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Computing Waves in the Face of Uncertainty

Computing Waves in the Face of Uncertainty. E. Bruce Pitman Department of Mathematics University at Buffalo pitman@buffalo.edu. Part of a large project investigating geophysical mass flows. Interdisciplinary research project funded by NSF (ITR and EAR) UB departments/people involved:

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Computing Waves in the Face of Uncertainty

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  1. Computing Waves in the Face of Uncertainty E. Bruce Pitman Department of Mathematics University at Buffalo pitman@buffalo.edu

  2. Part of a large project investigating geophysical mass flows • Interdisciplinary research project funded by NSF (ITR and EAR) • UB departments/people involved: • Mechanical engineering: A Patra, A Bauer, T Kesavadas, C Bloebaum, A. Paliwal, K. Dalbey,N. Subramaniam, P. Nair, V. Kalivarappu, A. Vaze, A. Chanda • Mathematics: E.B. Pitman, C Nichita, L. Le • Geology: M Sheridan, M Bursik, B.Yu, B. Rupp, A. Stinton, A. Webb, B. Burkett • Geography (National Center for Geographic Information and Analysis): CRenschler, L. Namikawa, A. Sorokine, G. Sinha • Center for Computational.Research M Jones, M. L. Green • Iowa State University E Winer

  3. Mt. St. Helens, USA

  4. Volcan Colima, Mexico

  5. Atenquique, Mexico 1955

  6. Atenquique, Mexico 1955

  7. San Bernardino Mountain: Waterman Canyon

  8. Guinsaugon. Phillipines, 02/16/06 Heavy rain sent a torrent of earth, mud and rocks down on the village of Guinsaugon. Phillipines, 02/16/06. A relief official says 1,800 people are feared dead.

  9. Ruapehu, New Zealand

  10. Pico de Orizaba, Mexico Ballistic particle Simulations of pyroclastic flows and hazard map at Pico de Orizaba -- hazard maps by Sheridan et. al.

  11. “Hazard map” based on flow simulations and input uncertainty characterizations Regions for which probability of flow > 1m for initial volumes ranging from 5000 m3 to 108 m3 -- flow volume distribution from historical data

  12. Introduction • Geophysical flows e.g. rock falls, debris flows, avalanches, volcanic lava flows may have devastating consequences for the human population • Need “what if …?” simulation tool to estimate hazards for formulating public safety measures • We have developed TITAN2D • Simulate flows on natural terrain, • Be robust, numerically accurate and run efficiently on a large variety of serial and parallel machines, • Quantify the effect of uncertain inputs • Have good visualization capabilities.

  13. Goals of this talk • Basic mathematical modeling • Will not address extensions such as erosion, two phase flows, that are important in the field • Uncertainty Quantification • Hyperbolic PDE system – poses special difficulties for uncertainty computations • Ultimate aim is Hazard Maps

  14. Modeling Savage , Hutter, Iverson, Denlinger, Gray, Pitman, …

  15. Modeling • Many models – complex physics is still not perfectly represented ! • Savage-Hutter Model • Iverson-Denlinger mixture theory Model • Pitman-Le Two-phase model • Debris Flows are hazardous mixture of soil, rocks, clasts with interstitial fluid present

  16. Micromechanics and Macromechanics • Characteristic length scales (from mm to Km) • e.g. for Mount St. Helens (mudflow –1985) • Runout distance  31,000 m • Descent height  2,150 m • Flow length(L)  100-2,000 • Flow thickness(H)  1-10 m • Mean diameter of sediment material 0.001-10 m (data from Iverson 1995, Iverson & Denlinger 2001)

  17. flowing mass ground Model Topography and Equations(2D) Upper free surface Fs(x,t) = s(x,y,t) – z = 0, Basal material surface Fb(x,t) = b(x,y) – z = 0 Kinematic BC: Iverson and Denlinger JGR, 2001; Pitman et. al. Phys. Fluids, 2003; Patra et. al, JVGR, 2005

  18. Model System-Basic EquationsSolid Phase Only The conservation laws for a continuum incompressible medium are: stress-strain rate relationship derived from Coulomb theory [Aside: this system of equations is ill-posed (Schaeffer 1987)] Boundary conditions for stress: d: basal friction angle

  19. Model System-Scaling Scaling variables are chosen to reflect the shallowness of the geophysical mass L– characteristic length in the downstream and cross-stream directions (Ox,Oy) H – characteristic length in normal direction to the flow (Oz) Drop (most) terms of O()

  20. Model System-Depth Average Theory Depth average where is the avalanche thickness z– dimension is removed from the problem - e.g. for the continuity equation: where are the averaged lateral velocities defined as:

  21. Modeling of Granular Stresses Earth pressure coefficient is employed to relate normal stresses Shear stresses assumed proportional to normal stresses Hydraulic assumption in normal direction

  22. Model System – 2D Depth averaging and scaling: Hyperbolic System of balance laws continuity x momentum • Gravitational driving force • Resisting force due to Coulomb friction at the base • Intergranular Coulomb force due to velocity gradients normal to the direction of flow 1 2 3

  23. Uncertainty Dalbey, Patra

  24. Modeling and Uncertainty “Why prediction of grain behavior is difficult in geophysical granular systems”” • “…there is no universal constitutive description of this phenomenon as there is for hydraulics” • the variability of granular agglomerations is so large that fundamental physics is not capable of accurately describing the system and its variations P. Haff(Powders and Grains ’97)

