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Probabilistic Modeling, Multiscale and Validation Roger Ghanem University of Southern California Los Angeles, California PCE Workshop, USC, August 21st 2008. Outline Introduction and Objectives Representation of Information Model Validation Efficiency Issues Introduction • Objectives: – Determine certifiable confidence in model-based predictions: • Certifiable = amenable to analysis • Accept the possibility that certain statements, given available resources, cannot be certified. – Compute actions to increase confidence in model predictions: change the information available to the prediction. • More experimental/field data, more detailed physics, more resolution for numerics… • Stochastic models package information in a manner suitable for analysis: – Adapt this packaging to the needs of our decision-maker • Craft a mathematical model that is parameterized with respect to the relevant uncertainties. Two meaningful questions Nothing new here. What is new is: sensor technology computing technology Can/must adapt our “packaging” of information and knowledge accordingly. Theoretical basis: Cameron-Martin Theorem The polynomial chaos decomposition of any square-integrable functional of the Brownian motion converges in mean-square as N goes to infinity. For a finite-dimensional representation, the coefficients are functions of the missing dimensions: they are random variables (Slud,1972). Representation of Uncertainty The random quantities are resolved as surfaces in a normalized space: Independent random variables Multidimensional Orthogonal Polynomials These could be, for example: • Parameters in a PDE • Boundaries in a PDE (e.g. Geometry) • Field Variable in a PDE Dimension of vector complexity of reflects Representation of Uncertainty Uncertainty in model parameters Uncertainty due to small experimental database or anything else. Dimension of vector complexity of reflects Characterization of Uncertainty Galerkin Projections Maximum Likelihood Maximum Entropy Bayes Theorem Ensemble Kalman Filter Uncertainty Propagation: Stochastic Projection Example Application: W76 Foam study System has 10320 HEX elements. Stochastic block has 2832 elements. Foam domain. 1. Modeled as non-stationary random field. Built-up structure with shell, foam and devices. 2. Accounting for random and structured variations 3. Limited observations are assumed: selected 30 locations on the foam. Limited statistical observations: Correlation estimator from small sample size: interval bounds on correlation matrix. Example Application: W76 Foam study Polynomial Chaos representation of epistemic information Constrained polynomial chaos construction Radial Basis function consistent spatial interpolation Cubature integration in high-dimensions Foam study Statistics of maximum acceleration Histogram of average of maximum acceleration Foam study Statistics of maximum acceleration Plots of density functions of the maximum acceleration Effect of missing information CDF of calibrated stochastic parameters (3 out of 9 shown) Estimate %95 probability box Remarks: Confidence intervals are due to finite sample size. Validation Challenge Problem Criterion for certifying a design (we would like to assess it without fullscale experiments: Treated as a random variables: Sample Mean of Sample Variance of 0.0835 0.000830 Remark: Based on only 25 samples. Efficiency Issues: Basis Enrichment Solution with 3rd order chaos Solution with 3rd order chaos and enrichment Exact solution NANO-RESONATOR WITH RANDOM GEOMETRY NANO-RESONATOR WITH RANDOM GEOMETRY semiconductor conductor OBJETCIVE: 1. Determine requirements on manufacturing tolerance. 2. Determine relationship between manufacturing tolerance and performance reliability. APPROACH Define the problem on some underlying deterministic geometry. Define a random mapping from the deterministic geometry to the random geometry. Approximate this mapping using a polynomial chaos decomposition. Solve the governing equations using coupled FEM-BEM. Compare various implementations. TREATMENT OF RANDOM GEOMETRY Ref: Tartakovska & Xiu, 2006. GOVERNING EQUATIONS Elastic BVP for Semiconductor: Interior Electrostatic BVP : Exterior Electrostatic BVP : A couple of realizations of solution (deformed shape and charge distribution) More Significant Probabilistic Results PDF of Vertical Displacement at tip. PDF of Maximum Principal Stress at a point. Typical Challenge Comparison of Monte Carlo, Quadrature and Exact Evaluations of the Element Integrations Using Components of Existing Analysis Software Only one deterministic solve required. Minimal change to existing codes. Need iterative solutions with multiple right hand sides. Integrated into ABAQUS (not commercially). Implementation: Sundance Non-intrusive implementation Implementation: Dakota Example Application (non-intrusive) Example Application (non-intrusive) joints Example Application Example Application Conclusions Personal Experience: Every time I have come close to concluding on PCE, new horizons have unfolded in Applications Models Algorithms Software