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Advances in High-Order Predictive Modeling : Methodologies and Illustrative Problems

Cacuci, Dan Gabriel

Advances in Applied Mathematics

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Omtale

Continuing the authors previous work on modeling, this book presents the most recent advances in high-order predictive modeling. The author begins with the mathematical framework of the 2nd-BERRU-PM methodology, an acronym that designates the second-order best-estimate with reduced uncertainties (2nd-BERRU) predictive modeling (PM). The 2nd-BERRU-PM methodology is fundamentally anchored in physics-based principles stemming from thermodynamics (maximum entropy principle) and information theory, being formulated in the most inclusive possible phase-space, namely the combined phase-space of computed and measured parameters and responses. The 2nd-BERRU-PM methodology provides second-order output (means and variances) but can incorporate, as input, arbitrarily high-order sensitivities of responses with respect to model parameters, as well as arbitrarily high-order moments of the initial distribution of uncertain model parameters, in order to predict best-estimate mean values for the model responses (i.e., results of interest) and calibrated model parameters, along with reduced predicted variances and covariances for these predicted responses and parameters.

Detaljer

  • Utgivelsesdato:

    11.12.2024

  • ISBN/Varenr:

    9781032740560

  • Språk:

    , Engelsk

  • Forlag:

    Chapman & Hall/CRC

  • Fagtema:

    Matematikk og naturvitenskap

  • Serie:

    Advances in Applied Mathematics

  • Litteraturtype:

    Sakprosa

  • Sider:

    288

  • Høyde:

    23.4 cm

  • Bredde:

    15.6 cm