Automatic differentiation for electromagnetic models used in optimization
Author:
Enciu P.,Wurtz F.,Gerbaud L.,Delinchant B.
Abstract
PurposeThe purpose of this paper is to illustrate automatic differentiation (AD) as a new technology for the device sizing in electromagnetism by using gradient constrained optimization. Component architecture for the design of engineering systems (CADES) framework, previously described, is presented here with extended features.Design/methodology/approachThe paper is subject to further usage for optimization of AD (also named algorithmic differentiation) which is a powerful technique that computes derivatives of functions described as computer programs in a programming language like C/C++, FORTRAN.FindingsIndeed, analytical modeling is well suited regarding optimization procedure, but the modeling of complex devices needs sometimes numerical formulations. This paper then reviews the concepts implemented in CADES which aim to manage the interactions of analytical and numerical modeling inside of gradient‐based optimization procedure. Finally, the paper shows that AD has no limit for the input program complexity, or gradients accuracy, in the context of constrained optimization of an electromagnetic actuator.Originality/valueAD is employed for a large and complex numerical code computing multidimensional integrals of functions. Thus, the paper intends to prove the AD capabilities in the context of electromagnetic device sizing by means of gradient optimization. The code complexity as also as the implications of AD usage may stand as a good reference for the researchers in this field area.
Subject
Applied Mathematics,Electrical and Electronic Engineering,Computational Theory and Mathematics,Computer Science Applications
Reference21 articles.
1. Bendtsen, C. and Stauning, O. (1996), “FADBAD, a flexible C++ package for automatic differentiation”, working paper, Department of Mathematical Modelling, Technical University of Denmark, Lyngby. 2. Bischof, C.H., Roh, L. and Mauer, A. (1997), “ADIC: an extensible automatic differentiation tool for ANSI‐C”, working paper, Center of Research on Parallel Computation, Rice University, Houston, TX, January. 3. Bischof, C.H., Carle, A., Khademi, P. and Mauer, A. (1996), “ADIFOR 2.0: automatic differentiation of FORTRAN 77 programs”, IEEE Computational Science & Engineering, Vol. 3 No. 3, pp. 18‐32. 4. Bücker, M. and Hovland, P. (2000), “Automatic differentiation”, available at: www.autodiff.org (accessed March 8, 2009). 5. CppAD (2008), available at: www.coin‐or.org/CppAD/ (accessed March 8, 2009).
Cited by
13 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
1. Optimal Microgrid Sizing using Gradient-based Algorithms with Automatic Differentiation;2022 IEEE PES Innovative Smart Grid Technologies Conference Europe (ISGT-Europe);2022-10-10 2. Simultaneous optimization of sizing and energy management—Application to hybrid train;Mathematics and Computers in Simulation;2019-04 3. Modeling and sizing by optimization of a Brushless Doubly-Fed Reluctance Machine;International Journal of Applied Electromagnetics and Mechanics;2017-03-09 4. Optimization of EMI filters for electrical drives in aircraft;COMPEL: The International Journal for Computation and Mathematics in Electrical and Electronic Engineering;2014-04-29 5. Framework for the optimization of online computable models;COMPEL: The International Journal for Computation and Mathematics in Electrical and Electronic Engineering;2014-04-29
|
|