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Hauptverfasser: Garcia, Idoia Cortes, Förster, Peter, Jansen, Lennart, Schilders, Wil, Schöps, Sebastian
Format: Preprint
Veröffentlicht: 2023
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2309.00958
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author Garcia, Idoia Cortes
Förster, Peter
Jansen, Lennart
Schilders, Wil
Schöps, Sebastian
author_facet Garcia, Idoia Cortes
Förster, Peter
Jansen, Lennart
Schilders, Wil
Schöps, Sebastian
contents Electrical circuits are present in a variety of technologies, making their design an important part of computer aided engineering. The growing number of parameters that affect the final design leads to a need for new approaches to quantify their impact. Machine learning may play a key role in this regard, however current approaches often make suboptimal use of existing knowledge about the system at hand. In terms of circuits, their description via modified nodal analysis is well-understood. This particular formulation leads to systems of differential-algebraic equations (DAEs) which bring with them a number of peculiarities, e.g. hidden constraints that the solution needs to fulfill. We use the recently introduced dissection index that can decouple a given system of DAEs into ordinary differential equations, only depending on differential variables, and purely algebraic equations, that describe the relations between differential and algebraic variables. The idea is to then only learn the differential variables and reconstruct the algebraic ones using the relations from the decoupling. This approach guarantees that the algebraic constraints are fulfilled up to the accuracy of the nonlinear system solver, and it may also reduce the learning effort as only the differential variables need to be learned.
format Preprint
id arxiv_https___arxiv_org_abs_2309_00958
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Index-aware learning of circuits
Garcia, Idoia Cortes
Förster, Peter
Jansen, Lennart
Schilders, Wil
Schöps, Sebastian
Computational Engineering, Finance, and Science
Machine Learning
34A09, 65L80 (Primary)
G.1.7; J.2; J.6
Electrical circuits are present in a variety of technologies, making their design an important part of computer aided engineering. The growing number of parameters that affect the final design leads to a need for new approaches to quantify their impact. Machine learning may play a key role in this regard, however current approaches often make suboptimal use of existing knowledge about the system at hand. In terms of circuits, their description via modified nodal analysis is well-understood. This particular formulation leads to systems of differential-algebraic equations (DAEs) which bring with them a number of peculiarities, e.g. hidden constraints that the solution needs to fulfill. We use the recently introduced dissection index that can decouple a given system of DAEs into ordinary differential equations, only depending on differential variables, and purely algebraic equations, that describe the relations between differential and algebraic variables. The idea is to then only learn the differential variables and reconstruct the algebraic ones using the relations from the decoupling. This approach guarantees that the algebraic constraints are fulfilled up to the accuracy of the nonlinear system solver, and it may also reduce the learning effort as only the differential variables need to be learned.
title Index-aware learning of circuits
topic Computational Engineering, Finance, and Science
Machine Learning
34A09, 65L80 (Primary)
G.1.7; J.2; J.6
url https://arxiv.org/abs/2309.00958