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Reducing Uncertainty in Structural Safety
Special Session SS6
Ghent, Belgium
28-31 October 2018
Franck Schoefs, Thierry Yalamas, Barbara Heitner,
Eugene OBrien, Guillaume Causse
Scope
Introduction
Multi-step Bayesian updating
Example application
Results and conclusions
Introduction
Problems of ageing bridges
How to estimate the level of safety of these bridges?
How to plan inspection/maintenance?
Introduction
Problems of ageing bridges
How to estimate the level of safety of these bridges?
How to plan inspection/maintenance?
Different approaches/models exist
Involving stochastic parameters (e.g. Monte Carlo, FORM, SORM)
Incorporating measurement data (e.g. FE model calibration, Bayesian
updating)
Bayesian Networks
Stochastic processes etc.
Introduction
Problems of ageing bridges
How to estimate the level of safety of these bridges?
How to plan inspection/maintenance?
Different approaches/models exist
Involving stochastic parameters (e.g. Monte Carlo, FORM, SORM)
Incorporating measurement data (e.g. FE model calibration, Bayesian
updating)
Bayesian Networks
Stochastic processes etc.
Crucial to estimate/model as good as possible
The original geometrical/material/structural properties
The loading (history)
The level of deterioration/ health state
Introduction
Problems of ageing bridges
How to estimate the level of safety of these bridges?
How to plan inspection/maintenance?
Different approaches/models exist
Involving stochastic parameters (e.g. Monte Carlo, FORM, SORM)
Incorporating measurement data (e.g. FE model calibration, Bayesian
updating)
Bayesian Networks
Stochastic processes etc.
Crucial to estimate/model as good as possible
The original geometrical/material/structural properties
The loading (history)
The level of deterioration/ health state
Introduction
Corrosion is one of the most common and dangerous
phenomena related to the deterioration of RC bridges
Loss of capacity
Loss of elasticity
Increased deformations
Cracking
Spalling
Aesthetical aspects
Introduction
Corrosion is one of the most common and dangerous
phenomena related to the deterioration of RC bridges
Loss of capacity
Loss of elasticity
Increased deformations
Cracking
Spalling
Aesthetical aspects
In this work
Corrosion is modelled in a simplified context
Bayesian updating is applied on the distribution of reinforcement area
loss due to corrosion at different points in time
Parametric study is conducted based on:
The quality of measurement data and
The number of data available
Multi-step Bayesian updating
Estimating the value
of interest*
Developing the
physical model of
deterioration at t = 0
Estimating the
deterioration level
until t = service life
* Can be inspection/maintenance planning,
probability of failure, remaining service life
etc.
Multi-step Bayesian updating
Estimating the value
of interest*
Collecting relevant
data at time t = xi
Developing the
physical model of
deterioration at t = 0
Estimating the
deterioration level
until t = service life
* Can be inspection/maintenance planning,
probability of failure, remaining service life
etc.
Multi-step Bayesian updating
Estimating the value
of interest*
Collecting relevant
data at time t = xi
Estimating the
deterioration level at
t = xi
Developing the
physical model of
deterioration at t = 0
Estimating the
deterioration level
until t = service life
i = 1
* Can be inspection/maintenance planning,
probability of failure, remaining service life
etc.
Multi-step Bayesian updating
Estimating the value
of interest*
Collecting relevant
data at time t = xi
Estimating the
deterioration level at
t = xi
Developing the
physical model of
deterioration at t = 0
Estimating the
deterioration level
until t = service life
Updating the
deterioration level at
t = xi
i = 1
* Can be inspection/maintenance planning,
probability of failure, remaining service life
etc.
Multi-step Bayesian updating
Estimating the value
of interest*
Collecting relevant
data at time t = xi
Estimating the
deterioration level at
t = xi
Developing the
physical model of
deterioration at t = 0
Estimating the
deterioration level
until t = service life
Updating the
deterioration level at
t = xi
Updated estimation of
the deterioration level
until t = service life
i = i+1
i = 1
* Can be inspection/maintenance planning,
probability of failure, remaining service life
etc.
