1 / 28

Introduction (1/2)

august
Download Presentation

Introduction (1/2)

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Advances in methods for uncertainty and sensitivity analysisNicolas DevictorCEA Nuclear Energy Divisionnicolas.devictor@cea.frin co-operation with:Nadia PEROT, Michel MARQUES and Bertrand IOOSS (CEA)Julien JACQUES (INRIA Rhône-Alpes, PhD student),Christian LAVERGNE (Montpellier 2 University & INRIA).International Workshop on level 2 PSA and Severe Accident Management Koln, Germany, March 2004

  2. Introduction (1/2) • In the framework of the study of the influence of uncertainties on the results of severe accidents computer codes, and then on results of Level 2 PSA (responses, hierarchy of important inputs…) • Why taken account uncertainty ? • A lot of sources of uncertainty ; • To show explicitly and tracebly their impact  decision process that could be robust against uncertainties. • Probabilistic framework is one of the tools for a coherent and rational treatment of uncertainties in a decision-making process. • Some applications of treatment of uncertainty by probabilistic methods • For a best understanding of a phenomenon • To evaluate the most influential input variables. To steer R&D. • For an improvement of a modelling or a code • Calibration, Qualification… • In a risk decision-making process • Hierarchy of contributors  interest for actions to reduce uncertainty or to define a mitigation mean (for example a SAM measure) • Confidence intervals or probabilistic density functions or margins… • In any analysis, we must keep in mind the choice in modelling and the assumptions. • Case : a variable has a big influence on the response variability, but we have a low confidence on his value…

  3. Sources of uncertainties Real phenomenon Human understanding Simplified model… Theory Input variables « mathematics » Equations Code Output Meaning ? Variability ? Numerical schemes Convergence criteria … Model parameters

  4. Introduction (2/2) • A lot of methods exist, but these methods are often not suitable, from a theoretical point of view, when • the phenomena that are modelled by the computer code are discontinuous in the variation range of influent parameters; • input variables are statistically dependent. • For an overview of the method  see paper • The talk will mainly speak about: • Sensitivity analysis in the case of dependent input variables. • The validation of response surfaces. • The estimation of the additional error that is introduced by the use of a response surface on the results of the uncertainty and sensitivity analysis. • Clustering methods, that could be useful when we want apply statistical methods based on Monte-Carlo simulation.

  5. Uncertainties on: • physical variables, • model parameters, • models… Process (codes, experiences…) • Uncertainty on outputs • Probability Y > Ytarget • Most influential variables (in this talk) “influence of uncertainties” means: • Inputs for the study • Probabilistic models of the uncertainties on physical variables and parameters ; • Mathematical model of the ageing or failure phenomenon ; • Acceptance criterion • Propagation of uncertainties Probability to exceed a threshold Sensitivity analysis

  6. Sensitivity analyses y = f(x1, … , xp)(where y could be a probability) • 1st Question : what is the impact of a variation of the value of an input variable on the value of the response Y ? • Gradient, differential analysis • Often deterministic approach • 2nd Question : what is the part of the variance of Y that comes from the variance of Xi (or a set {Xi}) ? • Usual sensitivity indices • Pearson’s correlation coefficient, Spearman’s correlation coefficient, Coefficients from a linear regression, PRCC… • In the case of non linear or non monotonous : Sobol’s method or FAST • with very time consuming code (use of response surface), • problems with correlated uncertainties. • All these indices are defined under the assumptions that the variables inputs are satistically independent.

  7. Sensitivity analyses – dependent inputs • The problem of sensitivity analysis for model with dependant inputs is a real one, and concerns the interpretation of sensitivity indices values. • Inputs are statistically independent the sum of these sensitivity indices = 1. • Inputs are statistically dependent • the terms of model function decomposition (Sobol’s method) are not orthogonal, so it appears a new term in the variance decomposition.  the sum of all order sensitivity indices is not equal to 1. • Effectively, variabilities of two correlated variables are linked, and so when we quantify sensitivity to one of this two variables we quantify too a part of sensitivity to the other variable. And so, in sensitivity indices of two variables the same information is taken into account several times, and sum of all indices is thus greatest than 1. • We have studied the natural idea: to define multidimensional sensitivity indices for groups of correlated variables. • We can also define higher order indices and total sensitivity indices. • If all input variables are independent, those sensitivity indices are the same than in case of independant variables. • The assessment is often time consuming (extension of Sobol’s method)  some computational improvementsare in progress and very promising.

