TY - JOUR
T1 - Using machine learning algorithms to predict the risk of small Unmanned Aircraft System violations in the National Airspace System
AU - Truong, Dothang
AU - Choi, Woojin
N1 - This research uses machine learning algorithms to predict the risk of sUAS violation incidents. * The FAA's UAS sighting data was used with a sample size of 2,088 incidents. * Gradient boosting algorithm produces the best prediction model. * The prediction model can predict the sUAS violation incidents with an accuracy of 95.7 percent.
PY - 2020/7
Y1 - 2020/7
N2 - The increasing number of small Unmanned Aircraft System (sUAS) encounters with manned aircraft or airports increases the risk of collision in the National Airspace System. The purpose of this research is to develop and test predictive models for sUAS violation incidents in NAS using machine learning. This research uses machine learning algorithms to predict the risk of sUAS violation incidents using the FAA's UAS sighting data with a sample size of 2088. Three sUAS violation types are identified: flying above 400 feet, flying with 5 miles from an airport, and flying in restricted airspace. Seven machine learning algorithms were used, including classification regression, decision tree, neural network, gradient boosting, random forest, Bayesian networks, and Memory-Based Reasoning. The results show that Gradient boosting produces the best predictive model. This model can predict the sUAS violation incidents with an accuracy of 95.7 percent. Location, distance to the airport, state, sUAs altitude, airport type, and aircraft type are the most influential predictors to the sUAS violation incidents.
AB - The increasing number of small Unmanned Aircraft System (sUAS) encounters with manned aircraft or airports increases the risk of collision in the National Airspace System. The purpose of this research is to develop and test predictive models for sUAS violation incidents in NAS using machine learning. This research uses machine learning algorithms to predict the risk of sUAS violation incidents using the FAA's UAS sighting data with a sample size of 2088. Three sUAS violation types are identified: flying above 400 feet, flying with 5 miles from an airport, and flying in restricted airspace. Seven machine learning algorithms were used, including classification regression, decision tree, neural network, gradient boosting, random forest, Bayesian networks, and Memory-Based Reasoning. The results show that Gradient boosting produces the best predictive model. This model can predict the sUAS violation incidents with an accuracy of 95.7 percent. Location, distance to the airport, state, sUAs altitude, airport type, and aircraft type are the most influential predictors to the sUAS violation incidents.
KW - Small unmanned aircraft system
KW - National airspace system
KW - Aviation safety
KW - Risk prediction
KW - Machine learning
KW - Data mining
UR - https://www.sciencedirect.com/science/article/abs/pii/S0969699719305575
U2 - 10.1016/j.jairtraman.2020.101822
DO - 10.1016/j.jairtraman.2020.101822
M3 - Article
VL - 86
JO - Journal of Air Transport Management
JF - Journal of Air Transport Management
ER -