Multi-step Bayesian updating
Some ideas about what is
going on
Physical model can be built
High level of uncertainty
Environmental conditions
Material and geometrical
imperfections etc.
Why Bayesian updating?
Multi-step Bayesian updating
Some ideas about what is
going on
Physical model can be built
High level of uncertainty
Environmental conditions
Material and geometrical
imperfections etc.
Monitoring bridges has become
commonplace
periodical inspections (visual
inspections, NDT)
SHM systems
Valuable new information BUT
Limit on the amount of data
High level of uncertainty
Indirectly related data
Why Bayesian updating?
Multi-step Bayesian updating
Some ideas about what is
going on
Physical model can be built
High level of uncertainty
Environmental conditions
Material and geometrical
imperfections etc.
Bayesian inference: prior hypothesis + new evidence/information
Why Bayesian updating?
Monitoring bridges has become
commonplace
periodical inspections (visual
inspections, NDT)
SHM systems
Valuable new information BUT
Limit on the amount of data
High level of uncertainty
Indirectly related data
Example application
Corrosion model prior knowledge
To calculate the residual reinforcement area
5.13
27
c
fc
w
th
corr
c
c
w
Tti
64.1
1
)1(378
)(
29.0
11
85.0)()( pcorrpcorr
tTtitTti
ptT
T
corr
dttiDtD
1
1
)(232.0)( 0
For one reinforcing bar
Where:
w/c : water cement ration of concrete
fc : compressive strength of concrete in
[N/mm2]
icorr(t) : corrosion rate in [µA/cm2] at time t
t : time in [year]
Cth : cover thickness in [cm]
T1 : corrosion time initiation (=0)
tp : time since T1 in [year]
D0 : initial reinforcing bar diameter in [mm]
D(t) : reinforcing bar diameter in [mm] at time
t
Example application
Corrosion model prior knowledge
2D histogram of reinforcement area loss
(RAL) based on 100 000 sample size
(Monte Carlo simulation)
Example application
Corrosion model prior knowledge
2D histogram of reinforcement area loss
(RAL) based on 100 000 sample size
(Monte Carlo simulation) Mean, SD and 95% CI
Example application
Bayesian updating of LN distribution
At a given time RAL can be modelled using Log-Normal distribution
3 hyper parameters to update:
µlog
log
Example application
Bayesian updating of LN distribution
At a given time RAL can be modelled using Log-Normal distribution
3 hyper parameters to update:
µlog
log
Example application
Bayesian updating of LN distribution
At a given time RAL can be modelled using Log-Normal distribution
3 hyper parameters to update:
µlog
log
Markov Chain Monte Carlo (MCMC) method
Numerical method
Sampling directly from the posterior distribution using Metropolis-
Hastings algorithm
Convergence has to be ensured
The mean values of the posterior distribution of hyper parameters
are chosen to define the posterior LN distribution
Example application
Measurement scenarios
Obtaining new data
at t = 20 years
at t = 40 years
9 different cases:
no. of measurements: 10,20 or 50
(Coefficient of variation of the
measurement data / damage
indicator): 0.05, 0.1 or 0.2
Example application
Measurement scenarios
Obtaining new data
at t = 20 years
at t = 40 years
9 different cases:
no. of measurements: 10,20 or 50
(Coefficient of variation of the
measurement data / damage
indicator): 0.05, 0.1 or 0.2
A realization is randomly
chosen in order to simulate
the measurements
Example application
Measurement scenarios
Obtaining new data
at t = 20 years
at t = 40 years
9 different cases:
no. of measurements: 10,20 or 50
(Coefficient of variation of the
measurement data / damage
indicator): 0.05, 0.1 or 0.2
t = 20 years
A realization is randomly
chosen in order to simulate
the measurements
10 20 50
0.2
0.1
0.05
Results and conclusions
10 20 50
0.2
0.1
0.05
Results and conclusions
Results and conclusions
Number of data: 50
CoV of data: 0.05
Results and conclusions
Comparing the results based on
One updating at t = 20 years (blue)
Involving a second updating at t = 40 years (red)
Results and conclusions
A methodology is presented for better estimating reinforcement
loss due to corrosion in RC structures based on periodically
collected data
relatively simple, low computational cost
requires limited workforce and traffic disruption
can be used in case of any other deterioration process, where relevant
data can be collected from time to time
Results and conclusions
A methodology is presented for better estimating reinforcement
loss due to corrosion in RC structures based on periodically
collected data
relatively simple, low computational cost
requires limited workforce and traffic disruption
can be used in case of any other deterioration process, where relevant
data can be collected from time to time
In all the studied cases it is possible to improve the estimation
of the reinforcement loss
Results and conclusions
A methodology is presented for better estimating reinforcement
