FW
F.L. Wilkesmann
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Short-Term Forecast of Demand for Train Station-Based Round-Trip Bikesharing
A Case Study of OV-fiets in The Netherlands
Around the world, authorities try to increase the attractiveness of multimodal public transport (PT)-related trips to reduce car usage. To achieve this, a seamless combination between the different modes is necessary. The Dutch train station operator NS tries to enhance the combination of the bike and train by providing a train station-based round-trip bikesharing (SBRT) scheme located at train stations throughout the country. This scheme allows users to rent a bike to connect the train station and their destination. The round-trip characteristic SBRT makes it unique in comparison to widely applied one-way bikesharing schemes. While on the latter a wide range of research exists, little research has been conducted on round-trip bikesharing, especially when being integrated into an existing public transport scheme. This paper aims to fill this gap by identifying potential temporal and weather-related determinants for SBRT-rentals of the Dutch SBRT-system OV-fiets using multiple linear regression (MLR). The results are compared with findings on one-way bikesharing schemes. The results are then used as an input to forecast short-term demand. To identify a best performing forecasting method, the statistical methods MLR and Prophet are compared with the neural-network based method Long Short-Term Memory (LSTM).
It is found that for hourly rentals in an SBRT-system, the highest explanatory power achieved with the number of train travelers leaving the corresponding train station, followed by temporal and weather-related determinants. Further, the magnitude of the correlation between the determinants and the hourly demand differs across the stations in the system. For forecasting, the performance of the methods differs across the stations and forecasted periods due to the stations' distinct characteristics. But, especially in times of uncertainty, LSTM is likely to outperform the others due to it's capability of adapting to short-term changes in the demand. ...
It is found that for hourly rentals in an SBRT-system, the highest explanatory power achieved with the number of train travelers leaving the corresponding train station, followed by temporal and weather-related determinants. Further, the magnitude of the correlation between the determinants and the hourly demand differs across the stations in the system. For forecasting, the performance of the methods differs across the stations and forecasted periods due to the stations' distinct characteristics. But, especially in times of uncertainty, LSTM is likely to outperform the others due to it's capability of adapting to short-term changes in the demand. ...
Around the world, authorities try to increase the attractiveness of multimodal public transport (PT)-related trips to reduce car usage. To achieve this, a seamless combination between the different modes is necessary. The Dutch train station operator NS tries to enhance the combination of the bike and train by providing a train station-based round-trip bikesharing (SBRT) scheme located at train stations throughout the country. This scheme allows users to rent a bike to connect the train station and their destination. The round-trip characteristic SBRT makes it unique in comparison to widely applied one-way bikesharing schemes. While on the latter a wide range of research exists, little research has been conducted on round-trip bikesharing, especially when being integrated into an existing public transport scheme. This paper aims to fill this gap by identifying potential temporal and weather-related determinants for SBRT-rentals of the Dutch SBRT-system OV-fiets using multiple linear regression (MLR). The results are compared with findings on one-way bikesharing schemes. The results are then used as an input to forecast short-term demand. To identify a best performing forecasting method, the statistical methods MLR and Prophet are compared with the neural-network based method Long Short-Term Memory (LSTM).
It is found that for hourly rentals in an SBRT-system, the highest explanatory power achieved with the number of train travelers leaving the corresponding train station, followed by temporal and weather-related determinants. Further, the magnitude of the correlation between the determinants and the hourly demand differs across the stations in the system. For forecasting, the performance of the methods differs across the stations and forecasted periods due to the stations' distinct characteristics. But, especially in times of uncertainty, LSTM is likely to outperform the others due to it's capability of adapting to short-term changes in the demand.
It is found that for hourly rentals in an SBRT-system, the highest explanatory power achieved with the number of train travelers leaving the corresponding train station, followed by temporal and weather-related determinants. Further, the magnitude of the correlation between the determinants and the hourly demand differs across the stations in the system. For forecasting, the performance of the methods differs across the stations and forecasted periods due to the stations' distinct characteristics. But, especially in times of uncertainty, LSTM is likely to outperform the others due to it's capability of adapting to short-term changes in the demand.
Station Crowd Redistribution and Pandemic Resilience
Access and Egress-Based Solutions to Station Crowding
Student report
(2021)
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J.K. Krom, F.L. Wilkesmann, A. Montes Rojas, Z. Zhang, R.U. Bhatt, N. van Oort, W.W. Veeneman, D. Ton, Menno de Bruyn, Mark van Hagen
The COVID-19 pandemic has had a substantial impact on public transportation. With ridership figures decreasing, it has brought a new sense of urgency to the old problem of crowding. Using a structured design approach, this paper presents the results of a project which set out to reduce crowding in Dutch train stations by
absorbing it at the network level. The design which is detailed in this paper uses advance communication of bike parking availability and price incentives on shared bikes as means to stimulate travellers to access or egress the railway system through alternative, uncrowded stations. It is determined that, theoretically, up to 7% of daily travellers in the Amsterdam region might use the system, suggesting that effects on station capacity would be substantial high adoption levels are realised. ...
absorbing it at the network level. The design which is detailed in this paper uses advance communication of bike parking availability and price incentives on shared bikes as means to stimulate travellers to access or egress the railway system through alternative, uncrowded stations. It is determined that, theoretically, up to 7% of daily travellers in the Amsterdam region might use the system, suggesting that effects on station capacity would be substantial high adoption levels are realised. ...
The COVID-19 pandemic has had a substantial impact on public transportation. With ridership figures decreasing, it has brought a new sense of urgency to the old problem of crowding. Using a structured design approach, this paper presents the results of a project which set out to reduce crowding in Dutch train stations by
absorbing it at the network level. The design which is detailed in this paper uses advance communication of bike parking availability and price incentives on shared bikes as means to stimulate travellers to access or egress the railway system through alternative, uncrowded stations. It is determined that, theoretically, up to 7% of daily travellers in the Amsterdam region might use the system, suggesting that effects on station capacity would be substantial high adoption levels are realised.
absorbing it at the network level. The design which is detailed in this paper uses advance communication of bike parking availability and price incentives on shared bikes as means to stimulate travellers to access or egress the railway system through alternative, uncrowded stations. It is determined that, theoretically, up to 7% of daily travellers in the Amsterdam region might use the system, suggesting that effects on station capacity would be substantial high adoption levels are realised.