Modeling Pilot Flight Performance on Pre-flight and Take-off Tasks with A Cognitive Architecture

Photo by Rongbing Xu (徐熔兵)

Models of cognitive architecture can be used to simulate and forecast human performance in complicated human-machine systems. The current work demonstrates a pilot model capable of performing and simulating pre-flight preparation and take-off duties. The model was developed using the Queueing Network-Adaptive Control of Thought-Rational (QN-ACTR) cognitive architecture and can be connected to flight simulators like X-Plane to create various data types such as performance and mental workload. Declarative knowledge chunks, production rules, and a collection of parameters all contribute to the model’s output. A human experiment involving pre-flight and take-off tasks was conducted to acquire the data required for the model’s development. At the moment, the model can generate flight operation behaviors that are comparable to that of human pilots.

Rongbing Xu (徐熔兵)
Rongbing Xu (徐熔兵)
Ph.D Student in Systems Design Engineering (Aeronautics)

My research interests include pilot performance, flight safety, and cognitive modelling.