loss due to corrosion in RC structures based on periodically
collected data
relatively simple, low computational cost
requires limited workforce and traffic disruption
can be used in case of any other deterioration process, where relevant
data can be collected from time to time
In all the studied cases it is possible to improve the estimation
of the reinforcement loss
More measurements or better quality of measurements both
significant
Results and conclusions
A methodology is presented for better estimating reinforcement
loss due to corrosion in RC structures based on periodically
collected data
relatively simple, low computational cost
requires limited workforce and traffic disruption
can be used in case of any other deterioration process, where relevant
data can be collected from time to time
In all the studied cases it is possible to improve the estimation
of the reinforcement loss
More measurements or better quality of measurements both
significant
Collecting less data multiple times leads to higher rate of
improvement than collecting more data at a single point in time
The TRUSS ITN project (http://trussitn.eu) has
received funding from the European
Horizon 2020 research and innovation
programme under the Marie -Curie
grant agreement No. 642453
MCMC
Sample size of each posterior: 2000
Hyper-priors are normally distributed (truncated at 0) with
CoV = 0.5
Burn-in period: 100
Thinning: 20
Acceptance rate: 0.15 - 0.25
For each case measurement data sampling and updating
have been done 100 times to have some statistical
understanding of the results
MCMC
Example for the posterior distribution random walk samples for the
three hyper-prior
µlog log
MCMC
Results of MCMC for all 9 scenarios
Mean and SD for the 3 hyper prior parameters
µlog log

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"Using step-by-step Bayesian updating to better estimate the reinforcement loss due to corrosion in reinforced concrete structures" presented at IALCCE2018 by Barbara Heitner

  • 1. Reducing Uncertainty in Structural Safety Special Session SS6 Ghent, Belgium 28-31 October 2018
  • 2. Franck Schoefs, Thierry Yalamas, Barbara Heitner, Eugene OBrien, Guillaume Causse
  • 3. Scope Introduction Multi-step Bayesian updating Example application Results and conclusions
  • 4. Introduction Problems of ageing bridges How to estimate the level of safety of these bridges? How to plan inspection/maintenance?
  • 5. Introduction Problems of ageing bridges How to estimate the level of safety of these bridges? How to plan inspection/maintenance? Different approaches/models exist Involving stochastic parameters (e.g. Monte Carlo, FORM, SORM) Incorporating measurement data (e.g. FE model calibration, Bayesian updating) Bayesian Networks Stochastic processes etc.
  • 6. Introduction Problems of ageing bridges How to estimate the level of safety of these bridges? How to plan inspection/maintenance? Different approaches/models exist Involving stochastic parameters (e.g. Monte Carlo, FORM, SORM) Incorporating measurement data (e.g. FE model calibration, Bayesian updating) Bayesian Networks Stochastic processes etc. Crucial to estimate/model as good as possible The original geometrical/material/structural properties The loading (history) The level of deterioration/ health state
  • 7. Introduction Problems of ageing bridges How to estimate the level of safety of these bridges? How to plan inspection/maintenance? Different approaches/models exist Involving stochastic parameters (e.g. Monte Carlo, FORM, SORM) Incorporating measurement data (e.g. FE model calibration, Bayesian updating) Bayesian Networks Stochastic processes etc. Crucial to estimate/model as good as possible The original geometrical/material/structural properties The loading (history) The level of deterioration/ health state
  • 8. Introduction Corrosion is one of the most common and dangerous phenomena related to the deterioration of RC bridges Loss of capacity Loss of elasticity Increased deformations Cracking Spalling Aesthetical aspects
  • 9. Introduction Corrosion is one of the most common and dangerous phenomena related to the deterioration of RC bridges Loss of capacity Loss of elasticity Increased deformations Cracking Spalling Aesthetical aspects In this work Corrosion is modelled in a simplified context Bayesian updating is applied on the distribution of reinforcement area loss due to corrosion at different points in time Parametric study is conducted based on: The quality of measurement data and The number of data available
  • 10. Multi-step Bayesian updating Estimating the value of interest* Developing the physical model of deterioration at t = 0 Estimating the deterioration level until t = service life * Can be inspection/maintenance planning, probability of failure, remaining service life etc.
