This paper presents the fast topology optimization methods for rotating machines based on deep learning. The cross-sectional image of electric motors and their performances obtained during a multi-objective topology optimization based on the finite-element method and genetic algorithm (GA) is used for training of the convolutional neural network (CNN). Two different approaches are proposed: 1) CNN trained by preliminary optimization with a small population for GA is used for the main optimization with a large population and 2) CNN is used for screening of torque performances in the optimization with respect to the motor efficiency
Neural networks and deep learning are changing the way that engineering is being practiced. New and ...
The use of a convolutional neural network to develop a surrogate model of the electric field in MEMS...
Topology optimization problems pose substantial requirements in computing resources, which become pr...
This paper presents a new topology optimization of interior permanent magnet (IPM) motors using the ...
In this study, we propose a fast topology optimization (TO) method based on a deep neural network (D...
This paper proposes a new method for accurately predicting rotating machine properties using a deep ...
Topology optimization is a computationally expensive process, especially when complicated designs ar...
This paper presents a new topology optimization method based on basis functions for design of rotati...
Permanent magnet synchronous motors are increasingly used in the oil industry. These motors need to ...
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...
A discrete approach introduces a novel deep learning approach for generating fine resolution structu...
Purpose of this work is optimization of given electrical machine based on combination of selected me...
This paper presents a non-iterative topology optimizer for conductive heat transfer structures with ...
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
Neural networks and deep learning are changing the way that engineering is being practiced. New and ...
The use of a convolutional neural network to develop a surrogate model of the electric field in MEMS...
Topology optimization problems pose substantial requirements in computing resources, which become pr...
This paper presents a new topology optimization of interior permanent magnet (IPM) motors using the ...
In this study, we propose a fast topology optimization (TO) method based on a deep neural network (D...
This paper proposes a new method for accurately predicting rotating machine properties using a deep ...
Topology optimization is a computationally expensive process, especially when complicated designs ar...
This paper presents a new topology optimization method based on basis functions for design of rotati...
Permanent magnet synchronous motors are increasingly used in the oil industry. These motors need to ...
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...
A discrete approach introduces a novel deep learning approach for generating fine resolution structu...
Purpose of this work is optimization of given electrical machine based on combination of selected me...
This paper presents a non-iterative topology optimizer for conductive heat transfer structures with ...
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
Neural networks and deep learning are changing the way that engineering is being practiced. New and ...
The use of a convolutional neural network to develop a surrogate model of the electric field in MEMS...
Topology optimization problems pose substantial requirements in computing resources, which become pr...