Aim and Scope

The Journal of Transportation Analytics aims to advance knowledge and practice in transportation systems through the application of data-driven, analytical, and computational methodologies. The journal focuses on the development and application of innovative approaches that enhance decision-making, efficiency, sustainability, and resilience in transportation and mobility systems.

‎‎The scope of the journal encompasses both theoretical and applied research that integrates transportation science with methodologies from operations research, data analytics, artificial intelligence, machine learning, and statistics. ‎‎The journal encourages interdisciplinary contributions addressing a wide range of topics, including but not limited to:

 

‎‎Transportation analytics and data-driven modeling

‎Optimization and simulation of transportation systems

‎Intelligent transportation systems and smart mobility

‎Urban transportation planning and traffic analysis

‎Freight transportation, logistics, and supply chain analytics

‎Sustainable and green transportation systems

‎Mobility-as-a-Service (MaaS) and emerging mobility solutions

‎Big data and AI applications in transportation

‎Transportation network design and resilience analysis

‎Demand forecasting and behavioral modeling in transport systems

 

‎‎The journal particularly welcomes studies that demonstrate methodological innovation, real-world applicability, and measurable impact on transportation systems. Contributions that bridge the gap between theory and practice, or that provide actionable insights for policymakers and industry stakeholders, are strongly encouraged.