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noise and number of sensors Giovanni Capellari Eleni Chatzi - - PowerPoint PPT Presentation
noise and number of sensors Giovanni Capellari Eleni Chatzi - - PowerPoint PPT Presentation
Optimal sensor placement through Bayesian experimental design: effect of measurement noise and number of sensors Giovanni Capellari Eleni Chatzi Stefano Mariani 3 rd International Electronic Conference on Sensors and Aplications, 10-15 November
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Motivation
Identifiability Estimates Uncertainty SHM system cost # sensors measurement error Optimal SHM system design configuration
The usefulness of the sensor network depends on the number, type and location of the sensors. Therefore, we need a method to quantify the information obtained by the acquisition system.
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Optimal sensor placement: deterministic methods
EFI KE EVP
- M. Meo, G. Zumpano, (2005), M. Bruggi, S. Mariani, (2013), Leyder, C., Ntertimanis, V., Chatzi, E., Frangi, A. (2015).
Sensitivity to damage
The existing approaches does not take into account the measurement noise, i.e. the sensors accuracy.
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Optimal sensor placement: Bayesian framework
- X. Huan, Y. M. Marzouk, (2013).
Expected gain in Shannon information ๐ ๐ = เถฑ
๐
เถฑ
ฮ
๐ฃ ๐, ๐, ๐พ ๐ ๐พ, ๐ ๐ ๐๐พ๐๐ ๐โ = arg max
๐โ๐ฌ ๐(๐)
Monte Carlo sampling Prior: ๐พ~๐ ๐พ Likelihood: ๐~๐(๐|๐พ, ๐) ๐ ๐ โ 1 ๐๐๐ฃ๐ข เท
๐=1 ๐๐๐ฃ๐ข
ln ๐ ๐๐ ๐พ๐, ๐ โ ln 1 ๐๐๐ เท
๐=1 ๐๐๐
๐ ๐๐ ๐พ๐, ๐
In a Bayesian sense, the optimal spatial configuration ๐โ of the sensor network can be found by maximizing the Shannon information gain. In
- rder to compute it, we use a Monte Carlo approximation.
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Model evaluation
- Evaluation of the likelihood
๐ ๐๐ ๐พ๐, ๐ = ๐๐ ๐๐ โ ๐ฏ ๐พ๐, ๐ ๐ฏ ๐พ, ๐ = ๐ด ๐ ๐ณ(๐พ)โ1๐ฎ
Observation matrix ๐ณ ๐พ = เท
๐=1 ๐๐พ
๐น๐ ๐น โ 1 ๐ณ๐ฃ๐๐ โ ๐ณ๐
- Forward model
๐ = ๐ฏ ๐พ, ๐ + ๐
Measurement noise
The measurements are related to the mechanical parameters to be estimated through a FEM-based forward model. The sensor accuracy is taken into account through a fictitious measurement noise.
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Optimization
๐พ๐~๐ ๐พ , ๐๐~๐ฑ ๐ ๐๐= ๐พ๐
๐ ๐๐ ๐
๐๐๐ท๐น = ๐ ๐ = ฯ๐ทโโ๐ ๐ง๐ฝ๐๐ฝ ๐ ๐๐๐บ๐น = ๐ฏ ๐พ๐, ๐๐
- Surrogate model: polynomial chaos expansion
- Optimization: Covariance Matrix Adaptation Evolution Strategy
(CMA-ES)
- 1. ๐๐~๐ + ๐๐ช
๐ ๐, ๐ซ
๐ โ โ๐๐, ๐ซ โ โ๐๐ร๐๐
- 2. ๐ and ๐ซ are updated through cumulation
- 3. Check the tolerance on ๐ ๐
- N. Hansen, S.D. Mรผller, P. Koumoutsakos, (2003).
In order to reduce the computational cost of the forward model, a cheaper surrogate model is built.
