Principles of Systematic Upscaling

Despite their dizzying speed, modern supercomputers are still incapable of handling many most vital scientific problems. This is primarily due to the scale gap, which exists between the microscopic scale at which physical laws are given and the much larger scale of phenomena we wish to understand. This gap implies, first of all, a huge number of variables (e.g., atoms or gridpoints or pixels), and possibly even a much larger number of interactions (e.g., one force between every pair of atoms). Moreover, computers simulate physical systems by moving few variables at a time; each such move must be extremely small, since a larger move would have to take into account all the motions that should in parallel be performed by all other variables. Such a computer simulation is particularly incapable of moving the system across large-scale energy barriers, which can each be crossed only by a large, coherent motion of very many variables. This type of obstacles makes it impossible, for example, to calculate the properties of nature’s building blocks (elementary particles, atomic nuclei, etc.), or to computerize chemistry and materials science, so as to enable the design of materials, drugs and processes, with enormous potential benefits for medicine, biotechnology, nanotechnology, agriculture, materials science, industrial processing, etc. With current common methods the amount of computer processing often increases so steeply with problem size, that even much faster computers will not do. Past studies have demonstrated that scale-born slownesses can often be overcome by multiscale algorithms. Such algorithms have first been developed in the form of fast multigrid solvers for discretized PDEs [1], [2], [3], [4], [13], [15], [14]. These solvers are based on two processes: (1) classical relaxation schemes, which are generally slow to converge but fast to smooth the error function; (2) approximating the smooth error on a coarser grid (typically having twice the meshsize), by solving there equations which are derived from the PDE and from the fine-grid residuals; the solution of these coarse-grid equations is obtained by using recursively the same two processes. As a result, large scale changes are effectively calculated on correspondingly coarse grids, based on information gathered from finer grids. Such multigrid solvers yield linear complexity , i.e., the solution work is proportional to the number of variables in the system. In many years of research, the range of applicability of these methods has steadily grown, to cover most major types of linear and nonlinear large systems of equations appearing in sciences and engineering. This has been accomplished by extending the concept of “smoothness” in various ways, finally to stand generally for any poorly locally determined solution component, and by correspondingly diversifying the types of coarse representations, to include for instance grid-free solvers (algebraic multigrid [7], [8], [9], [16]), non-deterministic problems ([10], [20], [21], [11], [12]) and multiple coarse-level representations for wave equations [5]. It has been shown (see survey [29]) that the inter-scale interactions can indeed eliminate all kinds of scale-associated difficulties, such as: slow convergence (in minimization processes, PDE solvers, etc.); critical slowing down (in statistical physics); ill-posedness (e.g., of inverse problems); conflicts between small-scale and large-scale representations (e.g., in wave problems, bridging the gap between wave equations and geometrical optics); numerousness of long-range interactions (in many body problems or integral equations); the need to produce many fine-level solutions (e.g., in optimal control, design and data assimilation problems), or a multitude of

[1]  A. Brandt Multi-level adaptive technique (MLAT) for fast numerical solution to boundary value problems , 1973 .

[2]  Shang‐keng Ma Renormalization Group by Monte Carlo Methods , 1976 .

[3]  D. Brandt,et al.  Multi-level adaptive solutions to boundary-value problems math comptr , 1977 .

[4]  A. Bensoussan,et al.  Asymptotic analysis for periodic structures , 1979 .

[5]  Robert H. Swendsen,et al.  Monte Carlo Renormalization Group , 1979 .

[6]  R. Swendsen Monte Carlo renormalization-group studies of the d=2 Ising model , 1979 .

[7]  E. Sanchez-Palencia Non-Homogeneous Media and Vibration Theory , 1980 .

[8]  A. Brandt,et al.  The Multi-Grid Method for the Diffusion Equation with Strongly Discontinuous Coefficients , 1981 .

[9]  J. Dendy Black box multigrid , 1982 .

[10]  A. Brandt Guide to multigrid development , 1982 .

[11]  C. D. Gelatt,et al.  Optimization by Simulated Annealing , 1983, Science.

[12]  M. Freidlin,et al.  Random Perturbations of Dynamical Systems , 1984 .

[13]  Convergent perturbation expansions for Euclidean quantum field theory , 1985 .

[14]  Wolfgang Hackbusch,et al.  Multi-grid methods and applications , 1985, Springer series in computational mathematics.

[15]  N. Kampen,et al.  Elimination of fast variables , 1985 .

[16]  Achi Brandt,et al.  Multi-level approaches to discrete-state and stochastic problems , 1986 .

[17]  Open problems in Monte Carlo renormalization group: Application to critical phenomena (invited) , 1986 .

[18]  Valwnal Ljdo OPEN PROBLEMS IN MONTE CARLO RENORMALIZATION GROUP APPLICATIONS TO CRITICAL PHENOMENON , 1986 .

[19]  A. Brandt Algebraic multigrid theory: The symmetric case , 1986 .

[20]  Goodman,et al.  Multigrid Monte Carlo method for lattice field theories. , 1986, Physical review letters.

[21]  William L. Briggs,et al.  A multigrid tutorial , 1987 .

[22]  J. W. Ruge,et al.  4. Algebraic Multigrid , 1987 .

[23]  N. Bakhvalov,et al.  Homogenisation: Averaging Processes in Periodic Media: Mathematical Problems in the Mechanics of Composite Materials , 1989 .

[24]  A. Brandt Multilevel computations of integral transforms and particle interactions with oscillatory kernels , 1991 .

