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ESTIMATING THE IMPACT
OF INCIDENTS ON
PROCESS DELAY
Felix Mannhardt, Petter Arnesen,
Andreas D. Landmark
2
3
Image sources: banenor.no
4
Case Activity
Railway Traffic Control Logs
5
Railway Traffic Logs – Example Process Model
What is process delay?
6
Definition A
Expected/Scheduled
vs.
Actual Performance
Definition B
Normal performance
vs.
Actual performance
What is known about incidents?
7
Image sources: banenor.no
What is known about incidents?
8
Incident Log
Issue registered
Mover/motor
turnout km 453
Work order created
Repair
Process
Work Order
DB
Manual
registration
Manual
registration
Registered?
Work started?
Contractor notified?
When was it fixed?
The Problem – Linking Incidents to Delay
9
• Internal performance factors
• Alignments to project performance information
• Identification of slow variants / combination of attributes
• Identification of slow resources
• Prediction of performance
• Remaining time to completion
• Some work considering inter-case parameters
• Visualisation of performance
• Dotted chart
• Others: Process Profiler, Performance Spectrum etc.
10
Existing work
None is addressing
the linking/estimation
challenge!
Proposed Approach – Assumptions #1
11
Proposed Approach – Assumptions #2
12
Resource required for trains
to pass station Støren!
Image sources: banenor.no
Proposed Approach – Impact Estimation #1
13 Step 1: Collect performance information from event log
Case 5262 took about 460s
for activity LMO-STØ (single track)
Approx. time for incident
on turnout XYZ
𝑇𝑖𝑛𝑐𝑖𝑑𝑒𝑛𝑡
Proposed Approach – Impact Estimation #2
14 Step 2: Determine normal process performance
Proposed Approach – Impact Estimation #3
15 Step 3: Classify activity instances into three classes
Proposed Approach – Impact Estimation #4
16 Step 4: Determine likely start/end of impact using MCMC
𝑇𝑠𝑡𝑎𝑟𝑡 ? 𝑇𝑒𝑛𝑑 ?
Metropolis-Hastings algorithms
20000 iterations
Priors for standard delay
e.g., 𝑝0 = (0.94, 0.055 0.005)
and incident-affected delay
e.g., 𝑝1 = (0.93, 0.06, 0.01)
hand tuned on small dataset.
Proposed Approach – Impact Estimation #4
17 Step 4: Determine likely start/end of impact using MCMC
𝑇𝑠𝑡𝑎𝑟𝑡 𝑇𝑒𝑛𝑑
Times at least 50% of the samples
between 𝑇𝑠𝑡𝑎𝑟𝑡 and 𝑇𝑒𝑛𝑑
Proposed Approach – Impact Estimation #5
18 Step 5: Accumulate delay
𝑇𝑠𝑡𝑎𝑟𝑡 𝑇𝑒𝑛𝑑Count fully Discount with prob.Discount with prob.
Evaluation – Case Study in Norway
19
TIOS
BaneData
Save result back
Traffic Control
System
Maintenance
Management
PRESENS-Algorithm
Data
Warehouse
Calculated the impact on delay for
each major incident since 2011
Work
orders
Driving
time
Delay
tagging
Validation
Evaluation – Delay Dashboard
20
Evaluation – Predictive Maintenance
21
• Prediction of "avoided" delay due
to smart maintenance
• Smart monitoring of turnouts
• Justification of investments
• Using the delay effect base on
historical data as proxy
• Not perfect, often rather small data basis
for prediction
• Better than management by `rule of
thumb`
• Explore application on non-infrastructure focussed processes
• Activity-incident relation is less obvious?
• Estimation of `normal` process performance challenging?
• Address the issue of multiple co-occurring incidents
• MCMC would have trouble with multi-modal distributions
• Address non-local knock-on effects on process delay
• Initial solution addresses the problem for single-track railway networks, but difficult to generalise!
• Investigate effects of queues etc. in non-physical processes
• Address the strong dependency on the chosen parameters in the prior
distribution  possible but high computational cost
22
Future work
23
Contact
felix.mannhardt@sintef.no
@fmannhardt
Thanks to BaneNOR which funded part of this research!
Teknologi for et bedre samfunn

