2010 International Conference on Computer Application and System Modeling (ICCASM 2010) 2010
DOI: 10.1109/iccasm.2010.5619027
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Notice of Retraction: Freight transport resources integration model and simulation based on agent and human-element model

Abstract: There are many problems in the layout of the railway freight stations, such as too many stations, the higher density of stations, and so on. So, it is necessary to adjust the layout of freight station and integrate the freight transport resources to raise the freight transport services level. According to the Sugarscape model and the analysis of advantages and disadvantages of Human Element model, a freight transport resources integration model is established based on multi-agent system and Human Element model… Show more

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“…2 m n f = + (1) Where m represents the number of the neurons in the hidden layer, n represents the number of the neurons in the input layer, and f is an adjustment constant. By adjusting the value of f and training the BP Neural Network with the same samples, the number of the neurons in the hidden layer can be determined when the training error of the BP Neural Network reaches its minimum.…”
Section: B Construction Of the Bp Neural Network Model 1) Establishmmentioning
confidence: 99%
See 1 more Smart Citation
“…2 m n f = + (1) Where m represents the number of the neurons in the hidden layer, n represents the number of the neurons in the input layer, and f is an adjustment constant. By adjusting the value of f and training the BP Neural Network with the same samples, the number of the neurons in the hidden layer can be determined when the training error of the BP Neural Network reaches its minimum.…”
Section: B Construction Of the Bp Neural Network Model 1) Establishmmentioning
confidence: 99%
“…In AHP method and Fuzz Comprehensive Evaluation method, the index weights are confirmed by expert estimation. Agent-Human-Element model is used to adjust the layout of the railway stations and many measureable indexes, such as economic conditions and location of railway stations, are regarded as objective properties of railway stations in this model [1].…”
Section: Introductionmentioning
confidence: 99%