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Journal ArticleDOI

Large‐scale DAE optimization using a simultaneous NLP formulation

Arturo M. Cervantes, +1 more
- 01 May 1998 - 
- Vol. 44, Iss: 5, pp 1038-1050
TLDR
The differential-algebraic equation (DAE) optimization problem is transformed to a nonlinear programming problem by applying collocation on finite elements using a reduced space successive quadratic programming (rSQP) algorithm, which solves more than 150 DAEs in less than 7 CPU minutes.
Abstract
The differential-algebraic equation (DAE) optimization problem is transformed to a nonlinear programming problem by applying collocation on finite elements. The resulting problem is solved using a reduced space successive quadratic programming (rSQP) algorithm. Here, the variable space is partitioned into range and null spaces. Partitioning by choosing a pivot sequence for an LU factorization with partial pivoting allows us to detect unstable modes in the DAE system, which can now be stabilized without imposing new boundary conditions. As a result, the range space is decomposed in a single step by exploiting the overall sparsity of the collocation matrix; which performs better than the two-step condensation method used in standard collocation solvers. To deal with ill-conditioned constraints, we also extend the rSQP algorithm to include dogleg steps for the range space step that solves the collocation equations. The performance of this algorithm was tested on two well known unstable problems and on three chemical engineering examples including two reactive distillation columns and a plug-flow reactor with free radicals. One of these is u batch column where an equilibrium reaction takes place. The second reactive distillation problem is the startup of a continuous column with competitive reactions. These optimization problems, which include more than 150 DAEs, ure solved in less than 7 CPU minutes on workstation class computers.

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Citations
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Real-time optimization and nonlinear model predictive control of processes governed by differential-algebraic equations

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Retrospective on optimization

TL;DR: A general classification of mathematical optimization problems is provided, followed by a matrix of applications that shows the areas in which these problems have been typically applied in process systems engineering.
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An overview of simultaneous strategies for dynamic optimization

TL;DR: This study provides background information, summarizes the underlying concepts and properties of this approach, discusses recent advances in the treatment of discrete decisions and illustrates the approach with two process case studies.
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Advances in simultaneous strategies for dynamic process optimization

TL;DR: An improved algorithm for simultaneous strategies for dynamic optimization based on interior point methods is developed and a reliable and efficient algorithm to adjust elements to track optimal control profile breakpoints and to ensure accurate state and control profiles is developed.
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Dynamic optimization of batch processes I. Characterization of the nominal solution

TL;DR: Methods, systems, and computer program products for dynamically adjusting computer resources, as appropriate, in response to predictions of batch runtimes as well as for rendering costs of the computer resources actually utilized, which costs are consistent with customer demands.
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

LINPACK User's Guide.

TL;DR: The use of least-squares techniques for this and G. W. Stewart, LINPACK Users' Guide for Intel® Math Kernel Library 11.3 for Linux* OS are provided.
Journal Article

A combined unifrontal/multifrontal method for unsymmetric sparse matrices

TL;DR: In this article, the authors discuss the organization of frontal matrices in multifrontal methods for the solution of large sparse sets of unsymmetric linear equations and consider a combined unifrontal/multifrontal algorithm to enable general fill-in reduction orderings to be applied without the data movement of previous multifrontal approaches.
Journal ArticleDOI

Differential-algebraic equations index transformations

TL;DR: In this paper, the equivalence between semi-explicit and implicit differential algebraic equations was shown and it was shown that the theory for the former applies to the latter of one lower index.
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