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Journal ArticleDOI

A Trust Region Framework for Managing the Use of Approximation Models in Optimization

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TLDR
An analytically robust, globally convergent approach to managing the use of approximation models of varying fidelity in optimization, based on the trust region idea from nonlinear programming, which is shown to be provably convergent to a solution of the original high-fidelity problem.
Abstract
This paper presents an analytically robust, globally convergent approach to managing the use of approximation models of various fidelity in optimization. By robust global behavior we mean the mathematical assurance that the iterates produced by the optimization algorithm, started at an arbitrary initial iterate, will converge to a stationary point or local optimizer for the original problem. The approach we present is based on the trust region idea from nonlinear programming and is shown to be provably convergent to a solution of the original high-fidelity problem. The proposed method for managing approximations in engineering optimization suggests ways to decide when the fidelity, and thus the cost, of the approximations might be fruitfully increased or decreased in the course of the optimization iterations. The approach is quite general. We make no assumptions on the structure of the original problem, in particular, no assumptions of convexity and separability, and place only mild requirements on the approximations. The approximations used in the framework can be of any nature appropriate to an application; for instance, they can be represented by analyses, simulations, or simple algebraic models. This paper introduces the approach and outlines the convergence analysis.

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Citations
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Journal ArticleDOI

Real-time refinery optimization with reduced-order fluidized catalytic cracker model and surrogate-based trust region filter method

TL;DR: In this article, the authors proposed a trust region filter (TRF) optimization strategy for real-time optimization (RTO) in a real-world refinery, where the TRF driver is written in Python and integrates with the residue fluid catalytic cracking (RFCC) truth model, the Aspen-EO RECAP model, and the ASpen RTO optimizer.
Posted Content

A bandit-learning approach to multifidelity approximation.

TL;DR: In this paper, a bandit-learning approach for leveraging data of varying fidelities to achieve precise estimates of the parameters of interest is introduced. But the main advantage of this approach is that it requires neither hierarchical model structure nor \textit{a priori} knowledge of statistical information (e.g., correlations) about or between models.
Journal ArticleDOI

Multi-Fidelity Gradient-Based Optimization for High-Dimensional Aeroelastic Configurations

TL;DR: A new algorithm is explored for computing design derivatives by analytically linking objective definition, geometry differentiation, mesh construction, and analysis, and the analytic computation of design derivatives enables the accurate use of more efficient gradient-based optimization methods.
DissertationDOI

A study on memetic computation, with applications to capacitated vehicle routing problems

Xianshun Chen
TL;DR: This dissertation takes an explorative attitude in the design of memetic computing frameworks and algorithms by leveraging the co-adaptive nature of meme complexes or memeplexes to develop meme-centric computing frameworks for more effective problem-solving in the context of stochastic optimization of Capacitated Vehicle Routing Problems (CVRP) and vehicle Routing Problem with Stochastic Demands (VRPSD).
Dissertation

Solving Factorable Programs with Applications to Cluster Analysis, Risk Management, and Control Systems Design

TL;DR: The author states that the aim of the book was to provide a “generative framework for a posthumous publication” and not to compete with existing works on the basis of prior work or reputation.
References
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Book

Numerical Methods for Unconstrained Optimization and Nonlinear Equations (Classics in Applied Mathematics, 16)

TL;DR: In this paper, Schnabel proposed a modular system of algorithms for unconstrained minimization and nonlinear equations, based on Newton's method for solving one equation in one unknown convergence of sequences of real numbers.
Book

Numerical methods for unconstrained optimization and nonlinear equations

TL;DR: Newton's Method for Nonlinear Equations and Unconstrained Minimization and methods for solving nonlinear least-squares problems with Special Structure.
Journal ArticleDOI

Approximation concepts for optimum structural design — a review

TL;DR: It is shown that, although the lack of comparative data established on reference test cases prevents an accurate assessment, there have been significant improvements in approximation concepts since the introduction of approximation concepts in the mid-seventies.
Journal ArticleDOI

Some Approximation Concepts for Structural Synthesis

TL;DR: In this paper, an efficient automated minimum weight design procedure is presented which is applicable to sizing structural systems that can be idealized by truss, shear panel, and constant strain triangles.
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