I. C. Icao-), Manual of radiotelephony, International Civil Aviation Organization (ICAO), 2007.

D. C. Of-washington, R. Transportation, U. M. Board, and F. J. Friedman-berg, Ahlstro 5) Subjective workload ratings and eye Ahmed studies, Recovering time-varying networks of dependencies in social and biological Sciences, pp.11878-11883, 2009.

P. Averty and S. Athenes, Evaluating a new index of mental workload in real ATC situation using psychophysiological measures, Proceedings. The 21st Digital Avionics Systems Conference, 2002.
DOI : 10.1109/DASC.2002.1052916

B. Baart and D. , An Evaluation of Dynamic Density Metrics Using RAMSThe origin of bursts and heavy tails in human dynamics, Nature, vol.435, issue.7039, pp.207-211, 2001.

G. Bedny, D. Meister, O. N. , and B. T. , The Russian Theory of Activity: Current Applications to Design and LearningNoisy Clockwork: Time Series Analysis of Population Fluctuations in Anima Bjørnst ls, Science, vol.293, issue.5530, pp.638-643, 1997.

M. Bloem and C. Brinton, A Robust Approach for Predicting Dynamic Density, 9th AIAA Aviation Technology, Integration, and Operations Conference (ATIO), 2009.
DOI : 10.2514/6.2009-6960

M. Bolgorian and R. Raei, A multifractal detrended fluctuation analysis of trading behavior of individual and institutional traders in Tehran stock market Physica A: Statistical Mechanics and its, 2011.

D. Brockmann and L. Hufnagel, The scaling laws of human travel, Nature, vol.6, issue.7075, pp.142-439, 2006.
DOI : 10.1038/nature04292

D. S. Bruce and N. E. Freeberg, An explanatory model for influences of air traffic control task parameters on controller work pressure, Proceedings of the Busing AT, 1993.

H. G. , R. J. Hansman-busing, H. G. , R. J. Hansman-m, and P. Zhou, Air Traffic Control Operating Modes and the Management of Complexity Air Traffic Control Operating Modes and the Management of ComplexityDiffusion entropy analysis on the stride interval fluctuation of human gaitDuality between Time Series and NetworksTime required Cardos for transmission of time-critical air traffic control messages in an en route environment, Physica A: Stat Campa PLoS ONE International Journal of Aviation Psychology, vol.375, issue.7, pp.687-692, 1993.

K. M. Cardosi, Time Required for Transmission of Time-Critical Air Traffic Control Messages in an En Route Environment, The International Journal of Aviation Psychology, vol.3, issue.4, pp.303-313, 1993.
DOI : 10.1207/s15327108ijap0304_4

G. Chatterji and B. Sridhar, Measures for air traffic controller workload prediction, 1st AIAA, Aircraft, Technology Integration, and Operations Forum, 2001.
DOI : 10.2514/6.2001-5242

G. B. Chatterji, B. Sridhar.-k, G. , and E. Oh, Measures for air traffic controller workload prediction Proceedings of the First AIAA Aircraft Technology, Integration, and Chechi motifs reveal principles of timing in Operations ForumActivity transcriptional control of the yeast metabolic network, Nat Biotech, vol.26, issue.11, pp.1251-1259, 2001.

J. P. Clarke and N. Durand, Determining the Value of Information for Minimizing Controller Taskload: A Graph-Based Approach, 9th USA/Europe Air Traffic Management Research and Development Seminar. S. Saunders-Hodge and V. Duong, 2011.
URL : https://hal.archives-ouvertes.fr/hal-01293609

A. Clauset and C. R. Shalizi, Power-law distributions in empirical dataCommon functional principal components analysis: A new approach to analyzing human movement data, SIAM Review Human Movement Science In Press, vol.51, issue.4, pp.661-703, 2009.

V. Colizza and A. Barrat, Predictability and epidemic pathways in global -143 outbreaks of infectious diseases: the SARS case studyAuto Collet, nomic nervous system and subjective ratings of strain in air-traffic control, BMC Medicine Applied Ergonomics, vol.5, issue.401, pp.23-32, 2007.

