Amanote Research
Register
Sign In
Parametric Uncertainty Quantification in Coalescene Flutter
doi 10.22215/etd/2013-06186
Full Text
Open PDF
Abstract
Available in
full text
Date
Unknown
Authors
Anton Matachniouk
Publisher
Carleton University
Related search
Parametric Uncertainty Quantification in the Rothermel Model With Randomised Quasi-Monte Carlo Methods
International Journal of Wildland Fire
Forestry
Ecology
Estimating Parametric, Model Form, and Solution Contributions Using Integral Validation Uncertainty Quantification
Parametric Uncertainty Quantification Using Polynomial Chaos Expansions Applied to a Wet Friction Clutch Model
International Journal of Modeling and Optimization
Optimal Uncertainty Quantification
SIAM Review
Computational Mathematics
Applied Mathematics
Theoretical Computer Science
Uncertainty Quantification in Scientific Computing
IFIP Advances in Information and Communication Technology
Computer Networks
Information Systems
Management
Communications
Comprehensive Uncertainty Quantification in Nuclear Safeguards
Science and Technology of Nuclear Installations
Engineering
Nuclear Energy
Partial Information Use in Uncertainty Quantification
Piezoelectric Energy Harvesting With Parametric Uncertainty
Smart Materials and Structures
Mechanics of Materials
Electronic Engineering
Signal Processing
Condensed Matter Physics
Materials Science
Civil
Molecular Physics,
Structural Engineering
Electrical
Atomic
Optics
Uncertainty in Value-At-Risk Estimates Under Parametric and Non-Parametric Modeling
SSRN Electronic Journal