Title of article
Analysis of variance designs for model output Original Research Article
Author/Authors
Michiel J.W. Jansen، نويسنده ,
Issue Information
دوهفته نامه با شماره پیاپی سال 1999
Pages
9
From page
35
To page
43
Abstract
A scalar model output Y is assumed to depend deterministically on a set of stochastically independent input vectors of different dimensions. The composition of the variance of Y is considered; variance components of particular relevance for uncertainty analysis are identified. Several analysis of variance designs for estimation of these variance components are discussed. Classical normal-model theory can suggest optimal designs. The designs can be implemented with various sampling methods: ordinary random sampling, latin hypercube sampling and scrambled quasi-random sampling. Some combinations of design and sampling method are compared in two small-scale numerical experiments.
Keywords
Variance-based , regression-free , Scrambled quasi-random sampling , experimental design , Latin Hypercube Sampling , Uncertainty analysis
Journal title
Computer Physics Communications
Serial Year
1999
Journal title
Computer Physics Communications
Record number
1135048
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