Flight Data
Flight data analysis is crucial for improving aviation safety, efficiency, and operational insights. Current research focuses on leveraging machine learning, particularly deep learning architectures like convolutional neural networks (CNNs) and recurrent neural networks (RNNs, such as LSTMs), and hybrid models combining these with traditional methods, to predict flight delays, detect anomalies, and even forecast potential accidents. These advancements are enabling more accurate predictive maintenance, improved situational awareness (e.g., violence detection at airports), and enhanced understanding of complex flight dynamics, ultimately contributing to safer and more efficient air travel.
Papers
A big data intelligence marketplace and secure analytics experimentation platform for the aviation industry
Dimitrios Miltiadou, Stamatis Pitsios, Dimitrios Spyropoulos, Dimitrios Alexandrou, Fenareti Lampathaki, Domenico Messina, Konstantinos Perakis
A Secure Experimentation Sandbox for the design and execution of trusted and secure analytics in the aviation domain
Dimitrios Miltiadou, Stamatis Pitsios, Dimitrios Spyropoulos, Dimitrios Alexandrou, Fenareti Lampathaki, Domenico Messina, Konstantinos Perakis