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Bayesian OSP framework
Sample input variables ๐พ๐~๐ ๐พ , ๐๐~๐ฑ ๐ ๐๐= ๐พ๐
๐ ๐๐ ๐
System response ๐ฏ๐บ๐น ๐พ๐, ๐๐ PCE surrogate ๐ฏ๐บ๐น ๐พ๐, ๐๐ โ ๐ฏ๐๐ท๐น ๐พ๐, ๐๐ Maximizing information Sample design variable ๐๐ MC approximation ๐(๐๐) Update ๐๐โ ๐๐+1 (CMA-ES) Check tolerance on ๐ ๐๐ โ ๐ ๐๐+1 Optimal configuration ๐โ Training surrogate model
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Application: simply supported plate
10x10 mesh: 726 d.o.f. Displacement measurements 4 zones: ๐พ = ๐น1, ๐น2, ๐น3, ๐น4
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Application: simply supported plate Choice of prior distribution ๐ ๐พ
๐ ๐พ ~๐ฑ 0, ๐น ๐ ๐พ ~๐ฑ 2 ๐น 3 , ๐น ๐๐ก: # sensors ๐๐๐ท๐น: # PCE samples ๐: PCE polynomial degree ๐๐๐ท: # MC samples ๐พ = ๐น1 ๐น2 ๐น3 ๐น4 ๐๐ก = 4, ๐๐๐ท๐น = 104, ๐ = 10, ๐๐๐ท = 5 ยท 103
Optimal position of ๐๐ก = 4 sensors, results of 10 algorithm runs
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Application: simply supported plate Effect of ฯ๐
2.4 2.5 2.6 2.7 2.8 2.9
๐~๐ช 0, ๐๐
2
๐พ = ๐น2 ๐๐ก = 1, ๐๐๐ท๐น = 104, ๐ = 10, ๐๐๐ท = 5 ยท 103
0.693 0.6935 0.694 0.6945 0.695 0.6955 0.696 0.6965 0.697 0.6926 0.6927 0.6928 0.6929 0.693 0.6931 0.6932 0.6933 0.6934 0.6935 0.6936
ฯ๐ = 10โ3 m ฯ๐ = 10โ4 m ฯ๐ = 10โ5 m ๐๐ก: # sensors ๐๐๐ท๐น: # PCE samples ๐: PCE polynomial degree ๐๐๐ท: # MC samples
Contour of the objective function with one sensor for each possible location
- n the plate with different standard deviations of the measurement noise.
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Application: simply supported plate Effect of ฯ๐ and number of sensors
๐~๐ช 0, ๐๐
2
๐พ = ๐น2 ๐๐๐ท๐น = 104, ๐ = 10, ๐๐๐ท = 5 ยท 103 ๐๐ก: # sensors ๐๐๐ท๐น: # PCE samples ๐: PCE polynomial degree ๐๐๐ท: # MC samples
Contour of the objective function with one sensor for different standard deviations and number of sensors.
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Conclusions
- Optimal sensor placement and SHM system design
- Take into account:
- Measurements uncertainties
- Number of sensors
- Maximization of expected information gain between prior and
posterior
- Use of surrogate model (PCE) for MC approximation and stochastic
- ptimization (CMA-ES) methods for computational speed-up
- Future developments: larger number of sensors, larger number of
parameters, application to complex cases
Bayesian optimal experimental design
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References
Bruggi, M., and Mariani, S. (2013). โOptimization of sensor placement to detect damage in flexible plates.โ Engineering Optimization, 45(6), 659โ676. Capellari, G., Eftekhar Azam, S., Mariani, S. (2016). โTowards real-time health monitoring of structural systems via recursive Bayesian filtering and reduced order modelling.โ International Journal of Sustainable Materials and Structural Systems, In Press. Hansen, N., Mรผller, S. D., Koumoutsakos, P. (2003). โReducing the time complexity of the derandomized evolution strategy with Covariance Matrix Adaptation (CMA-ES).โ Evolutionary Computation, 11(1), 1-18. Huan, X., and Marzouk, Y. M. (2013). โSimulation-based optimal Bayesian experimental design for nonlinear systems.โ Journal of Computational Physics, 232(1), 288โ317. Leyder, C., Ntertimanis, V., Chatzi, E., Frangi, A. (2015). โOptimal sensors placement for the modal identification of an innovative timber structure.โ Proceedings of the 1st International Conference on Uncertainty Quantification in Computational Sciences and Engineering, 467-476. Lindley, D. V. (1972). Bayesian Statistics, A Review, Society for Industrial and Applied Mathematics, SIAM. Marelli, S., and Sudret, B. (2015). UQLab User Manual, Chair of Risk, Safety & Uncertainty Quantification, ETH Zรผrich. Capellari, G., Chatzi, C., Mariani, S. (2016). An optimal sensor placement method for SHM based on Bayesian experimental design and Polynomial Chaos Expansion Proceedings of the VII European Congress
- n Computational Methods in Applied Sciences and Engineering.