scispace - formally typeset
Journal ArticleDOI

Space mapping: the state of the art

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TLDR
For the first time, a mathematical motivation is presented and SM is placed into the context of classical optimization to achieve a satisfactory solution with a minimal number of computationally expensive "fine" model evaluations.
Abstract
We review the space-mapping (SM) technique and the SM-based surrogate (modeling) concept and their applications in engineering design optimization. For the first time, we present a mathematical motivation and place SM into the context of classical optimization. The aim of SM is to achieve a satisfactory solution with a minimal number of computationally expensive "fine" model evaluations. SM procedures iteratively update and optimize surrogates based on a fast physically based "coarse" model. Proposed approaches to SM-based optimization include the original algorithm, the Broyden-based aggressive SM algorithm, various trust-region approaches, neural SM, and implicit SM. Parameter extraction is an essential SM subproblem. It is used to align the surrogate (enhanced coarse model) with the fine model. Different approaches to enhance uniqueness are suggested, including the recent gradient parameter-extraction approach. Novel physical illustrations are presented, including the cheese-cutting and wedge-cutting problems. Significant practical applications are reviewed.

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Citations
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Journal ArticleDOI

Reliable Microwave Modeling by Means of Variable-Fidelity Response Features

TL;DR: This work proposes two ways of combining the low- and high-fidelity data sets: an external approach, through space mapping (simpler to implement) and an internal approach, using co-kriging (more flexible and potentially offering better accuracy).
Proceedings ArticleDOI

Finite element surrogate model for electric machines with revolving field — application to IPM motors

TL;DR: In this paper, the magnetic vector potential in the coils of brushless motors with non-overlapping windings has been calculated using finite element analysis (FEA) and the model allows the ultra-fast simulation of the steady-state performance of synchronous machines.
Book ChapterDOI

Ordinal regression in evolutionary computation

TL;DR: The ordinal regression, or preference learning, implements a kernel-defined feature space and an optimization technique by which the margin between rank boundaries is maximized, illustrated on some classical numerical optimization functions using an evolution strategy.
Journal ArticleDOI

Local Identification of Magnetic Hysteresis Properties Near Cutting Edges of Electrical Steel Sheets

TL;DR: In this paper, the authors present a non-destructive experimental setup where spatial and time-dependent voltages are measured on the basis of needle probe sensors, using a forward numerical model, starting from spatial dependent material properties.
References
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Book

Practical Methods of Optimization

TL;DR: The aim of this book is to provide a Discussion of Constrained Optimization and its Applications to Linear Programming and Other Optimization Problems.
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.
Book

Microstrip filters for RF/microwave applications

TL;DR: In this paper, the authors present a general framework for coupling matrix for Coupled Resonator Filters with short-circuited Stubs (UWB) and Cascaded Quadruplet (CQ) filters.
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