U. Metzger and R. Parasuraman, Automation in Future Air Traffic Management: Effects of Decision Aid Reliability on Controller Performance and Mental Workload, Hum. Factors J. Hum. Factors Ergon. Soc, vol.47, pp.35-49, 2005.

I. Canso, The next generation aviation professional, 2010.

G. Borghini, L. Astolfi, G. Vecchiato, D. Mattia, and F. Babiloni, Measuring neurophysiological signals in aircraft pilots and car drivers for the assessment of mental workload, fatigue and drowsiness, Neurosci. Biobehav. Rev, vol.44, pp.58-75, 2014.

A. W. Gaillard, Comparing the concepts of mental load and stress, Ergonomics, vol.36, pp.991-1005, 1993.

, The concept of stress. The Australian and New Zealand journal of psychiatry vol, vol.19, pp.445-448, 1985.

R. Parasuraman and P. Hancock, Adaptive control of mental workload, pp.305-320, 2001.

M. J. Waller, N. Gupta, and R. C. Giambatista, Effects of Adaptive Behaviors and Shared Mental Models on Control Crew Performance, Management Science, vol.50, pp.1534-1544, 2004.

P. A. Hancock, P. A. Desmond, P. A. Desmond, . Stress, and F. Workload, , 2000.

M. J. Waller, The Timing Of Adaptive Group Responses To Nonroutine Events, Acad. Manag. J, vol.42, pp.127-137, 1999.

. Easa, Easy Access Rules for Air Traffic Management/Air Navigation Services (Regulation (EU) 2017/373) The published date represents the date when the consolidated version of the document was generated. 2 Euro-Lex, 2017.

G. Costa, Occupational stress and stress prevention in air traffic control, 1996.

H. Hind, Dynamic airspace configuration: Review and open research issues, Proceedings -GOL 2018: 4th IEEE International Conference on Logistics Operations Management 1-7, 2018.

C. Tsigos, I. Kyrou, E. Kassi, G. P. Chrousos, and . Stress, Endocrine Physiology and Pathophysiology. Endotext (MDText.com, Inc, 2000.

D. Rabellino, J. E. Boyd, M. C. Mckinnon, and R. A. Lanius, The Innate Alarm System, Stress: Physiology, Biochemistry, and Pathology, pp.197-212, 2019.

K. Kozlowska, P. Walker, L. Mclean, and P. Carrive, Fear and the Defense Cascade: Clinical Implications and Management, Harvard Review of Psychiatry, vol.23, pp.263-287, 2015.

, Scientific RepoRtS |, vol.10, p.8600, 2020.

J. Taelman, S. Vandeput, A. Spaepen, and S. Van-huffel, Influence of Mental Stress on Heart Rate and Heart Rate Variability, pp.1366-1369, 2009.

N. Hjortskov, The effect of mental stress on heart rate variability and blood pressure during computer work, Eur. J. Appl. Physiol, vol.92, pp.84-89, 2004.

S. J. Lupien, F. Maheu, M. Tu, A. Fiocco, and T. E. Schramek, The effects of stress and stress hormones on human cognition: Implications for the field of brain and cognition, Brain Cogn, vol.65, pp.209-237, 2007.

S. Koelsch, The impact of acute stress on hormones and cytokines and how their recovery is affected by music-evoked positive mood, Sci. Rep, vol.6, p.23008, 2016.

, Occupational Outlook Handbook, 2010.

R. Jou, C. Kuo, and M. Tang, A study of job stress and turnover tendency among air traffic controllers: The mediating effects of job satisfaction, Transp. Res. Part E Logist. Transp. Rev, vol.57, pp.95-104, 2013.

S. Rodrigues, Cognitive Impact and Psychophysiological Effects of Stress Using a Biomonitoring Platform, Int. J. Environ. Res. Public Health, vol.15, p.1080, 2018.

J. Langan-fox, M. J. Sankey, and J. M. Canty, Human Factors Measurement for Future Air Traffic Control Systems, Hum. Factors J. Hum. Factors Ergon. Soc, vol.51, pp.595-637, 2009.

G. Di-flumeri, Brain-Computer Interface-Based Adaptive Automation to Prevent Out-Of-The-Loop Phenomenon in Air Traffic Controllers Dealing With Highly Automated Systems, Front. Hum. Neurosci, vol.13, 2019.

