Improving Airline Pilots’ Visual Scanning and Manual Flight Performance through Training on Skilled Eye Gaze Strategies
Abstract
:1. Introduction
1.1. Manual Flight Control and Visual Scanning Strategies
1.2. Visual Scanning Strategies and Flight Experience
1.3. Showing Visual Scanning Strategies Examples from Highly Accurate Pilots to Improve Monitoring Skills
1.4. Objectives and Hypotheses
2. Method
2.1. Ethics Statement
2.2. Participants of the Pre-Training Session
2.3. Participants of the Post-Training Session
2.4. Scenarios and Flight Performance Measures
2.4.1. Scenario and Flight Performance Measures of the Pre-Training Session
2.4.2. Scenario and Flight Performance Measures of the Post-Training Session
2.5. Eye-Tracking Measurements
2.5.1. Pre-Training Session
- “A–B”: 4 occurrences (including “B–A” transitions);
- “A–C”: 1 occurrence;
- “A–B–A”: 2 occurrences (including “B–A–B”);
- “B–A–C”: 1 occurrence
2.5.2. Post-Training Session
2.6. Training Program
2.6.1. The Experimental Group
- A bar plot with their flight performance during the approach (lateral and vertical deviations, speed, height above the runway threshold, and touchdown distance), see Figure S1;
- A first-person point of view, eye-tracking video (the raw video generated by the eye-tracking system, with a moving circle showing the current fixation point) showing their own visual scanning performing the approach (duration 2.5 min—between 2500 ft and touchdown), see Figure S2;
- A bar plot showing the percentages of their own dwell times on each of the 9 cockpit AOIs during the approach, see Figure S3.
- On the previously mentioned bar plot, the percentage of dwell times on each of the 9 cockpit AOIs of the most accurate pilots and the efficient gaze allocation interval, see Figure S3;
- A first-person point-of-view eye-tracking video, showing eye fixations during the approach from one of the most accurate pilots (one who did not belong to the experimental group to avoid showing one of the participants their own visual circuit) performing the approach, see Figure 4 (top) and Figure S5.
2.6.2. The Control Group
- A generic video about aircraft attitude changes maneuvers and associated visual scanning strategies used during pilots’ initial training (duration 3.5 min), see Figure S6;
- A first-person point-of-view video of an airline pilot who did not participate in the experiment, performing a standard approach without any indication of the gaze fixation point (same point of view as the eye-tracking video, made using a head-mounted GoPro camera, duration 2.5 min), see Figure 4 (bottom) and Figure S7.
3. Results
3.1. Results of the Pre-Training Session
3.1.1. Flight Performance and Categorization of the Performance Profiles
3.1.2. Defining an Efficient Visual Scanning Strategy
- Being within an interval spanning over the mean percentage of accurate pilot dwell times on each instrument (AOI) plus/minus two standard deviations (outliers’ method), labeled efficient dwell times interval. Percentages of dwell times outside this interval were considered as sub-optimal visual scanning strategies;
- Performing comparable visual scanning patterns to the most accurate pilots, in particular, their four most frequent visual scanning patterns labeled as ‘efficient visual scanning patterns’.
3.1.3. Overall Average Dwell Time on AOIs and Pilots’ Performance Profile
3.1.4. Percentage of Dwell Times on the Instruments and Pilots’ Performance Profile
3.1.5. Visual Scanning Patterns and Pilots’ Performance Profile
- Speed indicator—attitude indicator—speed indicator (visual scanning pattern A, otherwise labeled speed, includes three AOIs);
- AVSVD—attitude indicator—AVSVD (visual scanning pattern B, otherwise labeled vertical deviation, includes three AOIs);
- HLD—attitude indicator—HLD (visual scanning pattern C, otherwise labeled lateral deviation, includes three AOIs);
- Speed indicator—attitude indicator—ECAM (displaying the engine thrust)—attitude indicator—HLD—attitude indicator—AVSVD—attitude indicator (visual scanning pattern D, otherwise labeled general attitude, includes eight AOIs).
3.2. Results of the Post-Training Session
3.2.1. Flight Performance
3.2.2. Overall Average Dwell Times on AOIs and Training Group
3.2.3. Percentage of Dwell Times on the Instruments and Training Group
3.2.4. Visual Scanning Patterns and Training Group
4. Discussion
4.1. Flight Performances
4.2. Visual Scanning of the Instruments
4.3. Limitations and Remarks
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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1 | Lateral deviation pattern (C) |
Visual Scanning Patterns | Pilots’ Performance Profiles | ||
---|---|---|---|
Unstabilized Pilots | Standard Pilots | Most Accurate Pilots | |
Speed pattern (A) | 4.9% (3.0%) | 8.2% (2.6%) | 13.2% (3.1%) |
Vertical deviation pattern (B) | 7.3% (5.3%) | 8.6% (2.9%) | 12.8% (2.3%) |
Lateral deviation pattern (C) | 4.7% (3.6%) | 10.5% (3.0%) | 13.4% (3.5%) |
General attitude pattern (D) | 3.0% (2.0%) | 7.1% (2.5%) | 13.7% (2.5%) |
Other patterns | 80.1% (5.9%) | 66.2% (6.8%) | 45.3% (6.3%) |
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Lefrançois, O.; Matton, N.; Causse, M. Improving Airline Pilots’ Visual Scanning and Manual Flight Performance through Training on Skilled Eye Gaze Strategies. Safety 2021, 7, 70. https://doi.org/10.3390/safety7040070
Lefrançois O, Matton N, Causse M. Improving Airline Pilots’ Visual Scanning and Manual Flight Performance through Training on Skilled Eye Gaze Strategies. Safety. 2021; 7(4):70. https://doi.org/10.3390/safety7040070
Chicago/Turabian StyleLefrançois, Olivier, Nadine Matton, and Mickaël Causse. 2021. "Improving Airline Pilots’ Visual Scanning and Manual Flight Performance through Training on Skilled Eye Gaze Strategies" Safety 7, no. 4: 70. https://doi.org/10.3390/safety7040070
APA StyleLefrançois, O., Matton, N., & Causse, M. (2021). Improving Airline Pilots’ Visual Scanning and Manual Flight Performance through Training on Skilled Eye Gaze Strategies. Safety, 7(4), 70. https://doi.org/10.3390/safety7040070