K. and B. F. Gore, Free flight and the c Corker ontext of control: Experiments and modeling to determine the impact of distributed air-ground air traffic management on safety and procedure, 2000.

S. Management, R. Seminar, I. Napoli, K. M. , and B. F. Gore, Free flight and the context Experiments and modeling to determine the impact of distributed air-ground air traffic management on safety and procedures, 2000.

G. J. Couluris and D. K. Schmidt, Air traffic control jurisdictions of responsibility and airspace structure, 1973 IEEE Conference on Decision and Control including the 12th Symposium on Adaptive Processes, 1973.
DOI : 10.1109/CDC.1973.269242

M. Cox, Task analysis of selected operating positions within UK Air Traffic Control, 1994.

M. L. Cummings and C. Tsonis, Partitioning Complexity in Air Traffic Management Tasks, The International Journal of Aviation Psychology, vol.1, issue.3, 2006.
DOI : 10.1016/S1364-6613(00)01455-8

. Dasari, C. D. Indicators-of-295, and . Crowe, EEG Pattern Analysis for Physiolog Mental Fatigue in Simulated Air Traffic Control Tasks, Proceedings of the Human Factors and Ergonomics Society Annual Meeting, pp.205-209, 2010.

M. A. De-menezes and A. L. Barabási, Fluctuations in Network Dynamics, Physical Review Letters, vol.92, issue.2, 2004.
DOI : 10.1103/PhysRevLett.92.028701

C. G. Davis and J. W. Danaher, The influence of selected sector characteristics upon ARTCC controller activities A New Air Traffic Complexi Delaha ty Metric Based on Dynamical System Modelization. 21st Digital Avionics Systems Conference Air traffic complexity based on dynamical Delaha systemsAir traffic com Delaha plexity map based on non linear dynamical systems, 49th IEEE Conference on Decision and Control (CDC), 1963.

I. , L. L. , and M. Marchitto, Approximation of on-line mental Di Stas workload index in ATC simulated multitasksA Djokic, ir traffic control complexity as workload driver, Journal of Air Transport Management Transportation Research Part C: Emerging Technologies, vol.16, issue.186, pp.330-333, 2010.

E. , R. V. , and J. F. Donges, Recurrencebased time series analysis by DONN -144 means of complex network methods, International Journal of Bifurcation and Chaos (IJBC), vol.21, issue.4, pp.1019-1046, 2010.

Z. Eisler and I. Bartos, Fluctuation scaling in complex systems: Taylor's law and beyond1, Advances in Physics, vol.43, issue.1, pp.89-142, 2008.
DOI : 10.1098/rstb.1994.0114

Z. Eisler and J. Kertész, Liquidity and the multiscaling properties of the volume traded on the stock market, Europhysics Letters (EPL), vol.77, issue.2, p.28001, 2007.
DOI : 10.1209/0295-5075/77/28001

M. R. Endsley and M. D. Rodgers, Situation awareness information requirements for en route air traffic controlOn random graphs, Publicati, vol.6, p.8, 1959.

A. Fronczak and P. Fronczak, Origins of Taylor???s power law for fluctuation scaling in complex systems, Physical Review E, vol.81, issue.6, p.66112, 2010.
DOI : 10.1103/PhysRevE.81.066112

A. Gautreau and A. Barrat, Microdynamics in stationary complex networks, Proceedings of the National Academy of Sciences, vol.106, issue.22, pp.8847-8852, 2009.
DOI : 10.1073/pnas.0811113106

URL : https://hal.archives-ouvertes.fr/hal-00337925

V. Gawron and J. Ball, Intercorrelations among physiological and subjective measures of workload, 1989.

M. C. Gonzalez and C. A. Hidalgo, Understanding individual human mobility patternsStatistical p Gopikr roperties of share volume traded in financial marketsNoise and determinism in synchronized sheep dynamics, Nature Physical Review E Nature Grenfe, vol.453, issue.3946694, pp.779-782, 1998.

