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The nth-Order Comprehensive Adjoint Sensitivity Analysis Methodology, Volume III: Overcoming the Curse of Dimensionality: Nonlinear Systems

โœ Scribed by Dan Gabriel Cacuci


Publisher
Springer
Year
2023
Tongue
English
Leaves
379
Category
Library

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โœฆ Synopsis


This text describes a comprehensive adjoint sensitivity analysis methodology (C-ASAM), developed by the author, enabling the efficient and exact computation of arbitrarily high-order functional derivatives of model responses to model parameters in large-scale systems. The modelโ€™s responses can be either scalar-valued functionals of the modelโ€™s parameters and state variables (as customarily encountered, e.g., in optimization problems) or general function-valued responses, which are often of interest but are currently not amenable to efficient sensitivity analysis. The C-ASAM framework is set in linearly increasing Hilbert spaces, each of state-function-dimensionality, as opposed to exponentially increasing parameter-dimensional spaces, thereby breaking the so-called โ€œcurse of dimensionalityโ€ in sensitivity and uncertainty analysis. The C-ASAM applies to any model; the larger the number of model parameters, the more efficient the C-ASAM becomes for computing arbitrarily high-order response sensitivities. The text includes illustrative paradigm problems which are fully worked-out to enable the thorough understanding of the C-ASAMโ€™s principles and their practical application. The book will be helpful to those working in the fields of sensitivity analysis, uncertainty quantification, model validation, optimization, data assimilation, model calibration, sensor fusion, reduced-order modelling, inverse problems and predictive modelling. It serves as a textbook or as supplementary reading for graduate course on these topics, in academic departments in the natural, biological, and physical sciences and engineering.

This Volume Three, the third of three, covers systems that are nonlinear in the state variables, model parameters and associated responses. The selected illustrative paradigm problems share these general characteristics. A separate Volume One covers systems that are linear in the state variables.

