Materials Map

Discover the materials research landscape. Find experts, partners, networks.

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The Materials Map is an open tool for improving networking and interdisciplinary exchange within materials research. It enables cross-database search for cooperation and network partners and discovering of the research landscape.

The dashboard provides detailed information about the selected scientist, e.g. publications. The dashboard can be filtered and shows the relationship to co-authors in different diagrams. In addition, a link is provided to find contact information.

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The Materials Map is still under development. In its current state, it is only based on one single data source and, thus, incomplete and contains duplicates. We are working on incorporating new open data sources like ORCID to improve the quality and the timeliness of our data. We will update Materials Map as soon as possible and kindly ask for your patience.

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in Cooperation with on an Cooperation-Score of 37%

Topics

Publications (1/1 displayed)

  • 2023Neural metamodels and transfer learning for induction heating processes (TEAM 36 problem)citations

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Chart of shared publication
Mognaschi, Maria Evelina
1 / 1 shared
Forzan, Michele
1 / 6 shared
Lowther, David A.
1 / 1 shared
Sykulski, Jan K.
1 / 8 shared
Barba, Paolo Di
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Dughiero, Fabrizio
1 / 5 shared
Chart of publication period
2023

Co-Authors (by relevance)

  • Mognaschi, Maria Evelina
  • Forzan, Michele
  • Lowther, David A.
  • Sykulski, Jan K.
  • Barba, Paolo Di
  • Dughiero, Fabrizio
OrganizationsLocationPeople

article

Neural metamodels and transfer learning for induction heating processes (TEAM 36 problem)

  • Mognaschi, Maria Evelina
  • Forzan, Michele
  • Marconi, Antonio
  • Lowther, David A.
  • Sykulski, Jan K.
  • Barba, Paolo Di
  • Dughiero, Fabrizio
Abstract

<p>The authors explore the possibility of applying a convolutional Naeural Network (CNN) to the solution of coupled electromagnetic and thermal problem, focusing on the classical problem of induction heating systems, traditionally solved by resorting to Finite Element (FE) models. In fact, FE modelling is widely used in the design of induction heating systems due its accuracy, even if the solution of a coupled nonlinear problem is expensive in terms of computational time and hardware resources, notably in 3D analysis. A model based on CNN could be an interesting alternative; in fact, CNN is a learning model selected for its excellent ability to converge, even when trained with a limited dataset. CNNs are able to treat images as input and they are used here as follows: given a temperature map in the workpiece, identify the corresponding vector of current, frequency and process heating time; this mapping is a model of the inverse induction heating problem. Specifically, we consider as an example the induction heating of a cylindrical steel billet, made of C45 steel, placed in a solenoidal inductor coil exhibiting the same axial length of the billet (TEAM 36 problem). A thorough heating process is usually applied before hot working of the billet, as in an extrusion process, but this methodology can be applied also in the design of induction hardening processes. First, a CNN has been trained from scratch by means of a dataset of FE solutions of coupled electromagnetic and thermal problems. For the sake of a comparison, a transfer learning technique is applied using GoogLeNet, i.e. a Deep Convolutional Neural Network able to classify images: starting from the pre-trained GoogLeNet, its training has been subsequently refined with the dataset of solutions from FE analyses. When the training dataset contains a limited number of samples, GoogleNet shows good accuracy in predicting the process parameters; in the case of a high number of samples in the training set, namely beyond a threshold like e.g. 1500, both CNNs show good accuracy of the result.</p>

Topics
  • impedance spectroscopy
  • extrusion
  • steel