Title: William Marsh
1Using Bayesian Networks to Model Accident
Causation in the UK Railway Industry
- William Marsh
- Risk Assessment and Decision Analysis Group
- Department of Computer Science
- Queen Mary, University of London
- George Bearfield
- Transport Safety and Reliability
- Atkins Rail, London
2Outline
- Signals Passed at Danger (SPADs)
- Organisational Accidents
- Bayesian Networks
- Building a BN for SPADs
- Conclusions
3Signals Passed At Danger
Southall
Ladbroke Grove
4Signals Passed At Danger
- Train has passed a stop signal without
authority - Incident on 27/3/03 at Southampton
- 360 yard overrun
- affected by low sunlight
- driver read adjacent signal
- signal is approached on a curve
- wrong signal into the drivers direct line of
sight for a short time
5Waterloo
Southampton
From Railway Safety Assessment of Railtracks
Response to Improvement Notice I/RIS/991007/2
Covering the Top 22 Signals Passed Most Often
at Danger HSE, 2002
6Organisational Accidents
- Operator errors have organisational causes
- gradual relaxation of alertness
- pressure to increase efficiency
Increasing Resistance
Increasing Vulnerability
Currents acting within the Safety Space
7Organisational Causes of SPADs
Within the workforce there is a perception that
emphasis on performance has affected attitudes to
safety.
Ladbroke Grove report
the industry is generally poor at identifying
organisational issues that may underpin SPAD
incidents
- Infrastructure multi-SPAD signals
- Driver training and timetable pressure
8Bayesian Network
9Organisational Model
- Actors in the organisation (idea from Rasmussens
AcciMap)
- Responsibilities of actors
- Interactions between actors
10BN Variables from Attributes
quality
pressure
experience alertness
visibility curve
traffic
- Actors and interactions can have attributes
11SPAD Scenarios
- Each SPAD scenario modelled as a BN
- events
- influences attributes of driver, infrastructure,
- Scenario model merged
12SPAD Scenario
Influence
Event
13Expert Judgement
- Strength of probabilistic influences judged by
experts - Modify network structure
- Build probability tables
- Aggregated data
- SPAD frequencies
- Used to validate judgements
- Status
- Not yet completed!
14Using the Causal Model
- Assess frequency / risk
- Where are SPADs likely?
- Monitor organisational changes
- Use audit results
- Select interventions
- How can the frequency of SPADs be reduced?
15Summary
- Integrated causal model of SPADs
- Organisational influences
- Event sequence
- Bayesian networks
- Generalise other probabilistic modelling
- Future challenges
- Use