made in this paper to use the neural network based fuel cell approach in the transportation sector for developing an electric vehicle model. This paper is also focused on the design, modeling and simulation of the optimal ANN based fuel cell operated electric vehicle and the performance of the proposed electric vehicle model is analyzed based on the two different drive cycle (M-UDDS & M-NEDC) on which they are operated. The simulation results obtained from the proposed electric vehicle model are used to evaluate the vehicle performance in terms of maximum distance coverage, amount of fuel consumption and comparison of the required vehicle power with the available power delivered by the energy source for the use of modified UDDS & NEDC drive cycle pattern. The power comparison results thus obtained enables to validate the optimality of the neural network model proposed in this paper.
Keywords :
error analysis; feedforward neural nets; fuel cell vehicles; performance evaluation; power engineering computing; recurrent neural nets; ANN; M-NEDC; M-UDDS; ancillary model; black box neural network model; cascaded dynamic recurrent neural network; cascaded feed forward neural network; comparative analysis; complex mathematical model; convergence rate; drive cycle pattern; energy source; error minimization value; fuel cell powered electric vehicle; fuel consumption; input-output parameters; maximum distance coverage; modified new European driving cycle; modified urban dynamometer driving schedule; power comparison; prediction ability; transportation sector; vehicle performance evaluation; Data models; Decision support systems; Electric vehicles; Fuel cells; Mathematical model; Vehicle dynamics; Artificial Neural Network; CDRN Network; CFFN Network; Electric Vehicle; Fuel Cell; M-NEDC Drive Cycle; M-UDDS Drive Cycle;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Electrical Energy Systems (ICEES), 2014 IEEE 2nd International Conference on
Conference_Location :
Chennai
Print_ISBN :
978-1-4799-3738-7
Type :
conf
DOI :
10.1109/ICEES.2014.6924144
Filename :
6924144
Link To Document :
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