"Our proposed method is better suited to analyse datasets with categorical variables (qualitative variables such as weather or security risks instead of numerical ones) related to flight delays," said Sina Khanmohammadi, lead author of the study, from Binghamton University in the US.
"We have shown that it can outperform traditional networks in terms of accuracy and training time (speed)," said Khanmohammadi.
Currently, flight delays are predicted by artificial neural network (ANN) computer models that are backfilled with delay data from previous flights.
These networks are self-learning and can be trained to look for patterns. The more variables an ANN has to process, the more categorical those variables are, and collecting historical data slows down an ANN to make flight delay predictions.
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The team, including researchers from State University of New York in the US, introduced a new multilevel input layer ANN to handle categorical variables with a simple structure to help airlines easily see the relationships between input variables (such as weather) and outputs (flight delays).
The new model could also help smaller regional airports become more efficient and able to handle more flights per day.
"Airlines can use the proposed method to provide more accurate delay information to the customers, and hence gain customer loyalty," said Khanmohammadi.
"Air traffic controllers at a busy airport can also use this information as a supplement to improve the management the airport traffic," said Khanmohammadi.
Researchers trained the new model to pick up on 14 different variables - including day of the week, origin airport, weather and security - that affected arrival times for 1,099 flights from 53 different airports to John F Kennedy airport in New York City.
The new model predicted the length of delays with about 20 per cent more accuracy than traditional models and required about 40 per cent less time to come to those conclusions.
The study was published in the journal Procedia Computer Science.