The SynthAIR project is designed to address critical challenges in Air Traffic Management (ATM), including data scarcity, and the need for enhanced decision-making tools. In the context of increasingly complex airspace management and rising air traffic, traditional data sources often fall short in providing the comprehensive, high-quality datasets required for effective ATM operations. SynthAIR aims to fill this gap by developing advanced AI-based models that generate realistic synthetic datasets, mirroring real-world air traffic scenarios. These datasets will support improved simulations, predictive analytics, and decision-making processes within ATM, ultimately leading to safer and more efficient air traffic operations.
The project is strategically aligned with European Union policies on digital transformation and innovation in transportation, contributing to the broader goals of enhancing aviation safety, reducing delays, and improving environmental sustainability. By providing validated synthetic data and AI tools, SynthAIR is expected to significantly impact the capacity and resilience of ATM systems, enabling more informed and timely decisions. The project's pathway to impact includes rigorous validation exercises, stakeholder engagement, and recommendations for integrating synthetic data into existing ATM frameworks.