  8. Response surface method • Interest for a response surface (or meta-model or surrogated model): • Good capability in approximation (study on the training sample) ; • Good capability in prediction ; • Low CPU time for a calculation. • Data needed in a Response Surface Method (RSM) : • a training sample D of points (x(i), z(i)), where P(X,Z) the probability law of the random vector (X,Z) (unknown in practice) ; • a family F of function f(x,c), where c is either a parameter vector or a index vector that identifies the different elements of F. • The best function in the family F is then the function f0 that minimized a risk function : • In practice, often use of an empirical risk function :

  9. Examples of response surface • Polynomial models • Generalized Linear Models (GLM) • Regression models (assumption : continuous function). • Other possibility : discriminant function (logit, probit models). • Qualitative and quantitative inputs. • Thin plate spline • Regression models (assumption : continuous function). • PLS (Partial Least Squares) • Regression models (assumption : continuous function). • Qualitative and quantitative inputs. • Neural networks • Regression models (assumption : continuous function). • Other possibility : discriminant function (logit, probit models). • A simplified « physical » model (3D 1D, …)

  10. With regard to the validation step • The characteristic « good approximation » is subjective and depends on the use of the response surface. • What is the future use of the built response surface ? • What are the constraints that are forced by the use ? • How to define the validity domain of a response surface ? • Calibration, modelling, prediction, probability computation… • Specific criteria in the decision making process • Conservatism / A bound on the remainder / Better accuracy in a interest area (distribution tail…). • How defines the expected accuracy ? • Ratio “residual deviance / null deviance” ? • Calibration : representativeness of the most influential parameters, • Prediction : robustness : bias/variance compromise, • The quality of the response surface should be compatible with the accuracy of the studied code.

  11. Validation of a response surface Statistics (often under assumptions like Gauss-Markov assumptions…) • Variance analysis • Estimator of the variance s² • R² statistics • Confidence area 1-d for coefficients c ... Prediction : test base (bias), cross validation • Bootstrap method • to improve the estimation of the bias between learning and generalization error, • to estimate the sensitivity of the trained model f in relation to available data. • Comparison of results • Pdf of the output, Confidence interval…

  12. Example : The direct containment heating (DCH) • In the framework of a contract with the PSA Level 2 project at IRSN (in 2000). • Code : RUPUICUV module of Escadre ( Model has changed since 2000) • The calculations have been performed with the in2000. A database of 300 calculations is available. The inputs vectors for these calculations have been generated randomly in the variation domain. • Responses • maximum pressure in the containment; • the presence of corium in the containment outside the reactor pit; it is a discrete response with value 0 (no corium) or 1 (presence). • Inputs variables • MCOR : mass of corium, uniformly distributed between 20 and 80 tons, • FZRO : fraction of oxyded Zr, uniformly distributed between 0,5 and 1, • PVES : primary pressure, uniformly distributed between 1 and 166 bars, • DIAM : break size, uniformly distributed between 1 cm and 1 m, • ACAV : section de passage dans le puits de cuve (varie entre 8 and 22 m 2 ) • FRAC : fraction of corium directly ejected in the containment, uniformly distributed between 0 and 1, • CDIS : discharge coefficient at the break, uniformly distributed between 0,1 and 0,9, • KFIT : adjustment parameter, uniformly distributed between 0,1 and 0,3, • HWAT : water height in the reactor pit, discrete random variable (0 or 3 meter)

  13. Example : maximum pressure (1/2) • Use of the empirical risk function • Approximation capabilities : all the RS seems good • Prediction capabilities : • Non negligible residues

  14. Example : maximum pressure (2/2) Training sample Test sample

  15. About the impact of response surface « error » • Use of a RS in an UASA  a bias or an error on the results of the uncertainty and sensitivity analysis. • Usual questions are: • What is the impact of this “error” on the results of an uncertainty and sensitivity analysis made on a response surface? • Can we deduce results on the “true” function from results obtained from a response surface? •  “residual function”(x1, …, xp) = RS(x1, …, xp) - f(x1, …, xp) • Assume that all Xi are independent, and sensitivity analysis have been done on the two function RS and , and we note SRS,i and S,i the computed sensitivity analysis. V(E(f(X1, …, Xp)/Xi)) from SRS,i and S,i is: • Problem of the computation of the covariance termgenerally impossible to deduce results on the “true” function from results obtained from a RS. • Only cases where results can be deduce are : • SR is a truncated model obtained from a decomposition in a orthogonal basis; •  is not very sensitive of the variables X1, …, Xp SSR,i / (V((x1, …, xp))+V(SR(x1, …, xp)))