P. Aricò, How Neurophysiological Measures Can be Used to Enhance the Evaluation of Remote Tower Solutions, Front. Hum. Neurosci, vol.13, 2019.

G. Borghini, A neurophysiological training evaluation metric for air traffic management, Conf. Proc?. Annu. Int. Conf. IEEE Eng. Med. Biol. Soc. IEEE Eng. Med. Biol. Soc. Annu. Conf, pp.3005-3008, 2014.
URL : https://hal.archives-ouvertes.fr/hal-00998940

M. Friedrich, M. Biermann, P. Gontar, M. Biella, and K. Bengler, The influence of task load on situation awareness and control strategy in the ATC tower environment, Cogn. Technol. Work, vol.20, pp.205-217, 2018.

G. Borghini, EEG-Based Cognitive Control Behaviour Assessment: an Eco-logical study with, Professional Air Traffic Controllers. Sci. Reports -Nat, 2017.

G. Di-flumeri, On the Use of Cognitive Neurometric Indexes in Aeronautic and Air Traffic Management Environments, vol.9359, pp.45-56, 2015.

G. Vecchiato, Investigation of the effect of EEG-BCI on the simultaneous execution of flight simulation and attentional tasks, Med. Biol. Eng. Comput, vol.54, pp.1503-1513, 2016.

G. Borghini, Preliminary concepts, Biosystems and Biorobotics, vol.18, 2017.

P. Arico, Human Factors and Neurophysiological Metrics in Air Traffic Control: a Critical Review, IEEE Rev. Biomed. Eng, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01511343

G. Borghini, P. Aricò, G. Di-flumeri, and F. Babiloni, Industrial Neuroscience in Aviation, vol.18, 2017.

P. Arico, Human-Machine Interaction Assessment by Neurophysiological Measures: A Study on Professional Air Traffic Controllers, Proceedings of the Annual International Conference of the IEEE Engineering in Medicine and Biology Society, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01843724

S. Seo, J. Lee, and E. Stress, , 2010.

Z. H. Murat, Initial investigation of brainwave synchronization after five sessions of Horizontal Rotation intervention using EEG, 5th International Colloquium on Signal Processing Its Applications, pp.350-354, 2009.

W. Boucsein, Electrodermal Activity, 2012.

N. Sharma and T. Gedeon, Objective measures, sensors and computational techniques for stress recognition and classification: A survey, Comput. Methods Programs Biomed, vol.108, pp.1287-1301, 2012.

R. R. Singh, S. Conjeti, and R. Banerjee, A comparative evaluation of neural network classifiers for stress level analysis of automotive drivers using physiological signals, Biomed. Signal Process. Control, vol.8, pp.740-754, 2013.

H. Sequeira, P. Hot, L. Silvert, and S. Delplanque, Electrical autonomic correlates of emotion, Int. J. Psychophysiol, vol.71, pp.50-56, 2009.
URL : https://hal.archives-ouvertes.fr/hal-00332658

B. H. Stamm, Measurement of stress, trauma, and adaptation, 1996.

G. M. Slavich and L. Toussaint, Using the stress and adversity inventory as a teaching tool leads to significant learning gains in two courses on stress and health, Stress Heal, vol.30, pp.343-352, 2014.

J. H. Wortmann, Psychometric analysis of the PTSD Checklist-5 (PCL-5) among treatment-seeking military service members, Psychol. Assess, vol.28, pp.1392-1403, 2016.

E. Cardeña, C. Koopman, C. Classen, L. C. Waelde, and D. Spiegel, Psychometric properties of the Stanford Acute Stress Reaction Questionnaire (SASRQ): a valid and reliable measure of acute stress, J. Trauma. Stress, vol.13, pp.719-734, 2000.

C. A. Castro, The US framework for understanding, preventing, and caring for the mental health needs of service members who served in combat in Afghanistan and Iraq: A brief review of the issues and the research, Eur. J. Psychotraumatol, vol.5, 2014.

M. E. Kaler, The World Assumptions Questionnaire: Development of a measure of the assumptive world A DISSERTATION SUBMITTED TO THE FACULTY OF THE GRADUATE SCHOOL OF THE UNIVERSITY OF MINNESOTA BY, 2009.

