Have a personal or library account? Click to login

Automatic Landing Control of Aircraft Based on Cognitive Load Theory and DDPG

By:
Open Access
|Mar 2024

References

  1. Tesch M. Air Disaster[M]. Fyshwick: Aerospace Publication, 1994.
  2. Shappell S A, Wiegmann D A. Applying Reason: The human factors analysis and classification system [J]. Human Factors and Aerospace Safety, 2001, 1:59–86.
  3. Ullsperger P, Freude G, Erdmann U. Auditory probe sensitivity to mental workload changes--an event-related potential study[J]. International Journal of Psychophysiology, 2001, 40(3): 201–209.
  4. Sweller J. Cognitive load theory [J]. Psychology of learning and motivation, 2011,55:37–76.
  5. Blessinger K, Comeaux D. User experience with a new public interface for an integrated library system [J]. Information Technology and Libraries, 2020, 39(1).
  6. Gong Deying. Optimization management of cognitive load in multimedia learning [D]. Chongqing: Southwest University, 2009 (in Chinese).
  7. Chen S, Epps J. Using task-induced pupil diameter and blink rate to infer cognitive load [J]. Human–Computer Interaction, 2014, 29(4): 390–413.
  8. Braun M, Broy N, Pfleging B, et al. Visualizing natural language interaction for conversational in-vehicle information systems to minimize driver distraction [J]. Journal on Multimodal User Interfaces, 2019, 13(2): 71–88.
  9. WU Lei, SU Yao, Sheng Qianqian, et al. Influence of Augmented Reality Assembly Indicators Symbol Based on Eye Tracking [J]. Packaging Engineering, 2022, 43(04):45-51+70 (in Chinese).
  10. Biswas P, Dutt V, Langdon P. Comparing ocular parameters for cognitive load measurement in eye-gaze-controlled interfaces for automotive and desktop computing environments [J]. International Journal of Human-Computer Interaction, 2016, 32(1): 23–38.
  11. Baumeister J, Ssin S Y, Elsayed N A M, et al. Cognitive cost of using augmented reality displays [J]. IEEE transactions on visualization and computer graphics, 2017, 23(11): 2378–2388.
  12. Tervonen J, Pettersson K, Mäntyjärvi J. Ultra-short window length and feature importance analysis for cognitive load detection from wearable sensors [J]. Electronics, 2021, 10(5): 613.
  13. Wang Di Research on Pilot Psychological State Evaluation Method Based on Physiological Signals [D], [Master’s Thesis] Harbin: Harbin Institute of Technology, 2018 (in Chinese).
  14. Schewe F, Vollrath M. Ecological interface design effectively reduces cognitive workload–The example of HMIs for speed control [J]. Transportation research part F: traffic psychology and behaviour, 2020, 72:155–170.
  15. Hwang G-J, Hsu T-C, Hsieh Y-H. Impacts of different smartphone caption/subtitle mechanisms on English listening performance and perceptions of students with different learning styles [J]. International Journal of Human–Computer Interaction, 2019, 35(4-5):333–344.
  16. Yan S, Tran C C, Chen Y, et al. Effect of user interface layout on the operators’ mental workload in emergency operating procedures in nuclear power plants [J]. Nuclear Engineering and Design, 2017, 322:266–276.
  17. kramer A F. Physiological metrics of mental workload: A review of recent progress [M]. London: Multiple-task performance, 2020:279–328.
  18. Liu Xin. Measuring cognitive load levels based on eye movement data [D], [Master’s thesis]. Chongqing: Southwest University, 2017 (in Chinese).
  19. Fan Lin, Wang Shuyi, Wang Yuqi, et al. Ergonomics and Cognitive Load of AR Guided Puncture Training System Based on fNIRS [J]. Packaging Engineering, 2021,42(20):146-151 (in Chinese).
  20. Mickael C, Fabre E, Giraudet L, et al. EEG/ERP as a Measure of Mental Workload in a Simple Piloting Task [J]. Procedia Manufacturing, 2015, 3(7): 5230–5236.
Language: English
Page range: 68 - 77
Published on: Mar 28, 2024
Published by: Sciendo
In partnership with: Paradigm Publishing Services
Publication frequency: 4 times per year

© 2024 Chao Wang, Changyuan Wang, published by Sciendo
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 License.