Intelligent Transportation System in the New Normal Era
A special issue of Sustainability (ISSN 2071-1050). This special issue belongs to the section "Sustainable Transportation".
Deadline for manuscript submissions: closed (14 August 2023) | Viewed by 6195
Special Issue Editors
Interests: smart city and urban computing; deep learning; intelligent transportation systems; smart energy systems
Special Issues, Collections and Topics in MDPI journals
Interests: autonomous vehicle; edge intelligence; robotics; communications
Special Issues, Collections and Topics in MDPI journals
Interests: wireless resource optimization; V2X communications; intelligent transportation systems
Special Issues, Collections and Topics in MDPI journals
Interests: smart city; intelligent transportation systems; deep learning; optimization theory
Special Issues, Collections and Topics in MDPI journals
Special Issue Information
Dear Colleagues,
As a core use case for smart cities, transportation still poses significant challenges for metropolitan areas. Urban mobility is highly affected by traffic congestion, with significant costs in terms of lost time, productivity, and increased pollution. Alleviating traffic congestion hinges on the ability of Intelligent Transportation Systems (ITSs) to predict traffic states, estimate and optimize vehicle flows by dynamically manipulating traffic signals, and improve passenger flow via public transportation demand prediction. This requires modeling complex spatiotemporal correlations among neighboring regions, while also considering external factors such as traffic events, holidays, and weather conditions. Road traffic accidents are another major factor behind traffic congestion; in this direction, further research efforts are needed on traffic incident detection and prevention, leveraging data mined from traffic or dashboard cameras, and even social media.
Traffic data collection is at the core of ITS applications, with collection methods originally based on infrastructure sensors gradually moving towards mobile sensors found in connected vehicles. Indeed, the advent of Connected and Autonomous Vehicles (CAVs) is precipitating a wide range of novel ITS-centric business models, with autonomous fleets set to completely reshape services such as ride-hailing and transportation of goods. As such, recent research is geared towards improving the efficiency by which individual CAVs sense their environment (e.g., pedestrians, road boundaries, traffic signals), construct scene representations, and take corresponding actions. On a collective level, another critical issue is how to design effective scheduling strategies for autonomous fleets to accomplish a given set of objectives under operational constraints. An example of this is how to optimize the frequency of visiting charging stations while maintaining acceptable service time and financial costs.
By sharing their fine-granularity, high-frequency sensed data, CAVs will also play a pivotal role in improving transportation management. Importantly, the risks associated with sharing such data underline the need for privacy-aware paradigms like federated learning. In a similar vein, it is imperative to secure CAVs from adversarial attacks. Autonomous vehicles are prone to a variety of hardware attacks, as well as jamming, spoofing, sybil, or eavesdropping attacks. Malicious actors may also interfere with how machine learning models deployed on CAVs perform semantic segmentation, object classification, flow estimation, or localization. At the decision layer, examples of safety-critical processes include ego-motion estimation, path planning, and agent trajectory prediction. Compromising any part of these layers could result in severe privacy and security risks not only for the ITS but also the smart city itself.
Considering the above ITS challenges, potential topics for this special edition include but are not limited to the following:
- Machine Learning for Traffic Big Data Analysis in ITS
- Sustainable Management theory and application
- Intelligent traffic control in ITS
- Learning from Homogenous/Heterogeneous Transportation Networks
- Sensing and vehicle driving in ITS environment
- Design of AV multi-modal logistics systems
- CAV fleets for urban logistics and road safety
- The coupling between urban mobility and energy
- Intelligent Transportation planning and system optimization
- Innovative modeling, simulation, and Optimization of ITS networks
- Multi-objective optimization in transportation operations
- Other areas related to ITS
Dr. James J.Q. Yu
Dr. Shuai Wang
Dr. Bo Fan
Dr. Shiyao Zhang
Dr. Christos Markos
Guest Editors
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Keywords
- intelligent transportation system
- traffic big data analysis
- transportation management
- intelligent traffic control
- autonomous driving
- connected vehicles
- urban mobility
- transportation operation and control
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