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Department of Mathematical Sciences

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Title: Department of Mathematical Sciences


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Department of Mathematical Sciences
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  • 40 Faculty
  • 41 Graduate Students
  • Approximately 80 Undergraduate Students

27
Research Areas
  • Applied Mathematics
  • Statistics
  • Combinatorics and Pure Math
  • Mathematics Education

28
  • Applied Mathematics
  • Computational Engine Research F. Tanner
  • Simulation of Food Sprays F. Tanner
  • Multiphase Fluid Systems K. Feigl
  • Cardiac Dynamics W. Ying
  • Computational Biology L. Zhang

March 2008
Computing Initiative
29
  • Computational Engine Research
  • Modeling of flow, spray and combustion processes

Prof. Franz Tanner
30
Computational Engine Research
  • Motivation
  • Health and Environmental
  • Sustainability
  • Main Objectives
  • Understand physical processes
  • Develop simulation tools
  • Results
  • Strategy to minimize fuel consumption and
    emissions
  • Multi-orifice asynchronous injection

Mass fraction of an evaporating fuel spray
31
Modeling of Food Sprays
  • Motivation
  • Spray-drying and spray-freezing
  • Encapsulation of nutrients
  • Main Objectives
  • Obtain desired drop size distributions
  • Maximize production
  • Modeling Challenges/Research
  • Complex flows and materials
  • Phase changes

Air-assisted atomization of a nutriose liquid
spray
32
  • Simulation of flow of complex fluids
  • Collaborations with ETH-Zurich and University of
    Tennessee

Prof. Kathleen Feigl
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Simulation of Fluid Systems
  • Examples/Applications
  • Emulsions, foams, polymer blends
  • Foods, plastics, pharmaceuticals
  • Goals
  • Understand process-microstructure- rheology
    relationship
  • Design processes to optimize product properties
  • Research
  • Multidisciplinary approach
  • Combine modeling, simulation and experiments

Simulated deformation of a fluid droplet
March 2008
Computing Initiative
34
Simulation of Fluid Systems
Droplet deforming in supercritical shear flow
Droplet deforming in supercritical elongational
flow
35
  • Ph.D. Duke
  • Joined MTU Fall 2008
  • Research Interests
  • Scientific Computing
  • Modeling/Simulation
  • Mathematical Biology
  • CFD

Wenjun Ying, Asst. Prof.
36
Simulation of Cardiac Dynamics
  • Space-time adaptive mesh refinement
  • Multi-scale adaptive modeling of electrical
    dynamics in the heart

Simulation of wave propagation in a virtual dog
heart
37
Cartesian Grid Method
  • Beating heart
  • Droplet deformation
  • Multiphase flows
  • Other free-boundary or moving interface problems

Grid lines not aligned with complex domain
boundary
38
  • Ph.D. Louisiana Tech
  • Post-doc Harvard/MIT
  • Joined MTU Fall 2008
  • Research Interests
  • Computational biology
  • Cluster and classification algorithms
  • Software application development

Le (Adam) Zhang, Asst. Prof.
39
Simulation of Brain Cancer Progression
Brain Cancer Cell
  • Performing multi-scale, multi-resolution hybrid
    cancer modelling
  • Regression analysis, multivariate analysis

Simulation of Cancer Progression
40
Simulation of Hyperthermia in Skin Cancer
Treatment
Skin Cell Structure
  • Simulate bio-heat transfer by finite difference
    method
  • Inverse heat convection problem

Treatment Simulation
41
  • Statistics
  • Statistical Genetics Q. Sha, R. Jiang, J. Dong,
    S. Zhang, H. Chen
  • Wildlife Population Studies T. Drummer
  • Statistics , Probability, Optimization I.
    Pinelis
  • Statistical Methodolgy and Data Analysis Y.
    Munoz Maldonado

March 2008
Computing Initiative
42
  • Population studies for moose, wolves and
    sharp-tail grouse in U.P.
  • Aerial Observation

Prof. Tom Drummer
43
  • Moose survey conducted at 500 ft altitude over
    1600 sq. mile area
  • Model developed to yield probability of sighting
    animals

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  • Ph.D. Texas AM University
  • Statistical Methodology and Analysis of Data
  • Functional Data Analysis
  • Non parametric Methods
  • Linear and Mixed Models
  • Multivariate Analysis

Yolanda Munoz-Maldonado, Asst. Prof.
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  • Ganglioside Profiles Analysis
  • Detect differences in brains of young and old
    rats
  • Differences found in locus coeruleus of young
    rats which may affect sleep regulation

46
  • Study of effect of chronic exposure to
    particulate matter on mortality
  • Temporal analysis of PM10 in El Paso, TX
  • Study suggests use a principal component analysis

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Statistical Genetics Group
  • 5 Faculty
  • 2 Post docs
  • 9 PhD Students
  • Support from NIH and NSF

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Statistical Genetics Group
  • Sixteen Members
  • 5 faculty
  • 2 post-docs
  • 9 PhD Students
  • Supported by 4 NIH Grants
  • Total funding of over 1 million

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Statistical Genetics Group
  • Group Aims
  • Develop new tools for analysis of genomic data
  • Use innovative models and methods in human
    genetic studies
  • Key Research Areas
  • Functional gene mapping
  • Pedigree analysis
  • Gene interactions
  • Computational methodologies
  • Microarray analysis

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  • Statistical Genetics
  • Prof. Quiying Sha
  • PhD Student Elena Kasyanova

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  • Development of new computational and statistical
    tools
  • Primary focus is analysis and interpretation of
    genomic data

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  • Concentration on complex human diseases
  • Key activities
  • Functional gene mapping
  • Pedigree analysis
  • Genetic diversity

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  • Combinatorics and Pure Math
  • Combinatorics J. Bierbauer, D. Kreher, P.
    Merkey, V. Tonchev, M. Keranen
  • Commutative Algebra F. Zanello

March 2008
Computing Initiative
54
Combinatorics Group
  • ??? Members
  • ? faculty
  • ? post-docs
  • ? PhD Students
  • Supported by ????

55
  • Ph.D. Queens University Kingston
  • Joined MTU Fall 2007
  • Commutative Algebra

Fabrizio Zanello, Asst. Prof.
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Non-Unimodal Level Hilbert Functions
  • Identified in Codimension 3.
  • h (1, 3, 6, 10, 15, 21, 28, 27, 27, 28)
  • Existence was long-standing open problem, and has
    led to several publications

57
Gorenstein Hilbert Functions
  • Identified asymptotic lower bound for the least
    possible Degree 2 entry
  • Socle degree 4 and codimension r
  • Solved 1983 conjecture of Stanley, proved in
    collaboration with Juan Migliore (Notre Dame) and
    Uwe Nagel (U. Kentucky)
  • f(r) r (6r)2/3

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Teaching and Instructional Resources
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  • Prof. Allan Struthers
  • Graduate Student Yejun Gong
  • Excellent faculty accessibility

60
  • Dr. Ghan Bhatt teaches an introductory calculus
    course
  • Typical calculus class size is 50 students

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  • Beth Reed uses document camera in statistics
    lecture
  • Math classrooms renovated in 2006
  • Rooms equipped with latest audio-visual tools

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  • Teaching Assistant Rachel Robertson works with a
    student in the Mathlab
  • Calculus courses include laboratory component to
    reinforce lectures

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  • Tutoring session in the Math Learning Center
  • Walk-in assistance or appointments with regular
    tutors

64
  • Math Learning Center open 6 days per week
  • Students teach students
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