DESIGN OF DYNAMIC NEURAL NETWORKS TO FORECAST SHORT-TERM RAILWAY PASSENGER DEMAND
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概要
- 論文の詳細を見る
This paper develops two dynamic neural network structures to forecast short-term railway passenger demand. The first neural network structure follows the idea of autoregressive model in time series forecasting and forms a nonlinear autoregressive model. In addition, two experiments are tested to eliminate redundant inputs and training samples. The second neural network structure extends the first model and integrates internal recurrent to pursue a parsimonious structure. The result of the first model shows the proposed nonlinear autoregressive model can attain promising performance and most cases are fewer than 20% of Mean Absolute Percentage Error. The result of the second model shows the proposed internal recurrent neural network can perform as well as the first model does and keep the model parsimonious. Short-term forecasting is essential for short-term operational planning, such as seat allocation. The proposed network structures can be applied to solve this issue with promising performance and parsimonious structures.
- Eastern Asia Society for Transportation Studiesの論文
著者
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LEE Chi-Kang
Department of Transportation and Communication Management Science National Cheng Kung University
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WEI Chien-Hung
Department of Transportation and Communication Management Science National Cheng Kung University
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TSAI Tsung-Hsien
Department of Transportation and Communication Management Science National Cheng Kung University
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TSAI Tsung-Hsien
Department of Tourism Management, National Quemoy University
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LEE Chi-Kang
Department of Marketing and Logistics Management, Southern Taiwan University of Technology
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