Study on Layout Planning of Transfer Hub Integration of Urban Passenger Transit

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Abstract:

In the background of the integration, how to scientifically and reasonably distribute transfer hubs becomes the problem needed to be solved urgently on traffic experts. First of all, this paper gives initial selections of transfer hub layout planning; then, on the basis of analyzing the influence factors of the layout planning, the evaluation index system is built; and based on rough set attribute reduction knowledge, the cluster analysis of initial selections is done by using the SOFM neural network, drawing the suboptimal alternatives; afterwards, through the establishment of the TOPSIS model based on entropy weight, the suboptimal alternatives are further optimalized, ultimately getting the optimal solution; finally, taking the haidian district of Beijing as an example, the model and algorithm of the subject are validated.

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Periodical:

Advanced Materials Research (Volumes 671-674)

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2928-2936

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Online since:

March 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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