K. J. Smith, G. S. Everly, and G. T. Haight, Sas4: Validation of a four-item measure of worry and rumination, Adv. Account. Behav. Res, vol.15, pp.101-131, 2012.

M. Z. Baig and M. Kavakli, A Survey on Psycho-Physiological Analysis & Measurement Methods in Multimodal Systems. Multimodal Technol. Interact, vol.3, p.37, 2019.

F. Al-shargie, Mental stress assessment using simultaneous measurement of EEG and fNIRS, Biomed. Opt. Express, vol.7, pp.3882-3898, 2016.

H. Jebelli, M. M. Khalili, and S. Lee, Mobile EEG-Based Workers' Stress Recognition by Applying Deep Neural Network, Advances in Informatics and Computing in Civil and Construction Engineering, pp.173-180, 2019.

J. Minguillon, M. A. Lopez-gordo, and F. Pelayo, Stress assessment by prefrontal relative gamma, Front. Comput. Neurosci, vol.10, 2016.

A. and A. , Measuring acute stress response through physiological signals: towards a quantitative assessment of stress, Med. Biol. Eng. Comput, vol.57, pp.271-287, 2019.

A. Hernando, Inclusion of Respiratory Frequency Information in Heart Rate Variability Analysis for Stress Assessment, IEEE J. Biomed. Heal. informatics, vol.20, pp.1016-1041, 2016.

Y. S. Can, B. Arnrich, and C. Ersoy, Stress detection in daily life scenarios using smart phones and wearable sensors: A survey, J. Biomed. Inform, vol.92, p.103139, 2019.

H. Zeier, Workload and psychophysiological stress reactions in air traffic controllers, Ergonomics, vol.37, pp.525-539, 1994.

K. Dedovic, The Montreal Imaging Stress Task: Using functional imaging to investigate the effects of perceiving and processing psychosocial stress in the human brain, In Journal of Psychiatry and Neuroscience, vol.30, pp.319-325, 2005.

F. Scarpina and S. Tagini, The stroop color and word test, Frontiers in Psychology, vol.8, 2017.

K. Masood and M. A. Alghamdi, Modeling Mental Stress Using a Deep Learning Framework, IEEE Access, vol.7, pp.68446-68454, 2019.

K. Cosic, Stress Resilience Assessment Based on Physiological Features in Selection of Air Traffic Controllers, IEEE Access, vol.7, pp.41989-42005, 2019.

A. and A. , Measuring acute stress response through physiological signals: towards a quantitative assessment of stress, Med. Biol. Eng. Comput, vol.57, pp.271-287, 2019.

J. C. Christensen, J. R. Estepp, G. F. Wilson, and C. A. Russell, The effects of day-to-day variability of physiological data on operator functional state classification, Neuroimage, vol.59, pp.57-63, 2012.

S. Yang, Assessing cognitive mental workload via EEG signals and an ensemble deep learning classifier based on denoising autoencoders, Comput. Biol. Med, vol.109, pp.159-170, 2019.

K. Mandrick, V. Peysakhovich, F. Rémy, E. Lepron, and M. Causse, Neural and psychophysiological correlates of human performance under stress and high mental workload, Biol. Psychol, vol.121, pp.62-73, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01402108

M. Dundar, B. Krishnapuram, J. Bi, and R. B. Rao, Learning Classifiers When the Training Data Is Not IID. undefined, 2007.

B. Zadrozny, Learning and evaluating classifiers under sample selection bias, Twenty-first international conference on Machine learning -ICML '04, vol.114, 2004.

I. Steinwart, D. Hush, and C. Scovel, Learning from dependent observations, J. Multivar. Anal, vol.100, pp.175-194, 2009.

H. Sun and Q. Wu, Regularized least square regression with dependent samples, Adv. Comput. Math, vol.32, pp.175-189, 2010.

L. Li and C. Wan, Support vector machines with beta-mixing input sequences, Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics), vol.3971, pp.928-935, 2006.

M. Vidyasagar and G. Learning, , 2003.

H. White, Connectionist nonparametric regression: Multilayer feedforward networks can learn arbitrary mappings, Neural Networks, vol.3, pp.535-549, 1990.

Y. L. Xu and D. R. Chen, Learning rates of regularized regression for exponentially strongly mixing sequence, J. Stat. Plan. Inference, vol.138, pp.2180-2189, 2008.

