Analysis of spatio-temporal phenomena is becoming important with the increasing use of large repositories of remote-sensing images and video-streams. In fact, modern society's need for analysis of temporal evolution of complex spatial systems far outpaces the technological, engineering and mathematical advances made so far. Spatial structures encountered in actual practice are often nontrivial due to long memory, or due to presence of "rough" geometrical constraints, and the existing analytical tools fail to describe spatio-temporal evolution of such systems, making solution of necessary parameter estimation and prediction problems very challenging. This project addresses some of these challenges and focuses on the analysis of continuous stochastic evolution equations driven by Volterra random fields, which lack martingale and Markov structures. More specifically, the research will deal with the following major areas: 1. Analysis of multiparameter Volterra random fields (this includes construction of strong/weak martingale transforms generating the same natural filtration as the Volterra field, study of integrated Volterra kernels with respect to non-Gaussian martingales, analysis of Volterra random fields with infinite-dimensional parameter spaces, development of efficient simulation techniques for Volterra multiparameter fields); 2. Development of stochastic calculus with respect to Volterra random fields and the study of local time for Volterra processes; 3. Analysis of stochastic evolution equations driven by Volterra random fields (including the study of parabolic SPDEs perturbed by Volterra-type noise, analysis of stochastic evolution equations arising in nonlinear filtering of random fields when the observation noise has Volterra structure, representations and construction of suboptimal filters in that setting, development of numerical techniques for ``denoising" of images with long-memory spatial structure. Stochastic evolution equations arising from systems of interacting randomly moving particles, which are subject to Volterra-type noises, will also be studied. 4. Inference for evolution equations driven by Volterra fields (estimation of coefficients when the Volterra kernel is known, plus estimation of parameters of the Volterra kernel itself). The results are expected to be useful in a wide variety of complex spatial systems, as they evolve in time. The project has a substantial nonlinear filtering component, which naturally enjoys applications in a great number of settings where image/video ``denoising" is important. These range from tracking hurricanes via satellites to medical procedures involving analysis of spatial data streams that are recorded and transmitted by various devices.

Everyday we are surrounded by complex systems and are awash in spatial data. The importance of analysis and modelling of spatial phenomena is growing with the increasing use of remote-sensing images and video-streams arising in such diverse areas as geological and astrophysical sciences, climatology, biomedical applications and studies of population dynamics. Specific applications include Mobile-commerce industry (location based services), NASA's study of climatological effects of El Nino, land-use classification and global warming using satellite imagery, analysis of evolution of stars and galaxies via remote and Earth-based telescopes, studies by National Institute of Health on predicting spread of disease and epidemic control, not to mention ``routine" analysis of traffic and infrastructure trends on the basis of specialized maps, which represent noisy ``snapshots" of the state of complex spatial dynamical system taken at particular points in time. The use of random fields, which allow to take into account spatial interactions among variables in complex systems, is an increasingly important tool used in numerous problems of statistical mechanics, spatial statistics, neural network modelling, and others. At the same time many of the above real-life applications lack mathematically convenient Markov and martingale (spatial) structures, making the majority of available analytical tools inadequate. This project aims to address these challenges and to develop a theory of stochastic evolution equations driven by a large class of random fields, called Volterra random fields, which lack martingale and Markov structures and allow for a wide range of (both, long and short) memory and pathwise properties. The project also has a significant nonlinear filtering component, which naturally enjoys applications in a great number of scientific and commercial settings where spatial filtering and image and video denoising are important. The research results emanating from this grant aim to advance the current state-of-the-art in stochastic analysis and will promote use of probabilistic methods among scientists in other areas. This encourages interaction between researchers with varying backgrounds and ultimately leads to new ideas, techniques and conclusions in each of those fields. For example, complex media, with its important applications and underlying microscopic processes, is typically linked to long-term memory, long-range interactions and non-Markovian kinetics. Some of the examples of the latter include processes in systems of many coupled elements, colloidal aggregates and chemical reaction medium, porous media, quantum mechanics and quantum field theory, plasma physics, magnetosphere and many other fields. The project also has a substantial educational component.

Agency
National Science Foundation (NSF)
Institute
Division of Mathematical Sciences (DMS)
Application #
0807635
Program Officer
Tomek Bartoszynski
Project Start
Project End
Budget Start
2008-07-01
Budget End
2009-12-31
Support Year
Fiscal Year
2008
Total Cost
$84,659
Indirect Cost
Name
University of Michigan Ann Arbor
Department
Type
DUNS #
City
Ann Arbor
State
MI
Country
United States
Zip Code
48109