Human factors models for aviation accident analysis and prevention
Human factors models for aviation accident analysis and prevention
The investigation and modelling of aviation accident causation is dominated by linear models. Aviation is, however, a complex system and as such suffers from being artificially manipulated into non-complex models and methods. This book addresses this issue by developing a new approach to investigating aviation accident causation through information networks. These networks centralise communication and the flow of information as key indicators of a system’s health and risk. This holistic approach focuses on the system environment, the activity that takes place within it, the strategies used to conduct this activity, the way in which the constituent parts of the system (both human and non-human) interact and the behaviour required. Each stage of this book identifies and expands upon the potential of the information network approach, maintaining firm focus on the overall health of a system. The book’s new model offers many potential developments and some key areas are studied in this research. Through the centralisation of barriers and information nodes the method can be applied to almost any situation. The application of Bayesian mathematics to historical data populations provides scope for studying error migration and barrier manipulation. The book also provides application of these predictions to a flight simulator study for the purposes of validation. Beyond this it also discusses the applicability of the approach to industry. Through working with a legacy airline the methods discussed are used as the basis for a new and prospective safety management system.
Griffin, T.G.C.
829049eb-0e32-42ab-9bd6-3931f4db1a28
Young, Mark
3f79589e-2000-4cb0-832a-6eba54f50130
Stanton, Neville
351a44ab-09a0-422a-a738-01df1fe0fadd
28 February 2015
Griffin, T.G.C.
829049eb-0e32-42ab-9bd6-3931f4db1a28
Young, Mark
3f79589e-2000-4cb0-832a-6eba54f50130
Stanton, Neville
351a44ab-09a0-422a-a738-01df1fe0fadd
Griffin, T.G.C., Young, Mark and Stanton, Neville
(2015)
Human factors models for aviation accident analysis and prevention
,
Routledge, 226pp.
Abstract
The investigation and modelling of aviation accident causation is dominated by linear models. Aviation is, however, a complex system and as such suffers from being artificially manipulated into non-complex models and methods. This book addresses this issue by developing a new approach to investigating aviation accident causation through information networks. These networks centralise communication and the flow of information as key indicators of a system’s health and risk. This holistic approach focuses on the system environment, the activity that takes place within it, the strategies used to conduct this activity, the way in which the constituent parts of the system (both human and non-human) interact and the behaviour required. Each stage of this book identifies and expands upon the potential of the information network approach, maintaining firm focus on the overall health of a system. The book’s new model offers many potential developments and some key areas are studied in this research. Through the centralisation of barriers and information nodes the method can be applied to almost any situation. The application of Bayesian mathematics to historical data populations provides scope for studying error migration and barrier manipulation. The book also provides application of these predictions to a flight simulator study for the purposes of validation. Beyond this it also discusses the applicability of the approach to industry. Through working with a legacy airline the methods discussed are used as the basis for a new and prospective safety management system.
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Published date: 28 February 2015
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Local EPrints ID: 480846
URI: http://eprints.soton.ac.uk/id/eprint/480846
PURE UUID: 2fb8b8eb-cbd7-4903-91a2-488a4223fb4f
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Date deposited: 10 Aug 2023 16:37
Last modified: 09 Dec 2023 03:06
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Author:
T.G.C. Griffin
Author:
Mark Young
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