The parameters to be identified are described as random variables, the randomness reflecting the uncertainty about the true values, allowing the incorporation of new information through Bayes's theorem. Such a description has two constituents, the measurable function or random variable, and the probability measure. One group of methods updates the measure, the other group changes the function. We connect both with methods of spectral representation of stochastic problems, and introduce a computational procedure without any sampling which works completely deterministically, and is fast and reliable. Some examples we show have highly nonlinear and non-smooth behaviour and use non-Gaussian measures. © 2013 Elsevier Ltd
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Brief notes on the basics of non-random parameter estimation are presented. These notes have been pr...
Parameter identification problems are formulated in a probabilistic language, where the randomness r...
We describe a framework for solving nonlinear inverse problems in a random environment. Such problem...
This article reviews some recent and current research work with emphasis on new recommended spectral...
We present a fully deterministic approach to a probabilistic interpretation of inverse problems in w...
In a Bayesian setting, inverse problems and uncertainty quantification (UQ)— the propagation of unce...
A new probabilistic model identification methodology is proposed using measured response time histor...
The article deals with the problem of modeling stochastic processes under uncertainty. The peculiari...
A spectral density approach for the identification of linear systems is extended to nonlinear dynamic...
Decisions based on single-point estimates of uncertain parameters neglect regions of significant pro...
We present a fully deterministic method to compute sequential updates for stochastic state estimates...
In a Bayesian setting, inverse problems and uncertainty quantification (UQ) — the propagation of unc...
A spectral density approach for the identification of linear systems is extended to nonlinear dynami...
We consider an alternative approach to the use of nonlinear stochastic Markov processes (which have ...
The Bayesian approach allows an intuitive way to derive the methods of statistics. Probability is de...
Brief notes on the basics of non-random parameter estimation are presented. These notes have been pr...