  25. Uncertainty in Outputs of Simulations of Geophysical Mass Flows • Model Uncertainty • Model Formulation: Assumptions and Simplifications • Model Evaluation: Numerical Approximation, Solution strategies – error estimation • Data Uncertainty • propagation of input data uncertainty

  26. Modeling Uncertainty • Sources of Input Data Uncertainty • Initial conditions – flow volume and position • Bed and internal friction parameters • Terrain errors • Erosion and two phase model parameters

  27. INPUT UNCERTAINTY PROPAGATION • Model inputs – material, loading and boundary data are always uncertain • range of data and its distributions may be estimated • propagate input range and distribution to an output range and distributions e.g. maximum strain, maximum excursion • How does uncertain input produce a solution distribution?

  28. Effect of different initial volumes Left – block and Ash flow on Colima, V =1.5 x 105 m3 Right – same flow -- V = 8 x105 m3

  29. Effect of initial position, friction angles Figure shows output of simulation from TITAN2D – A) initial pile location, C) and D) used different friction angles, and, F) used a perturbed starting location Figure shows output of simulation From TITAN2D – A) initial pile location, C) and D) used different friction angles,and, F) used a perturbed starting location Figure shows output of simulation From TITAN2D – A) initial pile location, C) and D) used different friction angles,and, F) used a perturbed starting location

  30. Comparison of Models San Bernardino Single phase model – water with frictional dissipation term! Single phase model – low basal friction 4 deg!

  31. Comparison of Models 70% solid fraction 50% solid fraction

  32. Quantifying Uncertainty -- Approach Methods • Monte Carlo (MC) • Latin Hypercube Sampling (LHS) • Polynomial Chaos (PC) • Non Intrusive Spectral Projection (NISP) • Polynomial Chaos Quadrature (PCQ) • Stochastic Collocation } Random sampling based } Functional Approximation

  33. Quantifying Uncertainty -- MC Approach • Monte Carlo (MC): random sampling of input pdf • Moments can be computed by running averages e.g. mean and standard deviation is given by: Central Limit Theorem : • Computationally expensive. Estimated computational time for 10-3 error in sample TITAN calculation on 64 processors ~ 217 days

  34. Latin Hypercube Sampling -- MMC McKay 1979, Stein 1987, … • For each random direction (random variable or input), divide that direction into Nbin bins of equal probability; • Select one random value in each bin; • Divide each bin into 2 bins of equal probability; the random value chosen above lies in one of these sub-bins; • Select a random value in each sub-bin without one; • Repeat steps 3 and 4 until desired level of accuracy is obtained.

  35. Functional Approximations • In these approaches we attempt to compute an approximation of the output pdf based on functional approximations of the input pdf • Prototypical method of this is the Karhunen Loeve expansion

  36. Quantifying Uncertainty -- Approach Wiener ’34, Xiu and Karniadakis’02 • Polynomial Chaos (PC): approximate pdf as the truncated sum of infinite number of orthogonal polynomials yi • Multiply by ym and integrate to use orthogonality

  37. Chaos solver

  38. PC for Burger’s equation Let= kk U= UiI i=1..n k=1..n Multiply by ψm and integrate Coupled across all Equations m=1..n

  39. Polynomial Chaos Quadrature • Instead of Galerkin projection, integrate by quadrature weights • Analogy with • Non-Intrusive Spectral Projection • Stochastic Collocation • Leads to a method that has the simplicity of MC sampling and cost of PC • Can directly compute all moment integrals • Efficiency degrades for large number of random variables

  40. NISP Replace integration with quadrature and interchange order of integration of time and stochastic dimension

  41. Polynomial Chaos Quadrature (PCQ)

  42. Quantifying Uncertainty -- Approach PCQ: a simple deterministic sampling method with sample points chosen based on an understanding of PC and quadrature rules

  43. Quantification of Uncertainty • Test Problem • Application to flow at Volcan Colima • Starting location, and, • Initial volume are assumed to be random variables distributed according to assumption, or available data

  44. Test Problem Burgers equation Figure shows statistics of time required to reach steady state for randomly positioned shock in initial condition; PCQ converges much faster than Monte Carlo

  45. Quantifying Uncertainty Starting location Gaussian with std. deviation of 150m Mean Flow Flow from starting locations 3 std. dev away Mean Flow Flow from starting locations 3 std. dev away

  46. Application to Volcan Colima Initial volume  uniformly distributed from 1.57x106 to 1.57x107 Mean and standard deviation of flow spread computed with MC and PCQ Monte Carlo PCQ

  47. Mean Flow for Volcan Colima for initial volume uncertainty

  48. Mean+3std. dev for Volcan Colima -- initial volume uncertainty

  49. “Hazard Map” for Volcan Colima Probability of flow Exceeding 1m for Initial volume ranging From 5000 to 108 m3 And basal friction from 28 to 35 deg

  50. Conclusions • PCQ is an attractive methodology for determining the solution distribution as a consequence of uncertainty • Find full pdf • Curse of dimensionality still strikes • MC, LH, NISP, Point Estimate methods, PCQ – which to use depends on the problem at hand

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