  • 11. Multi-step Bayesian updating Estimating the value of interest* Collecting relevant data at time t = xi Developing the physical model of deterioration at t = 0 Estimating the deterioration level until t = service life * Can be inspection/maintenance planning, probability of failure, remaining service life etc.
  • 12. Multi-step Bayesian updating Estimating the value of interest* Collecting relevant data at time t = xi Estimating the deterioration level at t = xi Developing the physical model of deterioration at t = 0 Estimating the deterioration level until t = service life i = 1 * Can be inspection/maintenance planning, probability of failure, remaining service life etc.
  • 13. Multi-step Bayesian updating Estimating the value of interest* Collecting relevant data at time t = xi Estimating the deterioration level at t = xi Developing the physical model of deterioration at t = 0 Estimating the deterioration level until t = service life Updating the deterioration level at t = xi i = 1 * Can be inspection/maintenance planning, probability of failure, remaining service life etc.
  • 14. Multi-step Bayesian updating Estimating the value of interest* Collecting relevant data at time t = xi Estimating the deterioration level at t = xi Developing the physical model of deterioration at t = 0 Estimating the deterioration level until t = service life Updating the deterioration level at t = xi Updated estimation of the deterioration level until t = service life i = i+1 i = 1 * Can be inspection/maintenance planning, probability of failure, remaining service life etc.
  • 15. Multi-step Bayesian updating Some ideas about what is going on Physical model can be built High level of uncertainty Environmental conditions Material and geometrical imperfections etc. Why Bayesian updating?
  • 16. Multi-step Bayesian updating Some ideas about what is going on Physical model can be built High level of uncertainty Environmental conditions Material and geometrical imperfections etc. Monitoring bridges has become commonplace periodical inspections (visual inspections, NDT) SHM systems Valuable new information BUT Limit on the amount of data High level of uncertainty Indirectly related data Why Bayesian updating?
  • 17. Multi-step Bayesian updating Some ideas about what is going on Physical model can be built High level of uncertainty Environmental conditions Material and geometrical imperfections etc. Bayesian inference: prior hypothesis + new evidence/information Why Bayesian updating? Monitoring bridges has become commonplace periodical inspections (visual inspections, NDT) SHM systems Valuable new information BUT Limit on the amount of data High level of uncertainty Indirectly related data
  • 18. Example application Corrosion model prior knowledge To calculate the residual reinforcement area 5.13 27 c fc w th corr c c w Tti 64.1 1 )1(378 )( 29.0 11 85.0)()( pcorrpcorr tTtitTti ptT T corr dttiDtD 1 1 )(232.0)( 0 For one reinforcing bar Where: w/c : water cement ration of concrete fc : compressive strength of concrete in [N/mm2] icorr(t) : corrosion rate in [µA/cm2] at time t t : time in [year] Cth : cover thickness in [cm] T1 : corrosion time initiation (=0) tp : time since T1 in [year] D0 : initial reinforcing bar diameter in [mm] D(t) : reinforcing bar diameter in [mm] at time t
  • 19. Example application Corrosion model prior knowledge 2D histogram of reinforcement area loss (RAL) based on 100 000 sample size (Monte Carlo simulation)
  • 20. Example application Corrosion model prior knowledge 2D histogram of reinforcement area loss (RAL) based on 100 000 sample size (Monte Carlo simulation) Mean, SD and 95% CI
  • 21. Example application Bayesian updating of LN distribution At a given time RAL can be modelled using Log-Normal distribution 3 hyper parameters to update: µlog log
  • 22. Example application Bayesian updating of LN distribution At a given time RAL can be modelled using Log-Normal distribution 3 hyper parameters to update: µlog log