S. C. Wong, A. Gatt, V. Stamatescu, and M. D. Mcdonnell, Understanding Data Augmentation for Classification: When to Warp, 2016 International Conference on Digital Image Computing: Techniques and Applications (DICTA), pp.1-6, 2016.

L. M. Hirshfield, Combining Electroencephalograph and Functional Near Infrared Spectroscopy to Explore Users' Mental Workload, pp.239-247, 2009.

Y. Roy, Deep learning-based electroencephalography analysis: a systematic review, J. Neural Eng, vol.16, p.51001, 2019.

A. Atyabi, S. P. Fitzgibbon, and D. M. Powers, Multiplication of EEG Samples through Replicating, Biasing, and Overlapping, pp.209-219, 2012.

N. V. Chawla, K. W. Bowyer, L. O. Hall, W. P. Kegelmeyer, and . Smote, Synthetic Minority Over-sampling Technique, J. Artif. Intell. Res, vol.16, pp.321-357, 2002.

J. Sauer, P. Nickel, and D. Wastell, Designing automation for complex work environments under different levels of stress, Appl. Ergon, vol.44, pp.119-127, 2013.

J. Kristiansen, Stress reactions to cognitively demanding tasks and open-plan office noise, Int. Arch. Occup. Environ. Health, vol.82, pp.631-641, 2009.

G. Di-flumeri, The Dry Revolution: Evaluation of Three Different EEG Dry Electrode Types in Terms of Signal Spectral Features, Mental States Classification and Usability, Sensors, vol.19, p.1365, 2019.

G. Di-flumeri, P. Aricò, G. Borghini, A. Colosimo, and F. Babiloni, A new regression-based method for the eye blinks artifacts correction in the EEG signal, without using any EOG channel, Conf. Proc. Annu. Int. Conf. IEEE Eng. Med. Biol. Soc. IEEE Eng. Med. Biol. Soc. Annu. Conf, 2016.

A. Delorme and S. Makeig, EEGLAB: an open source toolbox for analysis of single-trial EEG dynamics including independent component analysis, J. Neurosci. Methods, vol.134, pp.9-21, 2004.

G. Di-flumeri, EEG-based mental workload neurometric to evaluate the impact of different traffic and road conditions in real driving settings, Front. Hum. Neurosci, vol.12, 2018.

R. Elul, Gaussian behavior of the electroencephalogram: changes during performance of mental task, Science, vol.164, pp.328-331, 1969.

W. Klimesch, EEG alpha and theta oscillations reflect cognitive and memory performance: a review and analysis, Brain Res. Rev, vol.29, pp.169-195, 1999.

D. R. Bach, A head-to-head comparison of SCRalyze and Ledalab, two model-based methods for skin conductance analysis, Biol. Psychol, vol.103, pp.63-68, 2014.

M. Benedek and C. Kaernbach, A continuous measure of phasic electrodermal activity, J. Neurosci. Methods, vol.190, pp.80-91, 2010.

J. J. Braithwaite, D. Derrick, G. Watson, R. Jones, and M. Rowe, A Guide for Analysing Electrodermal Activity (EDA) & Skin Conductance Responses (SCRs) for Psychological Experiments

H. F. Posada-quintero, J. P. Florian, A. D. Orjuela-cañón, and K. H. Chon, Electrodermal Activity Is Sensitive to Cognitive Stress under Water, Front. Physiol, vol.8, p.1128, 2017.

G. V. Tcheslavski, Techniques to Assess Stationarity and Gaussianity of EEG: An Overview, Article in International Journal Bioautomotion, 2012.

G. Borghini, P. Aricò, G. Di-flumeri, N. Sciaraffa, and F. Babiloni, Correlation and Similarity between Cerebral and Non-Cerebral Electrical Activity for User's States Assessment, Sensors (Basel), vol.19, 2019.

D. Ayata, Y. Yaslan, and M. Kamasak, Emotion recognition via random forest and galvanic skin response: Comparison of time based feature sets, window sizes and wavelet approaches, Medical Technologies National Congress (TIPTEKNO), pp.1-4, 2016.