โœฆ Table of Contents


Preface
Contents
Chapter 1: The nth-Order Comprehensive Adjoint Sensitivity Analysis Methodology for Nonlinear Systems (nth-CASAM-N)
1.1 Introduction
1.2 Mathematical Modeling of a Nonlinear System with Imprecisely Known Parameters and Boundaries
1.3 The First-Order Comprehensive Adjoint Sensitivity Analysis Methodology for Nonlinear Systems (1st-CASAM-N)
1.4 The Second-Order Comprehensive Adjoint Sensitivity Analysis Methodology for Nonlinear Systems (2nd-CASAM-N)
1.5 The Third-Order Comprehensive Adjoint Sensitivity Analysis Methodology for Nonlinear Systems (3rd-CASAM-N)
1.6 The Fourth-Order Comprehensive Adjoint Sensitivity Analysis Methodology for Nonlinear Systems (4th-CASAM-N)
1.7 The Fifth-Order Comprehensive Adjoint Sensitivity Analysis Methodology for Nonlinear Systems (5th-CASAM-N)
1.8 The nth-Order Comprehensive Adjoint Sensitivity Analysis Methodology for Nonlinear Systems (nth-CASAM-N)
1.8.1 nth-CASAM-N: Mathematical Framework
1.8.2 The nth-CASAM-N for n = 1 and n = 2
1.8.3 The (n + 1)th-CASAM-N: Mathematical Framework
1.9 Chapter Summary
Chapter 2: Illustrative Applications of the nth-CASAM-N to Paradigm Nonlinear Heat Conduction Models
2.1 Introduction
2.2 First-Order Sensitivities: 1st-CASAM-N
2.2.1 Illustrative Model: Radial Heat Conduction in a Cylinder
2.2.2 Illustrative Model: Nonlinear Heat Conduction Through a Slab
2.2.2.1 Temperature Measurement Response
2.2.2.2 Thermal Conductivity Measurement Response
2.2.2.3 A Computationally Advantageous Response: Thermal Conductivity Squared
2.3 Second-Order Sensitivities: 2nd-CASAM-N
2.3.1 Second-Order Sensitivities Corresponding to R/Q
2.3.2 Second-Order Sensitivities Corresponding to R/k0
2.4 Third-Order Sensitivities: 3rd-CASAM-N
2.5 Fourth-Order Sensitivities: 4th-CASAM-N
2.6 Fifth- and Higher-Order Sensitivities
2.7 Chapter Summary
Chapter 3: Illustrative Application of the nth-CASAM-N to a Bernoulli Model
3.1 Introduction
3.2 1st-CASAM-N: Computation of First-Order Response Sensitivities
3.3 2nd-CASAM-N: Computation of Second-Order Response Sensitivities
3.3.1 Second-Order Sensitivities Stemming from First-Order Sensitivities Involving the Original State Function Only
3.3.1.1 Second-Order Sensitivities Stemming from Rr
3.3.1.2 Second-Order Sensitivities Stemming from Rฯ‰
3.3.2 Second-Order Sensitivities Stemming from First-Order Sensitivities Involving the First-Level Adjoint Function
3.3.2.1 Second-Order Sensitivities Stemming from Ruin
3.3.2.2 Second-Order Sensitivities Stemming from Rฮป
3.3.2.3 Second-Order Sensitivities Stemming from Rq
3.3.3 Remarks on the Computation of Second-Order Sensitivities
3.4 3rd-CASAM-N: Computation of Third-Order Response Sensitivities
3.4.1 Third-Order Sensitivities Stemming from Second-Order Sensitivities Involving a One-Component Adjoint State Function
3.4.2 Third-Order Sensitivities Stemming from Second-Order Sensitivities Involving a Two-Component Adjoint State Function
3.4.3 Third-Order Sensitivities Stemming from Second-Order Sensitivities Involving a Four-Component Adjoint State Function
3.4.4 Remarks on the Application of the 3rd-CASAM-N for Computing Third-Order Sensitivities
3.5 Computation of Fourth- and Fifth-Order Response Sensitivities
3.6 Chapter Summary
Untitled
Untitled
Chapter 4: Illustrative Sensitivity Analysis of Bifurcating Nonlinear Models: A Paradigm Model of Reactor Dynamics
4.1 Introduction
4.2 The Reduced-Order BWR Model of March-Leuba et al. (1984)
4.3 First-Order Sensitivity Analysis: Mathematical Framework
4.4 First-Order Sensitivity Analysis: Numerical Results
4.4.1 Sensitivities of the BWRยดs State Functions with Respect to Initial Conditions
4.4.1.1 Sensitivity Analysis in the Stable Region (1) in Phase Space
4.4.1.2 Sensitivity Analysis in the Period-1 Region (2) in Phase Space
4.4.1.3 Sensitivity Analysis in the Period-2 Region (3) in Phase Space
4.4.1.4 Sensitivity Analysis in the Period-3 Region (4) in Phase Space
4.4.1.5 Sensitivity Analysis in the Chaotic Region (5) in Phase Space
4.4.2 Sensitivities of the BWRยดs State Functions with Respect to the Model Parameters
4.4.2.1 Sensitivity Analysis in the Stable Region (1) in Phase Space
4.4.2.2 Sensitivity Analysis in the Period-1 Region (2) in Phase Space
4.4.2.3 Sensitivity Analysis in the Period-2 Region (3) in Phase Space
4.4.2.4 Sensitivity Analysis in the Chaotic Region (5) in Phase Space
4.5 Limitations of Finite Difference Approximate Computations of First-Order Response Sensitivities to Model Parameters
4.6 Chapter Summary
Untitled
Chapter 5: Illustrative Uncertainty Analysis of Bifurcating Nonlinear Models: A Paradigm Model of Reactor Dynamics
5.1 Introduction
