Continuing the author’s 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.
Dan Gabriel Cacuci
Advances in High-Order Predictive Modeling [EPUB ebook]
Methodologies and Illustrative Problems
Advances in High-Order Predictive Modeling [EPUB ebook]
Methodologies and Illustrative Problems
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Ngôn ngữ Anh ● định dạng EPUB ● Trang 302 ● ISBN 9781040193228 ● Nhà xuất bản CRC Press ● Được phát hành 2024 ● Có thể tải xuống 3 lần ● Tiền tệ EUR ● TÔI 10015889 ● Sao chép bảo vệ Adobe DRM
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