Abstract

Metro systems play a key role in meeting urban transport demands in large cities. The close relationship between historical weather conditions and the corresponding passenger flow has been widely analyzed by researchers. However, few studies have explored the issue of how to use historical weather data to make passenger flow forecasting more accurate. To this end, an hourly metro passenger flow forecasting model using a deep long short-term memory neural network (LSTM_NN) was developed. The optimized traditional input variables, including the different temporal data and historical passenger flow data, were combined with weather variables for data modeling. A comprehensive analysis of the weather impacts on short-term metro passenger flow forecasting is discussed in this paper. The experimental results confirm that weather variables have a significant effect on passenger flow forecasting. It is interesting to find out that the previous variables of one-hour temperature and wind speed are the two most important weather variables to obtain more accurate forecasting results on rainy days at Taipei Main Station, which is a primary interchange station in Taipei. Compared to the four widely used algorithms, the deep LSTM_NN is an extremely powerful method, which has the capability of making more accurate forecasts when suitable weather variables are included.

Highlights

  • IntroductionAs one of the most important issues in an urban metro system is part of smart cities [1], passenger flow analysis and forecast for public transport have been widely studied over the last two decades

  • As one of the most important issues in an urban metro system is part of smart cities [1], passenger flow analysis and forecast for public transport have been widely studied over the last two decades.Metro systems play an important role in meeting urban transport demand

  • More accurate short-term passenger flow forecasting for metro systems is important in solving a series of problems in the process of urban development, such as mitigating the adverse effects of traffic congestion, reducing vehicle pollution, better planning of public transit networks, and better land use planning along metro lines

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Summary

Introduction

As one of the most important issues in an urban metro system is part of smart cities [1], passenger flow analysis and forecast for public transport have been widely studied over the last two decades. Metro systems play an important role in meeting urban transport demand. Because of their high speed, efficiency, volume, and punctuality, urban metros are the first choice for many daily commutes [2]. More accurate short-term passenger flow forecasting for metro systems is important in solving a series of problems in the process of urban development, such as mitigating the adverse effects of traffic congestion, reducing vehicle pollution, better planning of public transit networks, and better land use planning along metro lines. Experimental results show that weather data [4,5] were able to represent the passenger

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