5.2 First-Order Uncertainty Quantification in the Stable Region 1
5.2.1 Evolution of the First-Order Standard Deviation of the Excess Neutron Population n(t) in the Stable Region 1
5.2.1.1 The Largest Contribution to the Total Standard Deviation for n(t) at Early Times
5.2.1.2 Parameters that Contribute Significantly to the Total Standard Deviation for n(t) at Early Times
5.2.1.3 Total Standard Deviation for n(t)
5.2.2 Evolution of the First-Order Standard Deviation of the Excess Temperature T(t) in the Stable Region 1
5.2.2.1 The Largest Contribution to the Total Standard Deviation for T(t) at Early Times
5.2.2.2 Parameters that Contribute Significantly to the Total Standard Deviation for T(t) at Early Times
5.2.2.3 Total Standard Deviation for T(t)
5.2.3 Evolution of the First-Order Standard Deviation of the Reactivity ฯ(t) in the Stable Region 1
5.2.3.1 The Largest Contribution to the Total Standard Deviation for ฯ(t) at Early Times
5.2.3.2 Parameters that Contribute Significantly to the Total Standard Deviation for ฯ(t) at Early Times
5.2.3.3 Total Standard Deviation for ฯ(t)
5.3 First-Order Uncertainty Quantification of the Excess Neutron Population in the Oscillatory Regions 2, 3, 4, and 5
5.3.1 Evolution of the First-Order Standard Deviation of the Excess Neutron Population n(t) in the Periodic Region 2, for m = ...
5.3.1.1 Total Standard Deviation for n(t) and Its Largest Individual Contributors
5.3.1.2 Parameters that Contribute Significantly to the Total Standard Deviation for n(t)
5.3.2 Evolution of First-Order Total Standard Deviation of the Excess Neutron Population n(t) in the Oscillatory Regions 3, 4,...
5.4 First-Order Uncertainty Quantification of the Excess Temperature in the Oscillatory Regions 2, 3, 4, and 5
5.4.1 Evolution of the First-Order Standard Deviation of the Excess Temperature T(t) in the Periodic Region 2, for m = 2.00
5.4.1.1 Total Standard Deviation for T(t) and Its Largest Individual Contributors
5.4.1.2 Parameters that Contribute Significantly to the Standard Deviation for T(t)
5.4.2 Evolution of the First-Order Total Standard Deviation of the Excess Temperature T(t) in the Oscillatory Regions 3, 4, an...
5.5 First-Order Uncertainty Quantification of the Excess Reactivity in the Oscillatory Regions 2, 3, 4, and 5
5.5.1 Evolution of the First-Order Standard Deviation of the Excess Reactivity ฯ(t) in the Periodic Region 2, for m = 2.00
5.5.2 Evolution of the First-Order Total Standard Deviation of the Excess Reactivity ฯ(t) in the Oscillatory Regions 3, 4, and...
5.6 Chapter Summary
Chapter 6: Illustrative Applications of the nth-CASAM-N to the Nordheim-Fuchs Reactor Dynamics/Safety Model
6.1 Introduction
6.2 The Nordheim-Fuchs Phenomenological Reactor Dynamics/Safety Model
6.3 Illustrative Application of the 1st-CASAM-N to Compute First-Order Response Sensitivities
6.3.1 First-Order Sensitivity Analysis of the Prompt Supercritical Power Transient
6.3.2 Closed-Form Expressions for the First-Order Sensitivities of the Energy Released During a Prompt-Critical Power Transient
6.4 Illustrative Application of the 2nd-CASAM-N to Compute Second-Order Response Sensitivities
6.4.1 Second-Order Sensitivities Stemming from the First-Order Sensitivities E(tf)/, j1 = 1, 2, 3
6.4.1.1 Second-Order Sensitivities Stemming from E(tf)ฮฑ1 E(tf)ฮณ
6.4.1.2 Second-Order Sensitivities Stemming from E(tf)ฮฑ2 E(tf)ฮฃf
6.4.1.3 Second-Order Sensitivities Stemming from E(tf)ฮฑ3 E(tf)ฯ†0
6.4.2 Second-Order Sensitivities Stemming from the First-Order Sensitivities , j1 = 4, 5, 6
6.4.2.1 Second-Order Sensitivities Stemming from E(tf)ฮฑ4 E(tf)lp
6.4.2.2 Second-Order Sensitivities Stemming from E(tf)ฮฑ5 E(tf)ฮฑT
6.4.2.3 Second-Order Sensitivities Stemming from E(tf)ฮฑ6 E(tf)cp
6.4.3 Computational Advantages of Using the 2nd-CASAM-N
6.5 Illustrative Application of the 3rd-CASAM-N to Compute Third-Order Response Sensitivities
6.5.1 Computation of the Third-Order Sensitivities Stemming from 2E(tf)/cpcp
6.5.2 Computation of the Third-Order Sensitivities Stemming from 2E(tf)/ฮณlp
6.6 Chapter Summary
Chapter 7: The Unified Framework of the nth-CASAM-L and nth-CASAM-N Methodologies
7.1 Introduction: The Chronological Path to Efficient High-Order Sensitivity Analysis
7.2 Review of the nth-Order Comprehensive Adjoint Sensitivity Analysis Methodology for Response-Coupled Forward and Adjoint Li...
7.3 Review of the nth-Order Comprehensive Adjoint Sensitivity Analysis Methodology for Nonlinear Systems (nth-CASAM-N)
7.4 Unified Conceptual Framework for the nth-CASAM-L and nth-CASAM-N Methodologies
7.5 Chapter Summary and Outlook
References
Index


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