In this work a novel approach is presented for topology optimization of low frequency electromagnetic devices. In particular a surrogate model based on deep neural networks with encoder-decoder architecture is introduced. A first autoencoder deep neural network learns to represent the input images that describe the topology, i.e. geometry and materials. The novel idea is to use the low dimensional output space of the encoder as the search space of the optimization algorithm, instead of using the higher dimensional space represented by the input images. A second deep neural network learns the relationship between the encoder outputs and the objective function (i.e., torque), which is calculated by means of a finite element analysis. The calc...
The increasing interest among the scientific community on soft computing and optimization techniques...
In computational electromagnetism there are manyfold advantages when using machine learning methods,...
Physics-Informed Neural Networks (PINNs) have recently attracted exponentially increasing attention ...
In this work a novel approach is presented for topology optimization of electromagnetic devices. In ...
In this work, a topology optimization procedure is proposed and applied to the TEAM 25 problem, i.e....
The use of behavioral models based on deep learning (DL) to accelerate electromagnetic field computa...
The development of technologies for the additive manufacturing, in particular of metallic materials,...
The development of technologies for the additive manufacturing, in particular of metallic materials,...
This article presents a fast population-based multi-objective optimization of electromagnetic device...
Topology optimization is a computationally expensive process, especially when complicated designs ar...
Physics-Informed Neural Networks (PINNs) have recently gained increasing attention in the field of t...
The inverse problems in electromagnetic system design, optimization, and identification received lat...
This paper presents a non-iterative topology optimizer for conductive heat transfer structures with ...
This paper presents the fast topology optimization methods for rotating machines based on deep learn...
The increasing interest among the scientific community on soft computing and optimization techniques...
In computational electromagnetism there are manyfold advantages when using machine learning methods,...
Physics-Informed Neural Networks (PINNs) have recently attracted exponentially increasing attention ...
In this work a novel approach is presented for topology optimization of electromagnetic devices. In ...
In this work, a topology optimization procedure is proposed and applied to the TEAM 25 problem, i.e....
The use of behavioral models based on deep learning (DL) to accelerate electromagnetic field computa...
The development of technologies for the additive manufacturing, in particular of metallic materials,...
The development of technologies for the additive manufacturing, in particular of metallic materials,...
This article presents a fast population-based multi-objective optimization of electromagnetic device...
Topology optimization is a computationally expensive process, especially when complicated designs ar...
Physics-Informed Neural Networks (PINNs) have recently gained increasing attention in the field of t...
The inverse problems in electromagnetic system design, optimization, and identification received lat...
This paper presents a non-iterative topology optimizer for conductive heat transfer structures with ...
This paper presents the fast topology optimization methods for rotating machines based on deep learn...
The increasing interest among the scientific community on soft computing and optimization techniques...
In computational electromagnetism there are manyfold advantages when using machine learning methods,...
Physics-Informed Neural Networks (PINNs) have recently attracted exponentially increasing attention ...