KHULBE, Devashish, Chaogui KANG, Satish UKKUSURI and Stanislav SOBOLEVSKY. A Probabilistic Simulation Framework to Assess the Impacts of Ridesharing and Congestion Charging in New York City. Data Science for Transportation. Springer, 2023, vol. 5, No 2, p. 1-17. ISSN 2948-135X. Available from: https://dx.doi.org/10.1007/s42421-023-00066-x.
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Basic information
Original name A Probabilistic Simulation Framework to Assess the Impacts of Ridesharing and Congestion Charging in New York City
Authors KHULBE, Devashish (356 India, belonging to the institution), Chaogui KANG, Satish UKKUSURI and Stanislav SOBOLEVSKY (112 Belarus, belonging to the institution).
Edition Data Science for Transportation, Springer, 2023, 2948-135X.
Other information
Original language English
Type of outcome Article in a journal
Field of Study 10103 Statistics and probability
Country of publisher Singapore
Confidentiality degree is not subject to a state or trade secret
WWW URL
RIV identification code RIV/00216224:14310/23:00133758
Organization unit Faculty of Science
Doi http://dx.doi.org/10.1007/s42421-023-00066-x
Keywords in English Commute behavior; Transportation planning; Mode choice; Mode shift; Ridesharing; Congestion surcharge
Tags rivok
Tags International impact, Reviewed
Changed by Changed by: Mgr. Marie Šípková, DiS., učo 437722. Changed: 4/4/2024 08:46.
Abstract
Understanding the holistic city-wide impact of planned transportation solutions and interventions is critical for decision making, but challenged by the complexity of the urban systems, as well as the quality of the available urban data. The cornerstone for such impact assessments is estimating the transportation mode-shift resulting from the intervention. Although transportation planning has well-established models for the mode-choice assessment such as a nested multinomial logit model, an individual choice simulation could be better suited for addressing the mode-shift allowing us to consistently account for individual preferences. Moreover, the available ground-truth data on the actual transportation choices is often incomplete or inconsistent. The present paper addresses those challenges by offering an individual mode-choice and mode-shift simulation model and the Bayesian inference framework, and demonstrates how impact assessments can be performed in the events of incomplete mobility data. It accounts for uncertainties in the data as well as the model estimate and translates them into uncertainties of the resulting mode-shift and the impacts. The framework is evaluated on the two intervention cases: introducing ride-sharing for-hire-vehicles in NYC as well the recent introduction of the Manhattan Congestion surcharge. It can be used to assess mode-shift and quantify the resulting economic, social and environmental implications for any urban transportation solutions and policies considered by decision-makers or transportation companies.
Links
EF16_019/0000822, research and development projectName: Centrum excelence pro kyberkriminalitu, kyberbezpečnost a ochranu kritických informačních infrastruktur
MUNI/J/0008/2021, interní kód MUName: Digital City
Investor: Masaryk University, MASH JUNIOR - MUNI Award In Science and Humanities JUNIOR
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