AI RESEARCH

Synthetic Flight Data Generation Using Generative Models

arXiv CS.LG

ArXi:2604.20293v1 Announce Type: new The increasing adoption of synthetic data in aviation research offers a promising solution to data scarcity and confidentiality challenges. This study investigates the potential of generative models to produce realistic synthetic flight data and evaluates their quality through a comprehensive four-stage assessment framework. The need for synthetic flight data arises from their potential to serve as an alternative to confidential real-world records and to augment rare events in historical datasets.