DocumentCode
3211839
Title
Design of Optimal Coasting Speed for MRT Systems Using ANN Models
Author
Chuang, Hui-Jen ; Chen, Chao-Shun ; Lin, Chia-Hung ; Hsieh, Ching-Ho ; Ho, Chin-Yin
Author_Institution
Dept. of Electr. Eng., Kao Yuan Univ. Lu Chu, Lu Chu
fYear
2008
fDate
5-9 Oct. 2008
Firstpage
1
Lastpage
7
Abstract
The artificial neural network (ANN) has been proposed in this paper to determine the optimal coasting speed of train operation for Kaohsiung Mass Rapid Transit system (KMRT) to achieve the cost maximization of energy consumption and passenger traveling time. The train performance simulation (TPS) is applied to solve the energy consumption and the traveling time required to complete the journey between stations with various riderships to create the data set for ANN training. The ANN model for the determination of optimal coasting speed is then derived by performing the ANN training. To demonstrate the effectiveness of the proposed ANN model, the annual ridership forecast of KMRT system over the project concession period from 2007 to 2035 has been used to determine the optimal coasting speed of train sets for each study year according to the distance between stations and the passenger ridership. The power consumption profile of train sets and the traveling time of passengers have been solved by TPS simulation to verify the reduction of social cost for KMRT system operation with the optimal coasting speed derived.
Keywords
neural nets; power consumption; rapid transit systems; velocity control; TPS simulation; artificial neural network; cost maximization; energy consumption; mass rapid transit system; optimal coasting speed; passenger traveling time; power consumption profile; train operation; Artificial neural networks; Chaos; Control system synthesis; Control systems; Cost function; Energy consumption; Propulsion; Search methods; System performance; Table lookup;
fLanguage
English
Publisher
ieee
Conference_Titel
Industry Applications Society Annual Meeting, 2008. IAS '08. IEEE
Conference_Location
Edmonton, Alta.
ISSN
0197-2618
Print_ISBN
978-1-4244-2278-4
Electronic_ISBN
0197-2618
Type
conf
DOI
10.1109/08IAS.2008.144
Filename
4658932
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