J. Guckenheimer and J. M. Ottino, Foundations for complex systems research in the physical sciences and engineering. Report from an NSF Workshop, 2008.

X. Han and Q. Hao, Origin of the scaling law in human mobility: Hierarchy of traffic systems, Physical Review E, vol.83, issue.3, p.36117, 2011.
DOI : 10.1103/PhysRevE.83.036117

Y. Haraguchi and Y. Shimada, Transformation from Complex Networks to Time Series Using Classical Multidimensional Scaling, Artificial Neural Networks ? ICANN 2009. C. Alippi, M. Polycarpou, C. Panayiotou and G, 2009.
DOI : 10.1140/epjst/e2008-00830-8

U. and M. Paczuski, Correlated dynamics in human prin Physica A: Statistical Mechanics and its Applications, pp.329-336, 2006.

J. M. Hausdorff and P. L. Purdon, Fractal dynamics of human gait: stability of long-range correlations in stride interval fluctuationsFitting Wald and ex-Wald distributions to respons Heathc e time data: An example using functions for the S-PLUS package Behavior Research Methods, Journal of Applied Physiology, vol.80, issue.5, pp.1448-1457145, 1996.

B. Hilburn, Cognitive Complexity in Air Traffic Control ?A Literature Review. Brétigny-sur, 2004.

J. Cambridge, I. J. , and R. J. Hansman, The Impact of Structur Histon, e on Cognitive Complexity in Air Traffic Histon, itive Complexity Regulation Proceedings of the Human Factors and Control, Air Traffic Controller Operating Modes and Cogn Ergonomics Society Annual Meeting, vol.55, issue.1, pp.345-349, 2002.

J. M. , R. J. Hansman, and . Jr, Mitigating complexity Histon, in air traffic control, 2008.

H. Cambridge, I. J. , and R. J. Hansman, Structural Considerations and Cognitive Complexity in Air Traffic ControlTemporal Networks, 21st Digital Avionics Systems Conference, 2002.

J. S. and D. E. Blumenfeld, Hunter 974) Modeling Air Traffic Performance Hunter Measures. Volume II. Initial Data Analyses and Simulations, Princeton Univ N J Dept of Civil and Geological Engineering: 485 Modeling Air Traffic Performance Measures. Volume I. Message Element Analyses and Dictionaries, 1998.

J. S. Hunter and D. Hsu, Applications of the simulation model for air traffic control communications, Atlantic City, 1977.

M. W. Hurst and R. M. Rose, Objective Job Difficulty, Behavioural Response, and Sector Characteristics in Air Route Traffic Control Centres???, Ergonomics, vol.23, issue.9, pp.697-708, 1978.
DOI : 10.1080/00140137108931277

M. Jepma and E. Wagenmakers, Temporal expectation and information processing: A model-based analysis, Cognition, vol.122, issue.3, pp.426-441, 2012.
DOI : 10.1016/j.cognition.2011.11.014

K. W. and D. Van-damm-kallus, Model of the cognitive aspects of air traffic ffic control, 1997.

K. W. Kallus and D. Van-damme, Integrated job and task analysis of air traffic controllers: Phase 2. Task analysis of en-route controllers. European Air Tra Management ProgrammeMultifractal de Kantelh trended fluctuation -146 analysis of nonstationary time series, Physica A: Statistical Mechanics and its Applications, pp.1-4, 1999.

B. and R. Scaife, Kirwan Investigating complexity factors in UK air traffic management, Human Factors and Aerospace Safety, vol.1, pp.125-144, 2001.

A. and M. D. Rogers, Simplied Dynamic Density: a Metric for Dynamic Airspace Conguration and NEXTGEN Analysis, Dynamic Density: Measuring and Predicting Sector Complex Kopard ity. AIAA/IEEE Digital Avionics Systems Conference, 2002.

P. Kopardekar, S. Magyarits, P. , and J. Rhodes, Measurement and prediction of dynamic density. CA. 5th USA Relationship of Maximum Manageable Air Kopard Traffic Control Complexity and Sector Capacity, Europe ATM R&D Seminar. Budapest, Hungary. ekar, 2003.

