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General sensitivity theory
R Tomovic,M. Vulkobratovic,W. V. Loscutoff +2 more
- 01 Jan 1972
285
About: The article was published on 01 Jan 1972. and is currently open access. The article focuses on the topics: Sensitivity (control systems).
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Citations
Latin hypercube sampling and the propagation of uncertainty in analyses of complex systems
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TL;DR: The following techniques for uncertainty and sensitivity analysis are briefly summarized: Monte Carlo analysis, differential analysis, response surface methodology, Fourier amplitude sensitivity test, Sobol' variance decomposition, and fast probability integration.
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Latin Hypercube Sampling and the Propagation of Uncertainty in Analyses of Complex Systems
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TL;DR: The following techniques for uncertainty and sensitivity analysis are briefly summarized: Monte Carlo analysis, differential analysis, response surface methodology, Fourier amplitude sensitivity test, Sobol’ variance decomposition, and fast probability integration.
Survey of sampling-based methods for uncertainty and sensitivity analysis
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World Models
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