Abstract

Background: Public transport demand forecasting is the fundamental process of transport planning activity. It plays a pivotal role in the decision making, policy formulations and urban transport planning procedures. In this paper, public bus passenger demand forecasting model is developed using a novel approach. The empirical passenger demand for a bus depot is modelled and forecasted using a data-driven method. The big data generated by Electronic Ticketing Machines (ETM) used for issuing tickets and collecting fares is sourced as the data for demand modelling. This big data is time indexed and hence has the potential for use in time-series applications which were not previously explored. Objectives: This paper studies the application of time-series method for forecasting public bus passenger demand using ETM based time-series data. The time-series approach used is the four Holt-Winters’ modeling methods. Holt-Winters’ additive and multiplicative models with and without damping have been empirically compared in this study using the data from the inter-zonal buses. The data used in the study is a part of the transaction on ticket sales by Kerala State Road Transport Corporation (KSRTC) maintained at the Trivandrum City depot of an Indian state Kerala, for the period between 2010 and 2013. The forecasting performance of four time-series models is compared using Mean Absolute Percentage Error (MAPE) and the model goodness of fit is determined using information criteria. Conclusion: The forecasts indicate that multiplicative models with and without damping, which better account for seasonal variations, outperform the additive models.

Highlights

  • The increasing urban population plays a pivotal role in the growing travel demand, which in turn causes the transport crisis in Indian cities

  • The Electronic Ticketing Machines (ETM)’s, being one of the big data sources in public transport operations, has generated an enormous database including the number of passengers using the bus, operated kilometres, revenue collected and other trip details

  • This paper studied the application of time-series method for forecasting public bus passenger demand using ETM based time-series data

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Summary

Objectives

This paper studies the application of time-series method for forecasting public bus passenger demand using ETM based time-series data. The timeseries approach used is the four Holt-Winters’ modeling methods. Holt-Winters’ additive and multiplicative models with and without damping have been empirically compared in this study using the data from the inter-zonal buses. The data used in the study is a part of the transaction on ticket sales by Kerala State Road Transport Corporation (KSRTC) maintained at the Trivandrum City depot of an Indian state Kerala, for the period between 2010 and 2013. The forecasting performance of four time-series models is compared using Mean Absolute Percentage Error (MAPE) and the model goodness of fit is determined using information criteria

INTRODUCTION
LITERATURE REVIEW
HOLT-WINTERS’ EXPONENTIAL SMOOTHING METHODS
Holt-Winters’ Additive Method
Holt-Winters’ Damped Additive Method
STUDY AREA
DATA COLLECTION AND ANALYSIS
Data Source-The Electronic Ticketing Machines
Time Series Analysis
EMPIRICAL COMPARISON OF THE RESULTS AND DISCUSSION
CONCLUSION
Findings
AVAILABILITY OF DATA AND MATERIALS

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