M. Kupfer and T. Callantine, Controller Support Tools for Schedule-Based Council of the Aeronautical Sciences, Complexity in Air Traffic Co Study. Part 1. Complexity Factors. Atlantic City International Airport, NJ 08405, 2003.

. S. Terminal-area-operations-seminar, V. Saunders-hodge, . Duong, G. Berlin, L. et al., From time series to comple Lacasa x networks: The visibility graph, Proceedings of the National Academy of Sciences, vol.105, issue.13, pp.4972-4975, 2008.

J. and V. Battise, Issues for Near-Term Implementation of Trajectory Based Operations 9th USA Lacher /Europe Air Traffic Management Research and Development Seminar. S. Saunders-Hodge and V. Duong, 2011.

P. F. and R. M. Bartlett, Artificial neural Lamb, networks for analyzing interlimb coordination: The golf chip shot, Human Movement Science, 2011.

A. Lancichinetti and F. Radicchi, Finding Statistically Significant Communities in Networks, PLoS ONE, vol.81, issue.4, p.18961, 2011.
DOI : 10.1371/journal.pone.0018961.s001

I. V. Laudeman and S. Shelden, Dynamic Density: An Air Traffic Management Metric Air Traffic Complexity: An Input-OutputDesc Lee, K ribing Airspace Complexity: Airspace Response to Disturbances, Experimental Studies of Cognitively Based Air Traffic Control Complexity Metrics for Future Operationa Li, L. a l Concepts, pp.210-222, 1998.

D. Liben-nowell, J. Kleinberg, and D. Finnerty, Tracing information flow on a global scale using Internet chain-letter dataUsing Spatial Context to Sup Loft, S port Prospective Memory in Simulated Air Traffic Control, Proceedings of the National Academy of Sciences Human Factors: The Journal of the Human Factors and Ergonomics Society, vol.105, issue.536, pp.4633-4638, 2008.

S. Loft and P. Sanderson, Modeling and Predicting Mental Workload in En Route Air Traffic Control: Critical Review and Broader Implications, Human Factors, vol.12, issue.3, pp.376-399, 2007.
DOI : 10.1518/001872007X197017

T. Madl and B. J. Baars, The Timing of the Cognitive Cycle Characterizing individual communication patternsOn Universality in Human Correspondence Activity, Proceed Malmg ings of the 15th ACM SIGKDD international conference on Knowledge discovery and data mining, pp.607-616, 2009.

R. D. Malmgren and D. B. Stouffer, A Poissonian explanation for heavy tails in e-mail communication Proceedings of the National Academy of S Mannin elationships between measures of air traffic The 5th, R controller voice communications, taskload, and traffic compleixty, pp.18153-18158, 2003.

U. Europe, A. R&d-seminar, . Budapest, C. G. Hungary, and S. H. Mills, Using Air Traffic Control Mannin Taskload Measures and 14. on Eye-Tracking Technique, 2002.

N. Marwan and J. F. Donges, Complex network approach for recurrence Communication Events to Predict Subjective Workload, p.20, 2009.

C. Manning and E. Pfleiderer, Relationship of Sector Activity and Sector Complexity to Air Traffic Controller Taskload, 2006.

C. Martin and J. Cegarra, Analysis of Mental Workload during En-route Air Traffic Control Task Execution Based Engineering Psychology and Cognitive Ergonomics analysis of time series Dynamic Density and C Masalo omplexity Metrics for Realtime Traffic Flow Management Matzke Psychological interpretation of the ex- Gaussian and shifted Wald parameters: A diffusion model analysis, Physics Letters AEurope ATM R&D Seminar Psychonomic Bulletin & Review, vol.6781, issue.165, pp.592-597, 2003.

