Efficient and Effective 4D Trajectory Data Cleansing
Article
Figures
Metrics
Preview PDF
Reference
Related
Cited by
Materials
Abstract:
As the rapid development of aviation industry and newly emerging crowd-sourcing projects such as Flightradar24 and FlightAware, large amount of air traffic data, particularly four-dimension (4D) trajectory data, have become available for the public. In order to guarantee the accuracy and reliability of results, data cleansing is the first step in analyzing 4D trajectory data, including error identification and mitigation. Data cleansing techniques for the 4D trajectory data are investigated. Back propagation (BP) neural network algorithm is applied to repair errors. Newton interpolation method is used to obtain even-spaced trajectory samples over a uniform distribution of each flight’s 4D trajectory data. Furthermore, a new method is proposed to compress data while maintaining the intrinsic characteristics of the trajectories. Density-based spatial clustering of applications with noise (DBSCAN) is applied to identify remaining outliers of sample points. Experiments are performed on a data set of one-day 4D trajectory data over Europe. The results show that the proposed method can achieve more efficient and effective results than the existing approaches. The work contributes to the first step of data preprocessing and lays foundation for further downstream 4D trajectory analysis.
TAN Xin, SUN Xiaoqian, ZHANG Chunxiao, WANDELT Sebastian. Efficient and Effective 4D Trajectory Data Cleansing[J]. Transactions of Nanjing University of Aeronautics & Astronautics,2020,37(2):288-299