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Energy-efficient multimodal mobility networks in transportation digital twins: Strategies and optimization

by Wan Li, Boyu Wang, Ruixiao Sun, Li Ai, Zhenhong Lin
Publication Type
Journal
Journal Name
Energy
Publication Date
Page Number
134587
Volume
318

The study proposes a comprehensive Transportation Mobility (TransitMo) framework covering conceptual design, model formulation, optimization, simulation, and impact analysis of the transportation mobility system. TransitMo is composed of a transportation digital twin developed in Simulation of Urban MObility (SUMO) and an Intelligent Traffic Management and Control Center (ITMCC) that identifies the best ways to improve the movement of people within urban areas using various modes of transportation. This study encompasses advanced modeling techniques, algorithms, and strategic testing to optimize energy efficiency and mobility in a multimodal shared mobility network. TransitMo’s practical applications are exemplified through a city-scaled simulation network in Chattanooga, TN, employing demographic data to analyze historical traffic patterns and forecast future demands. Central to this methodology are three models: the User Preference Model (UP), the Energy Consumption Model (EC), and the System Optimization Model (SO). These models work in concert to iteratively devise the optimal travel incentives and minimize the total system cost in a real-time manner. Test results verified that the proposed adaptive incentive program and optimized bus scheduling can improve network performance by increasing public transit ridership.