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A Deep Graph-Embedded LSTM Neural Network Approach for Airport Delay Prediction
2021
Journal of Advanced Transportation
Due to the strong propagation causality of delays between airports, this paper proposes a delay prediction model based on a deep graph neural network to study delay prediction from the perspective of an airport network. We regard airports as nodes of a graph network and use a directed graph network to construct airports' relationship. For adjacent airports, weights of edges are measured by the spherical distance between them, while the number of flight pairs between them is utilized for
doi:10.1155/2021/6638130
fatcat:l37dvprcqvgjlawldhjwqutktu