Topology optimization problems pose substantial requirements in computing resources, which become prohibitive in cases of large-scale design domains discretized with fine finite element meshes. A Deep Learning-assisted Topology OPtimization (DLTOP) methodology was previously developed by the authors, which employs deep learning techniques to predict the optimized system configuration, thus substantially reducing the required computational effort of the optimization algorithm and overcoming potential bottlenecks. Building upon DLTOP, this study presents a novel Deep Learning-based Model Upgrading (DLMU) scheme. The scheme utilizes reduced order (surrogate) modeling techniques, which downscale complex models while preserving their original be...
Topology optimisation can facilitate engineers in proposing efficient and novel conceptual design sc...
In this work, we develop level-set topology optimization methods accelerated by projection-based red...
A discrete approach introduces a novel deep learning approach for generating fine resolution structu...
Topology optimization problems pose substantial requirements in computing resources, which become pr...
Topology optimization is a computationally expensive process, especially when complicated designs ar...
Powerful gradient-free topology optimization methods are needed for structural design concerning com...
Traditional structural topology optimization process depends on series of finite element analysis (F...
Physics-Informed Neural Networks (PINNs) have recently gained increasing attention in the field of t...
The problem of Topology Optimization aims to solve the question of the optimal material distribution...
In this work, a topology optimization procedure is proposed and applied to the TEAM 25 problem, i.e....
In traditional topology optimization, the computing time required to iteratively update the material...
The use of behavioral models based on deep learning (DL) to accelerate electromagnetic field computa...
This paper shows the application of Deep Neural Network algorithms for Fluid-Structure Topology Opti...
International audienceSUMMARYTopology optimization of large scale structures is computationally expe...
This paper presents a non-iterative topology optimizer for conductive heat transfer structures with ...
Topology optimisation can facilitate engineers in proposing efficient and novel conceptual design sc...
In this work, we develop level-set topology optimization methods accelerated by projection-based red...
A discrete approach introduces a novel deep learning approach for generating fine resolution structu...
Topology optimization problems pose substantial requirements in computing resources, which become pr...
Topology optimization is a computationally expensive process, especially when complicated designs ar...
Powerful gradient-free topology optimization methods are needed for structural design concerning com...
Traditional structural topology optimization process depends on series of finite element analysis (F...
Physics-Informed Neural Networks (PINNs) have recently gained increasing attention in the field of t...
The problem of Topology Optimization aims to solve the question of the optimal material distribution...
In this work, a topology optimization procedure is proposed and applied to the TEAM 25 problem, i.e....
In traditional topology optimization, the computing time required to iteratively update the material...
The use of behavioral models based on deep learning (DL) to accelerate electromagnetic field computa...
This paper shows the application of Deep Neural Network algorithms for Fluid-Structure Topology Opti...
International audienceSUMMARYTopology optimization of large scale structures is computationally expe...
This paper presents a non-iterative topology optimizer for conductive heat transfer structures with ...
Topology optimisation can facilitate engineers in proposing efficient and novel conceptual design sc...
In this work, we develop level-set topology optimization methods accelerated by projection-based red...
A discrete approach introduces a novel deep learning approach for generating fine resolution structu...