[25]  A. Veretennikov,et al.  ON THE AVERAGING PRINCIPLE FOR SYSTEMS OF STOCHASTIC DIFFERENTIAL EQUATIONS , 1991 .

[26]  A. Brandt Multigrid methods in lattice field computations , 1992, hep-lat/9204014.

[27]  J. Banavar,et al.  The Heterogeneous Multi-Scale Method , 1992 .

[28]  Claude Boutin,et al.  Rayleigh scattering in elastic composite materials , 1993 .

[29]  Achi Brandt,et al.  Optimal multigrid algorithms for calculating thermodynamic limits , 1994 .

[30]  D. Y. Yoon,et al.  An optimized united atom model for simulations of polymethylene melts , 1995 .

[31]  M. Galun,et al.  Optimal multigrid algorithms for the massive Gaussian model and path integrals , 1996 .

[32]  A. Brandt,et al.  WAVE-RAY MULTIGRID METHOD FOR STANDING WAVE EQUATIONS , 1997 .

[33]  M. Galun,et al.  Optimal Multigrid Algorithms for Variable-Coupling Isotropic Gaussian Models , 1997 .

[34]  M. Fisher Renormalization group theory: Its basis and formulation in statistical physics , 1998 .

[35]  Achi Brandt,et al.  Multilevel Evaluation of Integral Transforms with Asymptotically Smooth Kernels , 1998, SIAM J. Sci. Comput..

[36]  Achi Brandt General Highly Accurate Algebraic Coarsening Schemes , 1999 .

[37]  K. Binder,et al.  Multiscale Computational Methods in Chemistry and Physics , 2000 .

[38]  S. McCormick,et al.  A multigrid tutorial (2nd ed.) , 2000 .

[39]  Paul C. Martin Statistical Physics: Statics, Dynamics and Renormalization , 2000 .

[40]  Wen Chen,et al.  Nonlocal Dispersive Model For Wave Propagation In Heterogeneous Media . Part 2 : Multi-Dimensional Case , 2001 .

[41]  D. Ron,et al.  Renormalization Multigrid (RMG): Statistically Optimal Renormalization Group Flow and Coarse-to-Fine Monte Carlo Acceleration , 2001 .

[42]  Elisa Ercolessi,et al.  The Renormalization Group and Critical Phenomena , 2001 .

[43]  E Weinan,et al.  The Heterogeneous Multi-Scale Method , 2002 .

[44]  Jacob Fish,et al.  Non‐local dispersive model for wave propagation in heterogeneous media: one‐dimensional case , 2002 .

[45]  C. W. Gear,et al.  'Coarse' integration/bifurcation analysis via microscopic simulators: Micro-Galerkin methods , 2002 .

[46]  A. Brandt Multiscale Scientific Computation: Review 2001 , 2002 .

[47]  Constantinos Theodoropoulos,et al.  Equation-Free Multiscale Computation: enabling microscopic simulators to perform system-level tasks , 2002 .

[48]  Achi Brandt,et al.  Multilevel Monte Carlo methods for studying large scale phenomena in fluids , 2003 .

[49]  D. Ron,et al.  Multigrid Solvers and Multilevel Optimization Strategies , 2003 .

[50]  I. Kevrekidis,et al.  Coarse molecular dynamics of a peptide fragment: Free energy, kinetics, and long-time dynamics computations , 2002, physics/0212108.

[51]  Ioannis G. Kevrekidis,et al.  Projective Methods for Stiff Differential Equations: Problems with Gaps in Their Eigenvalue Spectrum , 2002, SIAM J. Sci. Comput..

[52]  Ioannis G. Kevrekidis,et al.  Coarse projective kMC integration: forward/reverse initial and boundary value problems , 2003, nlin/0307016.

[53]  Ioannis G. Kevrekidis,et al.  Equation-free: The computer-aided analysis of complex multiscale systems , 2004 .

[54]  A. Stuart,et al.  Extracting macroscopic dynamics: model problems and algorithms , 2004 .

[55]  Jacob Fish,et al.  Discrete-to-continuum bridging based on multigrid principles , 2004 .

[56]  Jacob Fish,et al.  Space?time multiscale model for wave propagation in heterogeneous media , 2004 .

[57]  A. Brandt,et al.  Multiscale solvers and systematic upscaling in computational physics , 2005, Comput. Phys. Commun..

[58]  A. Brandt,et al.  Systematic Upscaling for Feynman Path Integrals A Progress Report , 2005 .

[59]  Isaías Hernández Hernandez Ramirez,et al.  Multilevel multi-integration algorithm for acoustics , 2005 .

[60]  T. Manteuffel,et al.  Adaptive Smoothed Aggregation ( α SA ) Multigrid ∗ , 2005 .

[61]  Thomas A. Manteuffel,et al.  Adaptive Smoothed Aggregation (AlphaSA) Multigrid , 2005, SIAM Rev..

[62]  Ioannis G. Kevrekidis,et al.  Strong convergence of projective integration schemes for singularly perturbed stochastic differential systems , 2006 .

[63]  Jacob Fish,et al.  A generalized space–time mathematical homogenization theory for bridging atomistic and continuum scales , 2006 .

[64]  A. Brandt Methods of Systematic Upscaling , 2006 .

[65]  Jacob Fish,et al.  Generalized mathematical homogenization of atomistic media at finite temperatures in three dimensions , 2007 .

[66]  Olof Runborg,et al.  Multi-scale methods for wave propagation in heterogeneous media , 2009, 0911.2638.

[67]  Wen Chen,et al.  Nonlocal Dispersive Model For Wave Propagation In Heterogeneous Media . Part 1 : One-Dimensional Case , 2022 .