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Publications by William L. Oberkampf
Representation of Analysis Results Involving Aleatory and Epistemic Uncertainty
International Journal of General Systems
Control
Systems Engineering
Information Systems
Simulation
Computer Science Applications
Modeling
Theoretical Computer Science
Verification and Validation in Computational Fluid Dynamics
Progress in Aerospace Sciences
Mechanics of Materials
Mechanical Engineering
Aerospace Engineering
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A Reliability Analysis Method Including Confidence Level and Probability Reliability Under Epistemic and Aleatory Uncertainty
Advances in Mechanical Engineering
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A Hybrid Method to Deal With Aleatory and Epistemic Uncertainty in Risk Assessment
International Journal of Computer Applications
Efficient Algorithms for Mixed Aleatory-Epistemic Uncertainty Quantification With Application to Radiation-Hardened Electronics. Part I, Algorithms and Benchmark Results.
Stochastic and Epistemic Uncertainty Propagation in LCA
International Journal of Life Cycle Assessment
Environmental Science
Epistemic Uncertainty Quantification of Seismic Damage Assessment
Inherent and Epistemic Uncertainty Analysis for Computational Fluid Dynamics Simulations of Synthetic Jet Actuators
International Journal for Uncertainty Quantification
Control
Statistics
Probability
Combinatorics
Simulation
Optimization
Discrete Mathematics
Modeling
Evidential Model Validation Under Epistemic Uncertainty
Mathematical Problems in Engineering
Mathematics
Engineering
A Sampling-Based Computational Strategy for the Representation of Epistemic Uncertainty in Model Predictions With Evidence Theory
Computer Methods in Applied Mechanics and Engineering
Mechanics of Materials
Mechanical Engineering
Computer Science Applications
Computational Mechanics
Astronomy
Physics
A Sampling-Based Computational Strategy for the Representation of Epistemic Uncertainty in Model Predictions With Evidence Theory.