The use of a convolutional neural network to develop a surrogate model of the electric field in MEMS devices is proposed. An electrostatic micromotor is considered as the case study. In particular, different CNNs are trained for the prediction of the torque profile and the maximum torque value at a no-load condition and the radial force which could arise in case of the radial displacement of the rotor during motion. The proposed deep learning approach is able to predict the abovementioned quantities with a low error and, in particular, it allows for a decrease in the computational cost, especially in case of optimization problems based on FE models
In this paper CNNs are used for solving an optimization problem with two different approaches: CNN i...
In this study, we propose a fast topology optimization (TO) method based on a deep neural network (D...
Molecular mechanics is the tool of choice for the modeling of systems that are so large or complex t...
The use of a convolutional neural network to develop a surrogate model of the electric field in MEMS...
In computational electromagnetism there are manyfold advantages when using machine learning methods,...
In this work a novel approach is presented for topology optimization of low frequency electromagneti...
| openaire: EC/H2020/826452/EU//Arrowhead ToolsMachine learning and artificial neural networks have ...
This paper proposes a new method for accurately predicting rotating machine properties using a deep ...
The geometric designs of MEMS devices can profoundly impact their physical properties and eventual p...
Although intelligent machine learning techniques have been used for input-output modeling of many di...
In the design phase of an electrical machine, finite element (FE) simulation are commonly used to nu...
This paper presents the fast topology optimization methods for rotating machines based on deep learn...
peer reviewedDeep learning surrogate models are being increasingly used in accelerating scientific s...
We propose a method to predict performance variables according to the rotor slot shape of a three-ph...
Molecular mechanics is the tool of choice for the modeling of systems that are so large or complex t...
In this paper CNNs are used for solving an optimization problem with two different approaches: CNN i...
In this study, we propose a fast topology optimization (TO) method based on a deep neural network (D...
Molecular mechanics is the tool of choice for the modeling of systems that are so large or complex t...
The use of a convolutional neural network to develop a surrogate model of the electric field in MEMS...
In computational electromagnetism there are manyfold advantages when using machine learning methods,...
In this work a novel approach is presented for topology optimization of low frequency electromagneti...
| openaire: EC/H2020/826452/EU//Arrowhead ToolsMachine learning and artificial neural networks have ...
This paper proposes a new method for accurately predicting rotating machine properties using a deep ...
The geometric designs of MEMS devices can profoundly impact their physical properties and eventual p...
Although intelligent machine learning techniques have been used for input-output modeling of many di...
In the design phase of an electrical machine, finite element (FE) simulation are commonly used to nu...
This paper presents the fast topology optimization methods for rotating machines based on deep learn...
peer reviewedDeep learning surrogate models are being increasingly used in accelerating scientific s...
We propose a method to predict performance variables according to the rotor slot shape of a three-ph...
Molecular mechanics is the tool of choice for the modeling of systems that are so large or complex t...
In this paper CNNs are used for solving an optimization problem with two different approaches: CNN i...
In this study, we propose a fast topology optimization (TO) method based on a deep neural network (D...
Molecular mechanics is the tool of choice for the modeling of systems that are so large or complex t...