Modern transport systems face growing challenges due to urbanization, increasing mobility demands, and sustainability concerns. Intelligent multi-modal transport, combining road, rail, cycling, and walking, enhances mobility but struggles with congestion, security risks, lack of infrastructure support and adaptability. The RE-ROUTE project explores potential solutions using AI, edge computing, and decentralized decision-making to improve transport resilience, security, and efficiency.
Overall Objectives of the project includes:
Enhancing transport resilience by analyzing multi-source data to identify vulnerabilities and optimize safety, security, and accessibility.
Developing an adaptive multi-modal intelligent transport system architecture (M-ITS) with real-time optimization to minimize service disruptions.
Creating a secure, edge-based data-sharing platform for decentralized, privacy-preserving transport data exchange.
Implementing a federated, decentralized decision-making model for real-time learning and network-edge adaptability.
Validating project outcomes through real-world case studies to provide data-driven policy recommendations.
RE-ROUTE will make the following impacts:
Scientific impact: Advancing AI-driven transport resilience, federated learning, and cybersecurity with research published in leading journals.
Technological impact: Developing secure, intelligent transport networks with interoperable, real-time decision-making.
Economic impact: Reducing congestion, infrastructure costs, and operational inefficiencies and improving policymaker decision-making.
Societal impact: Enhancing accessibility, sustainability, and digital security, ensuring public trust in transport networks.
To achieve its objectives, RE-ROUTE takes an interdisciplinary approach, integrating computer science, engineering, social sciences, cybersecurity, and economics to create practical, inclusive, and secure transport solutions. User behavior analysis, cybersecurity frameworks, and economic models support efficient, sustainable, and policy-driven mobility planning.