Enabling Factors and Durations Data Analytics for Dynamic Freight Parking Limits
Journal article, 2023

Freight parking operations occur amid conflicting conditions of public space scarcity, competition with other users, and the inefficient management of loading zones (LZ) at cities’ curbside. The dynamic nature of freight operations, and the static LZ provision and regulation, accentuate these conflicting conditions at specific peak times. This generates supply–demand mismatches of parking infrastructure. These mismatches have motivated the development of Smart LZ that bring together technology, parking infrastructure, and data analytics to allocate space and define dynamic duration limits based on users’ needs. Although the dynamic duration limits unlock the possibility of a responsive LZ management, there is a narrow understanding of factors and analytical tools that support their definition. Therefore, the aim of this paper is twofold. Firstly, to identify factors for enabling dynamic parking durations policies. Secondly, to assess data analytics tools that estimate freight parking durations and LZ occupation levels based on operational and locational features. Semi-structured interviews and focus group analyses showed that public space use assessment, parking demand estimation, enforcement capabilities, and data sharing strategies are the most relevant factors when defining dynamic parking limits. This paper used quantitative models to assess different analytical tools that study LZ occupation and parking durations using tracked freight parking data from the City of Vic (Spain). CatBoost outperformed other machine learning (ML) algorithms and queuing models in estimating LZ occupation and parking durations. This paper contributes to the freight parking field by understanding how data analytics support dynamic parking limits definition, enabling responsive curbside management.

curbside management

Smart Loading Zones (SLZ)

data analytics

queueing systems

freight parking

machine learning (ML)

parking durations

Author

Juan Pablo Castrellon

Chalmers, Technology Management and Economics, Service Management and Logistics

Ivan Sanchez-Diaz

Chalmers, Technology Management and Economics, Service Management and Logistics

Lokesh Kumar Kalahasthi

Chalmers, Technology Management and Economics, Service Management and Logistics

Transportation Research Record

0361-1981 (ISSN) 21694052 (eISSN)

Vol. 2677 2 219-234

Urban Freight Plattform (PLUS-G)

VREF (EP-2014-09), 2014-01-01 -- 2016-12-31.

Using data analytics for smart loading zones management in cities

VINNOVA (2019-03093), 2019-11-19 -- 2020-10-20.

Areas of Advance

Transport

Subject Categories

Transport Systems and Logistics

Infrastructure Engineering

Other Civil Engineering

DOI

10.1177/03611981221115086

More information

Latest update

7/12/2023