Conference Agenda

Overview and details of the sessions of this conference. Please select a date or location to show only sessions at that day or location. Please select a single session for detailed view (with abstracts and downloads if available).

 
 
Session Overview
Session
OB2: Material modelling
Time:
Tuesday, 18/Jan/2022:
1:30pm - 2:45pm

Session Chair: Prof. Ruth V. Sabariego, KU Leuven, Belgium

Presentations
1:30pm - 1:45pm

Energetic based hysteresis model implementation in LTspice

Fabien SIXDENIER1, Riccardo SCORRETTI1, Nicolas DAVISTER2, Christophe GEUZAINE2, François HENROTTE2

1Univ Lyon, Université Claude Bernard Lyon 1, INSA Lyon, ECLyon, CNRS, Ampère, F-69100, Villeurbanne, France; 2Institute Montefiore - ACE - Université de Liège, B-4000 Liège, Belgium

Circuit type simulation packages are routinely used to analyze a large variety of topologies and parameter combinations (duty cycle, frequency, input/output voltages, . . . ) in power electronics systems. The inductors present in the simulated systems usually contain magnetic cores, which are very often made of ferrite materials. As ferrite materials are soft magnetic materials exhibiting a

significant hysteresis behaviour, scientists and engineers need accurate hysteresis models to predict magnetic quantities and losses in those cores. This paper shows how to implement the Energy-Based hysteresis model into the LTspice software, in order to simulate hysteresis phenomena in the magnetic cores of inductance components.

OB2-1-123.pdf


1:45pm - 2:00pm

Utilizing Iron Loss Separation and ANN Models for Iron Loss Calculation in Electrical Steel Sheets

Zhiwei He, Jung-Seop Kim, Chang-Seop Koh

Chungbuk National University, Korea, Republic of (South Korea)

This paper proposes a new iron loss separation algorithm and an artificial neural network (ANN) model with deep learning for iron loss estimation in an electrical steel sheet (ESS). In the method, anomalous magnetic field and loss are extracted from measured hysteresis loops and iron loss by excluding static hysteresis and classical eddy current fields and losses. With the extracted data, an ANN model is developed with the help of deep learning algorithm to predict anomalous magnetic field and loss for arbitrary B-waveforms. The effectiveness of the ANN model is validated through comparisons with experimental measurements and Bertotti’s anomalous formula over non-oriented, highly Grain-oriented and domain-refined highly Grain-oriented ESSs.

OB2-2-130.pdf


2:00pm - 2:15pm

A Multiscale Model for Ferromagnetic Material including Bloch Walls

Floran Martin1, Ismet Gurbuz1, Laurent Daniel2, Abdelkader Benabou3, Paavo Rasilo4, Anouar Belahcen1

1Aalto University, Finland; 2Laboratoire de Génie Electrique et Electronique de Paris, France; 3ULR 2697 - Laboratoire d'Electrotechnique et d'Electronique de Puissance de Lille, France; 4Tampere University, Finland

This digest introduces a method to account for domain walls in a statistical magneto-mechanical model. After minimizing the domain energy, the volume fraction of a domain is calculated with a Boltzmann distribution by considering the contribution of magnetic walls. Finally, the magnetization and the magnetostriction are computed by weighing the six domain orientations with their respective volume fractions.

OB2-3-374.pdf


2:15pm - 2:30pm

A Dynamic Magnetostrictive Model Based on the Jiles-Atherton Hysteresis Model and Field Separation Approach

Yaqi Wang1, Lin li1, Xiaojun Zhao2

1State Key Laboratory of Alternate Electrical Power System with Renewable Energy Sources, North China Electric Power University, Beijing 102206, China; 2Department of Electrical Engineering, North China Electric Power University, Baoding 071003, China

It is significant to study the magnetostrictive model since the vibration noise of power transformer mainly comes from the magnetostrictive effect of silicon steel sheet. In this paper, the loss of silicon steel sheet is divided into hysteresis loss Why, eddy current loss Wed and anomalous loss Wan by Statistical Theory of Losses. The Why is calculated by static J-A hysteresis model, Wed and Wan are calculated by analytical equation. Then the expression of dynamic magnetic field intensity is derived by the field separation approach, and the magnetostriction model is obtained by combining the dynamic magnetic field intensity and the quadratic domain rotation model. Finally, the efficiency of model is verified by experiments.

OB2-4-225.pdf


2:30pm - 2:45pm

A Homogenization Model for Soft Magnetic Composites Considering the Effect of Mechanical Stress

Romain Corcolle1, Xiaotao Ren2, Laurent Daniel3,4

1Division of Engineering and Computer Science, NYU Shanghai, 1555 Century Avenue, Shanghai 200122, People’s Republic of China; 2Integrated Actuators Laboratory (LAI), Ecole Polytechnique Fédérale de Lausanne (EPFL), Rue de la Maladière 71B, Neuchâtel 2000, Switzerland; 3Université Paris-Saclay, CentraleSupélec, CNRS, Laboratoire de Génie Electrique et Electronique de Paris, 91192 Gif-sur-Yvette, France; 4Sorbonne Université, CNRS, Laboratoire de Génie Electrique et Electronique de Paris, 75252 Paris, France

Soft Magnetic Composites (SMC) are an alternative to laminated steels for the design of smaller and lighter electromagnetic devices. Such electromagnetic devices might be subjected to significant mechanical stresses that can alter their electromagnetic properties. This paper presents a homogenization model which provides estimates for both the nonlinear magnetic response and the Eddy Current (EC) Losses of SMC subjected to a stress state.

OB2-5-493.pdf