Assessing the impacts of last mile delivery strategies on delivery vehicles and traffic network performance

Urban freight is growing fast, and its adverse effects bring consequences for the residents, the environment, and the liveability of cities. Although understanding its dynamics has become a priority for governments, the multiplicity of actors with conflicting objectives makes it a significant urban planning challenge. This study focuses on one type of on-street parking infrastructure for urban freight: loading zones. Although they are considered one of the most important parking strategies to control freight traffic, increasing pressure for more pedestrian space, public transport, sustainable mobility and the surge in urban deliveries have reduced their size, quantity and availability. These factors have increased the externalities generated by delivery vehicles (congestion, accidents, noise, pollution and visual intrusion), reduced the liveability of urban areas and increased the difficulty for cities to improve urban traffic. To address this problem, the authors developed a simulation-optimisation framework to evaluate urban logistics strategies that balance the courier’s (walking and cruising time) and the city’s (traffic flow variability) objectives. The methodology considers the decision-making processes of the road users, their interaction, and the variability of stochastic parameters (traffic conditions, competition, cruising, and illegal parking). To optimise the routes of delivery vehicles, the authors developed an evolutionary algorithm that minimises the trucking and walking distances and used commercial software to re-optimise mid-route decisions. The model is applied to a representation of the Melbourne central business district (CBD), a common network structure among many cities, simulating realistic conditions. Results show that is possible to devise win-win solutions that favour all parties in the transport network.

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  • English

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  • Accession Number: 01863802
  • Record Type: Publication
  • Files: TRIS
  • Created Date: Nov 16 2022 11:36AM