  • 23. Example application Bayesian updating of LN distribution At a given time RAL can be modelled using Log-Normal distribution 3 hyper parameters to update: µlog log Markov Chain Monte Carlo (MCMC) method Numerical method Sampling directly from the posterior distribution using Metropolis- Hastings algorithm Convergence has to be ensured The mean values of the posterior distribution of hyper parameters are chosen to define the posterior LN distribution
  • 24. Example application Measurement scenarios Obtaining new data at t = 20 years at t = 40 years 9 different cases: no. of measurements: 10,20 or 50 (Coefficient of variation of the measurement data / damage indicator): 0.05, 0.1 or 0.2
  • 25. Example application Measurement scenarios Obtaining new data at t = 20 years at t = 40 years 9 different cases: no. of measurements: 10,20 or 50 (Coefficient of variation of the measurement data / damage indicator): 0.05, 0.1 or 0.2 A realization is randomly chosen in order to simulate the measurements
  • 26. Example application Measurement scenarios Obtaining new data at t = 20 years at t = 40 years 9 different cases: no. of measurements: 10,20 or 50 (Coefficient of variation of the measurement data / damage indicator): 0.05, 0.1 or 0.2 t = 20 years A realization is randomly chosen in order to simulate the measurements
  • 27. 10 20 50 0.2 0.1 0.05 Results and conclusions
  • 28. 10 20 50 0.2 0.1 0.05 Results and conclusions
  • 29. Results and conclusions Number of data: 50 CoV of data: 0.05
  • 30. Results and conclusions Comparing the results based on One updating at t = 20 years (blue) Involving a second updating at t = 40 years (red)
  • 31. Results and conclusions A methodology is presented for better estimating reinforcement loss due to corrosion in RC structures based on periodically collected data relatively simple, low computational cost requires limited workforce and traffic disruption can be used in case of any other deterioration process, where relevant data can be collected from time to time
  • 32. Results and conclusions A methodology is presented for better estimating reinforcement loss due to corrosion in RC structures based on periodically collected data relatively simple, low computational cost requires limited workforce and traffic disruption can be used in case of any other deterioration process, where relevant data can be collected from time to time In all the studied cases it is possible to improve the estimation of the reinforcement loss
  • 33. Results and conclusions A methodology is presented for better estimating reinforcement loss due to corrosion in RC structures based on periodically collected data relatively simple, low computational cost requires limited workforce and traffic disruption can be used in case of any other deterioration process, where relevant data can be collected from time to time In all the studied cases it is possible to improve the estimation of the reinforcement loss More measurements or better quality of measurements both significant
  • 34. Results and conclusions A methodology is presented for better estimating reinforcement loss due to corrosion in RC structures based on periodically collected data relatively simple, low computational cost requires limited workforce and traffic disruption can be used in case of any other deterioration process, where relevant data can be collected from time to time In all the studied cases it is possible to improve the estimation of the reinforcement loss More measurements or better quality of measurements both significant Collecting less data multiple times leads to higher rate of improvement than collecting more data at a single point in time
  • 35. The TRUSS ITN project (http://trussitn.eu) has received funding from the European Horizon 2020 research and innovation programme under the Marie -Curie grant agreement No. 642453
  • 36. MCMC Sample size of each posterior: 2000 Hyper-priors are normally distributed (truncated at 0) with CoV = 0.5 Burn-in period: 100 Thinning: 20 Acceptance rate: 0.15 - 0.25 For each case measurement data sampling and updating have been done 100 times to have some statistical understanding of the results
  • 37. MCMC Example for the posterior distribution random walk samples for the three hyper-prior µlog log
  • 38. MCMC Results of MCMC for all 9 scenarios Mean and SD for the 3 hyper prior parameters µlog log