We propose a direct mesh-free method for performing topology optimization by integrating a density field approximation neural network with a displacement field approximation neural network. We show that this direct integration approach can give comparable results to conventional topology optimization techniques, with an added advantage of enabling seamless integration with post-processing software, and a potential of topology optimization with objectives where meshing and Finite Element Analysis (FEA) may be expensive or not suitable. Our approach (DMF-TONN) takes in as inputs the boundary conditions and domain coordinates and finds the optimum density field for minimizing the loss function of compliance and volume fraction constraint viola...
In traditional topology optimization, the computing time required to iteratively update the material...
In this paper, we present a topology optimization (TO) framework to simultaneously optimize the matr...
Typical topology optimization methods require complex iterative calculations, which cannot be realiz...
This paper explores the possibilities of applying physics-informed neural networks (PINNs) in topolo...
Recent advances in implicit neural representations show great promise when it comes to generating nu...
Physics-Informed Neural Networks (PINNs) have recently gained increasing attention in the field of t...
Powerful gradient-free topology optimization methods are needed for structural design concerning com...
Physics-Informed Neural Networks (PINNs) have recently attracted exponentially increasing attention ...
We propose a neural network-based approach to topology optimization that aims to reduce the use of s...
Topology optimisation is a mathematical approach relevant to different engineering problems where th...
A discrete approach introduces a novel deep learning approach for generating fine resolution structu...
Multiscale topology optimization is a numerical method that enables the synthesis of hierarchical st...
Topology optimization is a computationally expensive process, especially when complicated designs ar...
The question of how methods from the field of artificial intelligence can help improve the conventio...
Deep learning surrogate models have shown promise in solving partial differential equations (PDEs). ...
In traditional topology optimization, the computing time required to iteratively update the material...
In this paper, we present a topology optimization (TO) framework to simultaneously optimize the matr...
Typical topology optimization methods require complex iterative calculations, which cannot be realiz...
This paper explores the possibilities of applying physics-informed neural networks (PINNs) in topolo...
Recent advances in implicit neural representations show great promise when it comes to generating nu...
Physics-Informed Neural Networks (PINNs) have recently gained increasing attention in the field of t...
Powerful gradient-free topology optimization methods are needed for structural design concerning com...
Physics-Informed Neural Networks (PINNs) have recently attracted exponentially increasing attention ...
We propose a neural network-based approach to topology optimization that aims to reduce the use of s...
Topology optimisation is a mathematical approach relevant to different engineering problems where th...
A discrete approach introduces a novel deep learning approach for generating fine resolution structu...
Multiscale topology optimization is a numerical method that enables the synthesis of hierarchical st...
Topology optimization is a computationally expensive process, especially when complicated designs ar...
The question of how methods from the field of artificial intelligence can help improve the conventio...
Deep learning surrogate models have shown promise in solving partial differential equations (PDEs). ...
In traditional topology optimization, the computing time required to iteratively update the material...
In this paper, we present a topology optimization (TO) framework to simultaneously optimize the matr...
Typical topology optimization methods require complex iterative calculations, which cannot be realiz...