Online data assimilation of a hybrid flow stress model by particle filtering


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Author / Producer

Date

2021

Publication Type

Journal Article

ETH Bibliography

yes

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Abstract

Models for the evolution of hidden microstructural states are needed for fast prediction and closed-loop control of workpiece properties. Machine learning allows to obtain models by learning from experimental data, avoiding the limitations of explicitly defined physics-based models. However, the identification of the parameters of deep network structures, reliable extrapolation and fast online assimilation to new measurements are open problems. At the example of titanium forging, a new approach is investigated that combines a hybrid physics-informed microstructure and flow stress model that draws upon a long short-term memory network with a particle filter for online data assimilation to new measurements. © 2021 CIRP. Published by Elsevier Ltd.

Publication status

published

Editor

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Journal / series

Volume

70 (1)

Pages / Article No.

255 - 260

Publisher

Elsevier

Event

Edition / version

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Software

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Date collected

Date created

Subject

Metal forming; Process control; Machine learning

Organisational unit

09706 - Bambach, Markus / Bambach, Markus check_circle

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