Mission-Aware Spatio-Temporal Deep Learning Model for UAS Instantaneous Density Prediction
This addresses the challenge of managing millions of daily UAS operations for airspace safety and efficiency, though it appears incremental as it builds on existing simulation frameworks and deep learning methods.
The paper tackles the problem of predicting instantaneous density of small unmanned aerial systems (UAS) in low-altitude airspace, using a deep learning model that incorporates historical density and future mission information, achieving a correlation score of up to 0.947 and improving prediction accuracy by over 15.2% compared to baselines in simplified scenarios.
The number of daily sUAS operations in uncontrolled low altitude airspace is expected to reach into the millions in a few years. Therefore, UAS density prediction has become an emerging and challenging problem. In this paper, a deep learning-based UAS instantaneous density prediction model is presented. The model takes two types of data as input: 1) the historical density generated from the historical data, and 2) the future sUAS mission information. The architecture of our model contains four components: Historical Density Formulation module, UAS Mission Translation module, Mission Feature Extraction module, and Density Map Projection module. The training and testing data are generated by a python based simulator which is inspired by the multi-agent air traffic resource usage simulator (MATRUS) framework. The quality of prediction is measured by the correlation score and the Area Under the Receiver Operating Characteristics (AUROC) between the predicted value and simulated value. The experimental results demonstrate outstanding performance of the deep learning-based UAS density predictor. Compared to the baseline models, for simplified traffic scenario where no-fly zones and safe distance among sUASs are not considered, our model improves the prediction accuracy by more than 15.2% and its correlation score reaches 0.947. In a more realistic scenario, where the no-fly zone avoidance and the safe distance among sUASs are maintained using A* routing algorithm, our model can still achieve 0.823 correlation score. Meanwhile, the AUROC can reach 0.951 for the hot spot prediction.