My book Uncertainty Quantification and Predictive Computational Science presents the reader with a variety of techniques to compute, understand, and defend the uncertainties in predictions made by computational models. The book covers the
- modeling of input uncertainties
- sensitivity analysis
- Monte Carlo methods (and related techniques)
- polynomial chaos expansions
- reliability methods
- surrogates to replace simulation codes
- predictive models
- treating epistemic uncertainties
Knowledge of statistics and advanced mathematics is not a prerequisite for the reader. All concepts are introduced in a way that is graspable by readers with an understanding of calculus, differential equations, and basic numerical methods.
The publisher’s website for the book can be found here.