S. Meignier and T. Merlin, LIUM Spkdiarization: An open source toolkit for diarization. CMU SPUD Workshop, 2010.
URL : https://hal.archives-ouvertes.fr/hal-01433518

M. D. Mitzenmacher, R. , and J. A. Guttman, A Brief History of Generative Models for Power Law and Lognormal Distributions, Internet Mathematics, vol.1, issue.2, pp.226-251, 1995.
DOI : 10.1080/15427951.2004.10129088

N. Montic-affic-lation, F. One, L. C. , and R. E. Snow, Proceedings of the 17th IASTED A review and synthesis of the literature Air/Ground Communications Tr Modeling Capability for the Mid-Level Model (MLM), MITRE Center for Advanced Aviation System Development, 2006.

L. C. Monticone and R. E. Snow, Modeling of air/ground air traffic control communications for fast-time simu international conference on Modelling and simulation, pp.407-415, 2006.

D. Morrow and M. Rodvold, Communication issues in air traffic control, Human Factors in Air Traffic Control. M. W. Smolensky and E. S. Stein, 1998.

. Griffin, Human factors issues in the transition to a CNS/ATM environment: Final reportCommunities, modules and large-scale structure in networks, Nat Phys, vol.8, issue.1, pp.421-456, 1998.

J. G. Oliveira and A. Barabasi, Human dynamics: Darwin and Einstein correspondence patterns, Nature, vol.437, issue.7063, pp.1251-1251, 2005.
DOI : 10.1038/4371251a

J. Onnela and F. Reed-tsochas, Spontaneous emergence of social influence in online systems, Proceedings of the National Academy of Sciences, 2010.
DOI : 10.1073/pnas.0914572107

R. K. Pan, J. K. Saramäki-016105., and S. V. Buldyrev, Path lengths, correlations, and centrality in temporal networksMosaic organization of DNA nucleotides, Physical Review E Physical Review E Peng C, vol.84, issue.492, pp.1685-1689, 1994.

V. Popescu and H. Augris, A stochastic model for air traffic control radio channel utilization, 4th International conference on research in air transportation, 2010.

D. H. Porterfield, Evaluating Controller Communication Time as a Measure of Workload, The International Journal of Aviation Psychology, vol.11, issue.2, p.12, 1997.
DOI : 10.1207/s15327108ijap0702_5

M. Prandini and L. Piroddi, Toward Air Traffic Complexity Assessment in New Generation Air Traffic Management Systems, IEEE Transactions on Intelligent Transportation Systems, vol.12, issue.3, pp.809-818, 2011.
DOI : 10.1109/TITS.2011.2113175

URL : https://hal.archives-ouvertes.fr/hal-01020894

M. Prandini and V. Putta, A probabilistic measure of air traffic complexity in three-dimensional airspace, International Journal of Adaptive Control and Signal, p.149, 2010.

E. M. En and J. S. Mccarley, Time Delays in Air Traffic Control Communication Rantan Loop: Effect on Controller Performance and Workload, International Journal of Aviation Psychology, vol.24, issue.144, pp.813-829, 2004.

R. and G. Mckoon, The diffusion decision model: Theo Ratcliff ry and data for two-choice decision tasks, Neural Computation, vol.20, pp.873-922, 2008.

R. and B. B. Murdock, Retrieval processes in recognition memo Ratcliff ry, Psychological Review, vol.83, pp.190-214, 1976.

R. and B. B. Murdock, A theory of memory retrieval, Psychological Ratcliff Review, vol.85, pp.59-108, 1978.

R. Ratcliff and J. N. Rouder, Modeling Response Times for Two-Choice Decisions, Psychological Science, vol.9, issue.5, pp.347-356, 1998.
DOI : 10.1111/1467-9280.00067

R. Ratcliff and J. N. Rouder, A diffusion model account of masking in twochoice letter identifica Perception and Performance, pp.127-140, 2000.

R. and H. P. Van-dongen, Diffusion model for one-choice reactiontime tasks Ratcliff and the cognitive effects of sleep deprivation, Proceedings of the National Academy of Sciences, vol.108, issue.27, pp.11285-11290, 2011.

R. and T. Van-zandt, Connectionist and diffusion models Ratcliff of reaction time, Psychological Review, vol.106, pp.261-300, 1999.

