Prediction of Cognitive States During Flight Simulation Using Multimodal Psychophysiological SensingThe Commercial Aviation Safety Team found the majority of recent international commercial aviation accidents attributable to loss of control inflight involved flight crew loss of airplane state awareness (ASA), and distraction was involved in all of them. Research on attention-related human performance limiting states (AHPLS) such as channelized attention, diverted attention, startle/surprise, and confirmation bias, has been recommended in a Safety Enhancement (SE) entitled "Training for Attention Management." To accomplish the detection of such cognitive and psychophysiological states, a broad suite of sensors was implemented to simultaneously measure their physiological markers during a high fidelity flight simulation human subject study. Twenty-four pilot participants were asked to wear the sensors while they performed benchmark tasks and motion-based flight scenarios designed to induce AHPLS. Pattern classification was employed to predict the occurrence of AHPLS during flight simulation also designed to induce those states. Classifier training data were collected during performance of the benchmark tasks. Multimodal classification was performed, using pre-processed electroencephalography, galvanic skin response, electrocardiogram, and respiration signals as input features. A combination of one, some or all modalities were used. Extreme gradient boosting, random forest and two support vector machine classifiers were implemented. The best accuracy for each modality-classifier combination is reported. Results using a select set of features and using the full set of available features are presented. Further, results are presented for training one classifier with the combined features and for training multiple classifiers with features from each modality separately. Using the select set of features and combined training, multistate prediction accuracy averaged 0.64 +/- 0.14 across thirteen participants and was significantly higher than that for the separate training case. These results support the goal of demonstrating simultaneous real-time classification of multiple states using multiple sensing modalities in high fidelity flight simulators. This detection is intended to support and inform training methods under development to mitigate the loss of ASA and thus reduce accidents and incidents.
Document ID
20170001220
Acquisition Source
Langley Research Center
Document Type
Conference Paper
Authors
Harrivel, Angela R. (NASA Langley Research Center Hampton, VA, United States)
Stephens, Chad L. (NASA Langley Research Center Hampton, VA, United States)
Milletich, Robert J. (NASA Langley Research Center Hampton, VA, United States)
Heinich, Christina M. (NASA Langley Research Center Hampton, VA, United States)
Last, Mary Carolyn (Analytical Mechanics Associates, Inc. Hampton, VA, United States)
Napoli, Nicholas J. (Virginia Univ. Hampton, VA, United States)
Abraham, Nijo A. (NASA Langley Research Center Hampton, VA, United States)
Prinzel, Lawrence J. (NASA Langley Research Center Hampton, VA, United States)
Motter, Mark A. (NASA Langley Research Center Hampton, VA, United States)
Pope, Alan T. (NASA Langley Research Center Hampton, VA, United States)
Date Acquired
February 2, 2017
Publication Date
January 9, 2017
Subject Category
Air Transportation And SafetyBehavioral Sciences
Report/Patent Number
NF1676L-24736Report Number: NF1676L-24736
Meeting Information
Meeting: AIAA SciTech 2017
Location: Grapevine, TX
Country: United States
Start Date: January 9, 2017
End Date: January 13, 2017
Sponsors: American Inst. of Aeronautics and Astronautics