In this study, we propose a fast topology optimization (TO) method based on a deep neural network (DNN) that predicts the current-dependent motor torque characteristics using its cross-sectional image. The trained DNN is shown to provide the current condition that provides the maximum torque under the assumed motor control method. The proposed method helps perform TO with a reduced number of field computations while maintaining a high search capability
The use of behavioral models based on deep learning (DL) to accelerate electromagnetic field computa...
A discrete approach introduces a novel deep learning approach for generating fine resolution structu...
この博士論文全文の閲覧方法については、以下のサイトをご参照ください。https://www.lib.hokudai.ac.jp/dissertations/copy-guides
This paper proposes a new method for accurately predicting rotating machine properties using a deep ...
This paper presents the fast topology optimization methods for rotating machines based on deep learn...
This paper presents a new topology optimization of interior permanent magnet (IPM) motors using the ...
In this work a novel approach is presented for topology optimization of low frequency electromagneti...
Physics-Informed Neural Networks (PINNs) have recently gained increasing attention in the field of t...
Topology optimization is a computationally expensive process, especially when complicated designs ar...
Traditional structural topology optimization process depends on series of finite element analysis (F...
A new primary torque control concept for hydrostatics mobile machines was introduced in 2018 [1]. Th...
The use of a convolutional neural network to develop a surrogate model of the electric field in MEMS...
International audienceThis paper focuses on the quantitative analysis of deep neural networks used i...
We propose a method to predict performance variables according to the rotor slot shape of a three-ph...
The electromechanical system of a typical electric machine controller, usually composed of a motor, ...
The use of behavioral models based on deep learning (DL) to accelerate electromagnetic field computa...
A discrete approach introduces a novel deep learning approach for generating fine resolution structu...
この博士論文全文の閲覧方法については、以下のサイトをご参照ください。https://www.lib.hokudai.ac.jp/dissertations/copy-guides
This paper proposes a new method for accurately predicting rotating machine properties using a deep ...
This paper presents the fast topology optimization methods for rotating machines based on deep learn...
This paper presents a new topology optimization of interior permanent magnet (IPM) motors using the ...
In this work a novel approach is presented for topology optimization of low frequency electromagneti...
Physics-Informed Neural Networks (PINNs) have recently gained increasing attention in the field of t...
Topology optimization is a computationally expensive process, especially when complicated designs ar...
Traditional structural topology optimization process depends on series of finite element analysis (F...
A new primary torque control concept for hydrostatics mobile machines was introduced in 2018 [1]. Th...
The use of a convolutional neural network to develop a surrogate model of the electric field in MEMS...
International audienceThis paper focuses on the quantitative analysis of deep neural networks used i...
We propose a method to predict performance variables according to the rotor slot shape of a three-ph...
The electromechanical system of a typical electric machine controller, usually composed of a motor, ...
The use of behavioral models based on deep learning (DL) to accelerate electromagnetic field computa...
A discrete approach introduces a novel deep learning approach for generating fine resolution structu...
この博士論文全文の閲覧方法については、以下のサイトをご参照ください。https://www.lib.hokudai.ac.jp/dissertations/copy-guides