A. Robertson and M. Grossberg, Validation of Air Traffic Controller Workload Models, 1979.

L. E. Rocha and F. Liljeros, Information dynamics shape the sexual CENTER 127. networks of Internet-mediated prostitution, Proceedings of the National Academy of Sciences, 2010.

M. D. Rodgers and G. K. Drechsler, Conversion of the CTA, Inc., En Route Operations Concepts Database into a Formal Sentence Outline Job Task, 1993.

M. Movahed and E. Hermanis, Fractal analysis of river flow fluctuations, Sadegh hysica A: Statistical Mechanics and its Applications, 2008.

A. Sato, M. Xchange, and . Nishimura, Physica A: Statistical Mechanics and its 932Fluctuation scaling of quotation activities in the foreign e -150, 2010.

R. , D. , and C. Meckiff, Air traffic complexity as a key concept Schaefe for Multi- Sector Planning, ansactions on Systems, pp.2793-2804, 1976.

D. K. Schmidt and W. Chwarz, A queuing analysis of the air traffic controller's work loadThe ex-Wald distribution as a descriptive model of response times, IEEE Tr Behavior Research Methods, Instruments, & Computers S, vol.8, issue.33, pp.492-498, 1978.

M. Shafiq and A. Liu, A Random Walk Approach to Modeling the Dynamics of the Blogosphere. NETWORKING 2011, pp.294-306, 2011.

C. Song and T. Koren, Modelling the scaling properties of human mobility, Nature Physics, vol.42, issue.10, pp.818-823, 2010.
DOI : 10.1007/s10745-006-9083-4

C. Song and Z. Qu, Limits of Predictability in Human Mobility, Science, vol.327, issue.5968, pp.1018-1021, 2010.
DOI : 10.1126/science.1177170

B. Sridhar and K. S. Sheth, Airspace Complexity and its Application in Air Traffic Management. 2 ndUSA, Europe Air Traffic Management R&D Seminar, 1998.

E. S. Stein, Air traffic controller workload: An examination of workload probe, Atlantic City, 1985.

L. R. Taylor, Aggregation, Variance and the Mean, Nature, vol.29, issue.4766, p.4, 1961.
DOI : 10.1038/189732a0

L. R. Taylor and R. A. Taylor, Aggregation, migration and population mechanics, Nature, vol.156, issue.5593, pp.415-421, 1977.
DOI : 10.1038/265415a0

L. R. Taylor and R. A. Taylor, Behavioural dynamics, Nature, vol.46, issue.5920, pp.801-804, 1983.
DOI : 10.1038/303801a0

A. Vaquez and J. G. Oliveira, Modeling bursts and heavy tails in human dynamics, Physical Review E, vol.73, issue.3, p.36127, 2006.
DOI : 10.1103/PhysRevE.73.036127

K. Vassilis, Temporal graphs, Physica A: Statistical Mechanics and its Applications, vol.388, issue.6, pp.1007-1023, 2009.

A. Vespignani, Predicting the Behavior of Techno-Social Systems, Science, vol.325, issue.5939, pp.425-428, 2009.
DOI : 10.1126/science.1171990

Y. Wu and C. Zhou, Evidence for a bimodal distribution in human communication, Proceedings of the National Academy of Sciences, vol.107, issue.44, pp.18803-18808, 2010.
DOI : 10.1073/pnas.1013140107

X. Xu and J. Zhang, Superfamily phenomena and motifs of networks induced from time series, Proceedings of the National Academy of Sciences, vol.105, issue.50, pp.19601-19605, 2008.
DOI : 10.1073/pnas.0806082105

J. Zhang and M. Small, Complex Network from Pseudoperiodic Time Series: Topology versus Dynamics, Physical Review Letters, vol.96, issue.23, p.238701, 2006.
DOI : 10.1103/PhysRevLett.96.238701

Q. Zhao and Y. Tian, Communication motifs, Proceedings of the 19th ACM international conference on Information and knowledge management, CIKM '10, pp.28002-152, 2008.
DOI : 10.1145/1871437.1871694