Fuzzy temporal logic based railway passenger flow forecast model

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Abstract

Passenger flow forecast is of essential importance to the organization of railway transportation and is one of the most important basics for the decision-making on transportation pattern and train operation planning. Passenger flow of high-speed railway features the quasi-periodic variations in a short time and complex nonlinear fluctuation because of existence of many influencing factors. In this study, a fuzzy temporal logic based passenger flow forecast model (FTLPFFM) is presented based on fuzzy logic relationship recognition techniques that predicts the short-term passenger flow for high-speed railway, and the forecast accuracy is also significantly improved. An applied case that uses the real-world data illustrates the precision and accuracy of FTLPFFM. For this applied case, the proposed model performs better than the k-nearest neighbor (KNN) and autoregressive integrated moving average (ARIMA) models.

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APA

Dou, F., Jia, L., Wang, L., Xu, J., & Huang, Y. (2014). Fuzzy temporal logic based railway passenger flow forecast model. Computational Intelligence and Neuroscience, 2014. https://doi.org/10.1155/2014/950371

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