  16. Discontinuous model • No usual response surface family is suitable. • In practice, discontinuous behaviour means generally that more than one physical phenomenon is implemented in the code. • To avoid misleading in interpretation of results of uncertainty and sensitivity analysis, discriminant analysis should be used to define areas where the function is continuous. Analysis are led on each continuous area. • Possible methods: • neural networks with sigmoid activation function, • GLM models with a logit link or logistic regression, • Vector support machine • Decision tree, and variants like random forest… • Practical problems are often encountered if the sample is « linearly separable ». • Support vector machines and methods based on Decision Trees are very promising for that case.

  17. Example : presence of corium in the containment • First tool  generalized linear model with a logit link. • It exists always a model that explains 100% of the dispersion of the results for the training set. • But there is some drawbacks : • the list of the terms that are statistically significant varies strongly with the training set; • the prediction error is around 20%. • Use of neural networks  similar problems. • Other methods SVM, decision trees and random forest • Conclusion (for that example) • The most efficient method is the Random Forest method. • The methods J48 and Random Forest are faster than the algorithms based on optimisation step (like Naïve Bayes, SVM, Neural Network…). • The principle of decision trees and random forest is simple and based on the building of a set of logical combination of decision rules. They are often very readable, and have very prediction capabilities (like shown by the example).

  18. Example : presence of corium in the containment A more global indicator of the quality (approximation + prediction capabilities) of the model is obtained by cross validation method.

  19. Conclusions • A lot of methods exist for UASA in the framework of level 2 PSA and severe accident codes. • As these methods are often not suitable, from a theoretical point of view, when • the phenomena that are modelled by the computer code are discontinuous in the variation range of influent parameters; • input variables are statistically dependent, new results and ideas to overcome these problems have been described in the paper. • Practical interest of these “new” methods should be confirmed, by application on « real » problems.

  20. Response uncertainty • Probability distribution • Simulation + fit + statistical tests (asymptotical) • First statistical moments • Statistics on a sample (convergence, Bootstrap) • Approximation of the standard deviation • Confidence interval • From the density function • Wilks formula

  21. Monte-Carlo Simulations • Variance reduction methods: conditional MC, stratified MC, Hypercube Latin • More suitable for the computation of a probability : importance sampling, directional simulation • Practical problem with very time consuming codeResponse surface

  22. FORM/SORM Methods • Probabilistic transformation Z U (Ui is N(0,1)-distributed and are independents) • In U-space, a new failure surface G(U)=H(T(Z))=0 • Design point and Hasofer-Lind index U* • FORM approximation • SORM approximation (Breitung) • Sensitivity factors

  23. FORM – simple case • Ramdom variables : N(0,1)-distributed and are independents • Limit state function : hyper plane

  24. Validation of the FORM/SORM results • Sets of results : FORM, SORM, Conditional importance sampling, etc. • Comparison of FORM, SORM and Conditional Importance Sampling (CIS) results • Coherence of all these results ? • If yes, a good confidence is obtained in FORM result and geometrical assumption of FORM method. • Coherence of FORM and CIS results ? • If yes, a good confidence is obtained in FORM result and the geometrical assumption of FORM method. • Coherence of SORM and CIS results ? • If yes, a good confidence is obtained in SORM result, and the geometrical assumption of FORM method is false. • If no coherence • Geometrical assumptions for FORM and SORM are false. • Existence of other minima ? • Monte-Carlo simulation or a variance reduction method (with or without a response surface). • New tests have been developed to check that the computed minimum is a global minimum (non negligible costs).

  25. Conditional importance sampling

  26. Comparison of methods

  27. Examples of response surface • Polynomial models • Generalized Linear Models (GLM) • Regression models (assumption : continuous function). • Other possibility : discriminant function (logit, probit models). • Qualitative and quantitative variables. • Thin plate spline • Regression models (assumption : continuous function). • Qualitative (if 2 factors) and quantitative variables. • PLS (Partial Least Squares) • Regression models (assumption : continuous function). • Qualitative and quantitative variables. • Neural networks • Regression models (assumption : continuous function). • Other possibility : discriminant function (logit, probit models). • Qualitative (if 2 factors) and quantitative variables.

More Related