This paper presents a machine learning algorithm
trained to predict unstable approach events. Predictive modeling
for unstable approaches (UA) forecasting needs a precursors
analysis to determine the most important indicators (features)
of aircraft instability. However, since the definition of aircraft
instability is entirely dependent on the airline, these precursors
might change according to the applied criteria. Most of the times,
these precursors are related to the operation, ATC instructions,
nearby weather conditions or even specific procedures for the
selected airport or runway. We approached UA predictive analysis
scenario from two different perspectives aligned with the
same objective. On one hand, we performed the precursor analysis
and binary classification using machine learning ensemble
methodologies (boosting frameworks). On the other, we analyzed
the FDM temporal series with Deep Learning techniques, using
neural networks with Long Short Term Memory (LSTM) layers
to binary classify if an unstable approach was about to happen
and to detect unseen hazards or anomalies present in approach
procedures.
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This paper presents a machine learning algorithm
trained to predict unstable approach events. Predictive modeling
for unstable approaches (UA) forecasting needs a precursors
analysis to determine the most important indicators (features)
of aircraft instability. However, since the definition of aircraft
instability is entirely dependent on the airline, these precursors
might change according to the applied criteria. Most of the times,
these precursors are related to the operation, ATC inst...
»