Abstract
Predicting passenger flow is vital for the management, safety and smooth operation of any metro station. Such predictions are highly challenging as it depends on many parameters including travel pattern of the passengers. In this paper, we propose a highly efficient Long Short Term Memory Network [LSTM] which is a specialization of RNN to achieve this task. To do this prediction we employ the historical dataset from the metro containing the count, age and gender category of the passengers. Unlike earlier works, we also take into account the meteorological data of that time period and also the holiday information which includes the local events and public holidays. This accounts for the occasional spikes or fluctuations in the crowd patterns. Also the information about gender and age category of passengers is given emphasis and considered as an important parameter that affects the overall passenger count . Various configurations of the LSTM model are experimented by training the model repeatedly and the ones that yield the best result for this problem are evaluated and analyzed. The results obtained can be used to build an accurate and reliable predictive model to understand beforehand the amount of passenger crowd to expect
Highlights
A metro rail is a thread that seamlessly connects the city together and provides a hassle-free travel experience to every commuter
This paper focuses on predicting the passenger flow using the Long Short term Memory Model (LSTM) model with historical data consisting of age and gender statistics, meteorological data and the holiday information
We predict the count of passengers to be expected in the metro station on an hourly basis using the LSTM neural network
Summary
A metro rail is a thread that seamlessly connects the city together and provides a hassle-free travel experience to every commuter. On a day when more crowds are expected, more staff can be assigned at that particular station and more ticketing counters and security check personnel can be employed This knowledge helps to effectively deploy the existing staff and resources between the various metro stations of the city without having to invest more capital to manage the occasional peak hours. This will help to prevent crowd congestion, enhance safety of the passengers and help in the intelligent utilization of the existing metro capacity. Knowing the passenger flow patterns can be used to assign more autos and cabs at the busier stations and during the peak hours for further commutation of the passengers This eases the travel experience of the common man through the city
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More From: Turkish Journal of Computer and Mathematics Education (TURCOMAT)
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