Abstract
This paper presents a method to extract train driver taskload from downloads of on-train-data-recorders (OTDR). OTDR are in widespread use for the purposes of condition monitoring of trains, but they may also have applications in operations monitoring and management. Evaluation of train driver workload is one such application. The paper describes the type of data held in OTDR recordings and how they can be transformed into driver actions throughout a journey. Example data from 16 commuter journeys are presented, which highlights the increased taskload during arrival at stations. Finally, the possibilities and limitations of the data are discussed.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
Similar content being viewed by others
References
Pickup, L., Wilson, J.R., Sharples, S., Norris, B., Clarke, T., Young, M.S.: Fundamental examination of mental workload in the rail industry. Theor. Issues Ergon. Sci. 6(6), 463–482 (2005)
Naghiyev, A., Sharples, S., Ryan, B., Coplestone, A., Carey, M.: Real workload verbal protocol data analysis of European Rail Traffic Management System train driving and conventional train driving. In: 2016 IEEE International Conference on Intelligent Rail Transportation (ICIRT), pp. 191–196. IEEE (2016)
Luke, T., Brook-Carter, N., Parkes, A.M., Grimes, E., Mills, A.: An investigation of train driver visual strategies. Cogn. Technol. Work 8(1), 15–29 (2006)
Branton, P.: Investigations into the skills of train-driving. Ergonomics 22(2), 155–164 (1979)
Doncaster, N.: “By the seat of their pants” cues and feedback used by train crew. In: Wilson, J.R., Mills, A., Clarke, T., Rajan, J., Dadashi, N. (eds.) Rail Human Factors around the World: Impacts on and of People for Successful Rail Operations, pp. 484–494. CRC Press, Leiden (2012)
Hamilton, W.I., Clarke, T.: Driver performance modelling and its practical application to railway safety. Appl. Ergon. 36, 661–670 (2005)
Buksh, A., Sharples, S., Wilson, J.R., Coplestone, A., Morrisroe, G.: A comparative cognitive task analysis of the different forms of driving in the UK rail system. In: Dadashi, N., Scott, A., Wilson, J.R., Mills, A. (eds.) Rail Human Factors: Supporting Reliability, Safety, and Cost Reduction, pp. 173–182. Taylor & Francis, London (2013)
Zoer, I., Sluiter, J.K., Frings-Dresen, H.W.: Psychological work characteristics, psychological workload and associated psychological and cognitive requirements of train driver. Ergonomics 57(10), 1473–1487 (2014)
Gillis, I.: Cognitive workload of train drivers. In: Wilson, J.R., Norris, B., Clarke, T., Mills, A. (eds.) People and Rail Systems: Human Factors at the Heart of the Railway, pp. 91–101. Ashgate, Aldershot (2007)
Hamilton, W.I., Clarke, T.: Driver performance modelling and its practical application to railway safety. In: Wilson, J.R., Norris, B., Clarke, T., Mills, A. (eds.) Rail Human Factors: Supporting the Integrated Railway. Ashgate, Aldershot (2005)
Naweed, A.: Investigations into the skills of modern and traditional train driving. Appl. Ergon. 45, 462–470 (2014)
Elliot, A.C., Garner, S.D., Grimes, E.: The cognitive tasks of the driver: the approach and passage through diverging junctions. In: Wilson, J.R., Norris, B., Clarke, T., Mills, A. (eds.) People and Rail Systems: Human Factors at the Heart of the Railway, pp. 115–123. Ashgate, Aldershot (2007)
Naweed, A., O’Keeffe, V., Tuckey, M.R.: The art of train driving: flexing the boundaries to manage risk within an inflexible system. Eat Sleep Work 1 (2015)
McLeod, R.W., Walker, G.H., Moray, N., Mills, A.: Analysing and modelling train driver performance. In: Wilson, J.R., Norris, B., Clarke, T., Mills, A. (eds.) Rail Human Factors: Supporting the Integrated Railway. Ashgate, Aldershot (2005)
Dunn, N., Williamson, A.: Driving monotonous routes in a train simulator: the effect of task demand on driving performance and subjective experience. Ergonomics 55(9), 997–1008 (2012)
Basacik, D., Waters, S., Reed, N.: Detecting cognitive underload in train driving: a physiological approach. In: Proceedings of the 5th International Rail Human Factors Conference, 14–17 September, London (2015)
Walker, G., Strathie, A.: Combining human factors methods with transport data recordings. In: Stanton, N., Landry, S., Di Bucchianic, G., Vallicelli, A. (eds.) Advances in Human Aspects of Transportation: Part 2 (2014)
Walker, G., Strathie, A.: Leading indicators of operational risk on the railway: a novel use for underutilised data recordings. Saf. Sci. 74, 93–101 (2015)
Strathie, A., Walker, G.: Can link analysis be applied to identify behavioural patterns in train recorder data? Hum. Factors 58(2), 205–217 (2015)
Broekhoven, R.F.G.: Comparison of Real-Time Relative Workload Measurements in Rail Signallers. University of Twente, Twente (2016)
Balfe, N., Smith, B.: A framework for human factors analysis of railway on-train data. Paper presented at HFES-Europe Chapter Conference, Prague, October 2016 (2016)
Rizzo, L., Dondio, P., Delany, S.J., Longo, L.: Modeling mental workload via rule-based expert system: a comparison with NASA-TLX and workload profile. In: Iliadis, L., Maglogiannis, I. (eds.) AIAI 2016. IAICT, vol. 475, pp. 215–229. Springer, Cham (2016). doi:10.1007/978-3-319-44944-9_19
Rubio, S., Díaz, E., Martín, J., Puente, J.M.: Evaluation of subjective mental workload: a comparison of SWAT, NASA-TLX, and workload profile methods. Appl. Psychol. 53(1), 61–86 (2004)
Longo, L.: A defeasible reasoning framework for human mental workload representation and assessment. Behav. Inf. Technol. 34(8), 758–786 (2015)
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2017 Springer International Publishing AG
About this paper
Cite this paper
Balfe, N., Crowley, K., Smith, B., Longo, L. (2017). Estimation of Train Driver Workload: Extracting Taskload Measures from On-Train-Data-Recorders. In: Longo, L., Leva, M. (eds) Human Mental Workload: Models and Applications. H-WORKLOAD 2017. Communications in Computer and Information Science, vol 726. Springer, Cham. https://doi.org/10.1007/978-3-319-61061-0_7
Download citation
DOI: https://doi.org/10.1007/978-3-319-61061-0_7
Published:
Publisher Name: Springer, Cham
Print ISBN: 978-3-319-61060-3
Online ISBN: 978-3-319-61061-0
eBook Packages: Computer ScienceComputer Science (R0)