K. Li, H. Rüdiger, and T. Ziemssen, Spectral Analysis of Heart Rate Variability: Time Window Matters, Front. Neurol, vol.10, p.545, 2019.

H. G. Goovaerts, H. H. Ros, T. J. Van-den-akker, and H. Schneider, A digital QRS detector based on the principle of contour lining, IEEE Trans. Biomed. Eng, vol.23, pp.154-60, 1976.

N. V. Thakor, J. G. Webster, W. J. Tompkins, . Optimal, and . Filter, , pp.190-195, 1980.

J. Pan and W. J. Tompkins, A real-time QRS detection algorithm, IEEE Trans. Biomed. Eng, vol.32, pp.230-236, 1985.

J. T. Ramshur, Design, Evaluation, and Application of Heart Rate Variability Analysis Software (HRVAS), 2010.

T. Ruf, The Lomb-Scargle Periodogram in Biological Rhythm Research: Analysis of Incomplete and Unequally Spaced Time-Series, Biol. Rhythm Res, vol.30, pp.178-201, 1999.

G. D. Clifford and L. Tarassenko, Quantifying errors in spectral estimates of HRV due to beat replacement and resampling, IEEE Trans. Biomed. Eng, vol.52, pp.630-638, 2005.

R. P. Sloan, Effect of mental stress throughout the day on cardiac autonomic control, Biol. Psychol, vol.37, pp.89-99, 1994.

G. Borghini, P. Aricò, G. Di-flumeri, and F. Babiloni, Industrial Neuroscience in Aviation, vol.18, 2017.

D. J. Krusienski, A comparison of classification techniques for the P300 Speller, J. Neural Eng, vol.3, pp.299-305, 2006.
URL : https://hal.archives-ouvertes.fr/hal-00521054

N. H. Alsuraykh, M. L. Wilson, P. Tennent, and S. Sharples, How stress and mental workload are connected, ACM International Conference Proceeding Series, pp.371-376, 2019.

G. Borghini, A New Perspective for the Training Assessment: Machine Learning-Based Neurometric for Augmented User's Evaluation, Front. Neurosci, p.11, 2017.

B. S. Thompson and S. Discriminant, Analysis Need Not Apply here: A Guidelines Editorial. Educ. Psychol. Meas, vol.55, pp.525-534, 1995.

R. C. Luo and M. G. Kay, A tutorial on multisensor integration and fusion, Proceedings] IECON '90: 16th Annual Conference of IEEE Industrial Electronics Society, pp.707-722

R. C. King, Application of data fusion techniques and technologies for wearable health monitoring, Med. Eng. Phys, vol.42, pp.1-12, 2017.

D. L. Hall and J. Llinas, An introduction to multisensor data fusion, Proc. IEEE, vol.85, pp.6-23, 1997.

A. Colomer-granero, A Comparison of Physiological Signal Analysis Techniques and Classifiers for Automatic Emotional Evaluation of Audiovisual Contents, Front. Comput. Neurosci, vol.10, p.74, 2016.

A. Jain, K. Nandakumar, and A. Ross, Score normalization in multimodal biometric systems, Pattern Recognit, vol.38, pp.2270-2285, 2005.

A. P. Bradley, The use of the area under the ROC curve in the evaluation of machine learning algorithms, Pattern Recognit, vol.30, pp.1145-1159, 1997.

J. M. Lobo, A. Jiménez-valverde, and R. Real, AUC: a misleading measure of the performance of predictive distribution models, Glob. Ecol. Biogeogr, vol.17, pp.145-151, 2008.

W. Boucsein, Principles of Electrodermal Phenomena, Electrodermal Activity, pp.1-86, 2012.

M. Sharpe and J. Walker, Psychiatry in general medical settings, Companion to Psychiatric Studies, 2010.

P. Aricò, Passive {BCI} beyond the lab: current trends and future directions, Physiol. Meas, vol.39, pp.8-10, 2018.

G. Borghini-;-stefano, M. Bonelli, P. Ragosta, F. Tomasello, J. P. Drogoul et al., Pietro Aricò, Gianluca Di Flumeri, and Nicolina Sciaraffa: EEG recordings, data analysis, paper review. Gianluca Borghini, Gianluca Di Flumeri, and Nicolina Sciaraffa: neurophysiological stress characterisation, EEG recordings, data analysis, results evaluation, and paper writing