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Estimating the Impact of Incidents on Process Delay - ICPM 2019

  • 1. ESTIMATING THE IMPACT OF INCIDENTS ON PROCESS DELAY Felix Mannhardt, Petter Arnesen, Andreas D. Landmark
  • 2. 2
  • 5. 5 Railway Traffic Logs – Example Process Model
  • 6. What is process delay? 6 Definition A Expected/Scheduled vs. Actual Performance Definition B Normal performance vs. Actual performance
  • 7. What is known about incidents? 7 Image sources: banenor.no
  • 8. What is known about incidents? 8 Incident Log Issue registered Mover/motor turnout km 453 Work order created Repair Process Work Order DB Manual registration Manual registration Registered? Work started? Contractor notified? When was it fixed?
  • 9. The Problem – Linking Incidents to Delay 9
  • 10. • Internal performance factors • Alignments to project performance information • Identification of slow variants / combination of attributes • Identification of slow resources • Prediction of performance • Remaining time to completion • Some work considering inter-case parameters • Visualisation of performance • Dotted chart • Others: Process Profiler, Performance Spectrum etc. 10 Existing work None is addressing the linking/estimation challenge!
  • 11. Proposed Approach – Assumptions #1 11
  • 12. Proposed Approach – Assumptions #2 12 Resource required for trains to pass station Støren! Image sources: banenor.no
  • 13. Proposed Approach – Impact Estimation #1 13 Step 1: Collect performance information from event log Case 5262 took about 460s for activity LMO-STØ (single track) Approx. time for incident on turnout XYZ 𝑇𝑖𝑛𝑐𝑖𝑑𝑒𝑛𝑡
  • 14. Proposed Approach – Impact Estimation #2 14 Step 2: Determine normal process performance
  • 15. Proposed Approach – Impact Estimation #3 15 Step 3: Classify activity instances into three classes
  • 16. Proposed Approach – Impact Estimation #4 16 Step 4: Determine likely start/end of impact using MCMC 𝑇𝑠𝑡𝑎𝑟𝑡 ? 𝑇𝑒𝑛𝑑 ? Metropolis-Hastings algorithms 20000 iterations Priors for standard delay e.g., 𝑝0 = (0.94, 0.055 0.005) and incident-affected delay e.g., 𝑝1 = (0.93, 0.06, 0.01) hand tuned on small dataset.
  • 17. Proposed Approach – Impact Estimation #4 17 Step 4: Determine likely start/end of impact using MCMC 𝑇𝑠𝑡𝑎𝑟𝑡 𝑇𝑒𝑛𝑑 Times at least 50% of the samples between 𝑇𝑠𝑡𝑎𝑟𝑡 and 𝑇𝑒𝑛𝑑
  • 18. Proposed Approach – Impact Estimation #5 18 Step 5: Accumulate delay 𝑇𝑠𝑡𝑎𝑟𝑡 𝑇𝑒𝑛𝑑Count fully Discount with prob.Discount with prob.
  • 19. Evaluation – Case Study in Norway 19 TIOS BaneData Save result back Traffic Control System Maintenance Management PRESENS-Algorithm Data Warehouse Calculated the impact on delay for each major incident since 2011 Work orders Driving time Delay tagging Validation
  • 20. Evaluation – Delay Dashboard 20
  • 21. Evaluation – Predictive Maintenance 21 • Prediction of "avoided" delay due to smart maintenance • Smart monitoring of turnouts • Justification of investments • Using the delay effect base on historical data as proxy • Not perfect, often rather small data basis for prediction • Better than management by `rule of thumb`
  • 22. • Explore application on non-infrastructure focussed processes • Activity-incident relation is less obvious? • Estimation of `normal` process performance challenging? • Address the issue of multiple co-occurring incidents • MCMC would have trouble with multi-modal distributions • Address non-local knock-on effects on process delay • Initial solution addresses the problem for single-track railway networks, but difficult to generalise! • Investigate effects of queues etc. in non-physical processes • Address the strong dependency on the chosen parameters in the prior distribution  possible but high computational cost 22 Future work
  • 24. Teknologi for et bedre samfunn

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