Deep learning for size-agnostic inverse design of random-network 3D
printed mechanical metamaterials
- URL: http://arxiv.org/abs/2212.12047v1
- Date: Thu, 22 Dec 2022 21:32:02 GMT
- Title: Deep learning for size-agnostic inverse design of random-network 3D
printed mechanical metamaterials
- Authors: Helda Pahlavani, Kostas Tsifoutis-Kazolis, Prerak Mody, Jie Zhou,
Mohammad J. Mirzaali, Amir A. Zadpoor
- Abstract summary: Practical applications of mechanical metamaterials often involve solving inverse problems where the objective is to find the (multiple) microarchitectures that give rise to a given set of properties.
We propose a modular approach titled 'Deep-DRAM' that combines four decoupled models, including two deep learning models (DLM), a deep generative model (DGM) based on conditional variational autoencoders (CVAE) and direct finite element (FE) simulations.
- Score: 11.097689467173666
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Practical applications of mechanical metamaterials often involve solving
inverse problems where the objective is to find the (multiple)
microarchitectures that give rise to a given set of properties. The limited
resolution of additive manufacturing techniques often requires solving such
inverse problems for specific sizes. One should, therefore, find multiple
microarchitectural designs that exhibit the desired properties for a specimen
with given dimensions. Moreover, the candidate microarchitectures should be
resistant to fatigue and fracture, meaning that peak stresses should be
minimized as well. Such a multi-objective inverse design problem is formidably
difficult to solve but its solution is the key to real-world applications of
mechanical metamaterials. Here, we propose a modular approach titled
'Deep-DRAM' that combines four decoupled models, including two deep learning
models (DLM), a deep generative model (DGM) based on conditional variational
autoencoders (CVAE), and direct finite element (FE) simulations. Deep-DRAM
(deep learning for the design of random-network metamaterials) integrates these
models into a unified framework capable of finding many solutions to the
multi-objective inverse design problem posed here. The integrated framework
first introduces the desired elastic properties to the DGM, which returns a set
of candidate designs. The candidate designs, together with the target specimen
dimensions are then passed to the DLM which predicts their actual elastic
properties considering the specimen size. After a filtering step based on the
closeness of the actual properties to the desired ones, the last step uses
direct FE simulations to identify the designs with the minimum peak stresses.
Related papers
- Steering Masked Discrete Diffusion Models via Discrete Denoising Posterior Prediction [88.65168366064061]
We introduce Discrete Denoising Posterior Prediction (DDPP), a novel framework that casts the task of steering pre-trained MDMs as a problem of probabilistic inference.
Our framework leads to a family of three novel objectives that are all simulation-free, and thus scalable.
We substantiate our designs via wet-lab validation, where we observe transient expression of reward-optimized protein sequences.
arXiv Detail & Related papers (2024-10-10T17:18:30Z) - Sensitivity analysis using the Metamodel of Optimal Prognosis [0.0]
In real case applications within the virtual prototyping process, it is not always possible to reduce the complexity of the physical models.
We present an automatic approach for the selection of the optimal suitable meta-model for the actual problem.
arXiv Detail & Related papers (2024-08-07T07:09:06Z) - A Microstructure-based Graph Neural Network for Accelerating Multiscale
Simulations [0.0]
We introduce an alternative surrogate modeling strategy that allows for keeping the multiscale nature of the problem.
We achieve this by predicting full-field microscopic strains using a graph neural network (GNN) while retaining the microscopic material model.
We demonstrate for several challenging scenarios that the surrogate can predict complex macroscopic stress-strain paths.
arXiv Detail & Related papers (2024-02-20T15:54:24Z) - Multi-Hierarchical Surrogate Learning for Structural Dynamical Crash
Simulations Using Graph Convolutional Neural Networks [5.582881461692378]
We propose a multi-hierarchical framework for structurally creating a series of surrogate models for a kart frame.
For multiscale phenomena, macroscale features are captured on a coarse surrogate, whereas microscale effects are resolved by finer ones.
We train a graph-convolutional neural network-based surrogate that learns parameter-dependent low-dimensional latent dynamics on the coarsest representation.
arXiv Detail & Related papers (2024-02-14T15:22:59Z) - Generative Inverse Design of Metamaterials with Functional Responses by Interpretable Learning [3.931881794708454]
We propose the Random-forest-based Interpretable Generative Inverse Design (RIGID)
RIGID is a single-shot inverse design method for fast generation of metamaterial designs with on-demand functional behaviors.
We validate RIGID on acoustic and optical metamaterial design problems, each with fewer than 250 training samples.
arXiv Detail & Related papers (2023-12-08T04:24:03Z) - Multi-Agent Reinforcement Learning for Microprocessor Design Space
Exploration [71.95914457415624]
Microprocessor architects are increasingly resorting to domain-specific customization in the quest for high-performance and energy-efficiency.
We propose an alternative formulation that leverages Multi-Agent RL (MARL) to tackle this problem.
Our evaluation shows that the MARL formulation consistently outperforms single-agent RL baselines.
arXiv Detail & Related papers (2022-11-29T17:10:24Z) - A Pareto-optimal compositional energy-based model for sampling and
optimization of protein sequences [55.25331349436895]
Deep generative models have emerged as a popular machine learning-based approach for inverse problems in the life sciences.
These problems often require sampling new designs that satisfy multiple properties of interest in addition to learning the data distribution.
arXiv Detail & Related papers (2022-10-19T19:04:45Z) - How to See Hidden Patterns in Metamaterials with Interpretable Machine
Learning [82.67551367327634]
We develop a new interpretable, multi-resolution machine learning framework for finding patterns in the unit-cells of materials.
Specifically, we propose two new interpretable representations of metamaterials, called shape-frequency features and unit-cell templates.
arXiv Detail & Related papers (2021-11-10T21:19:02Z) - Conservative Objective Models for Effective Offline Model-Based
Optimization [78.19085445065845]
Computational design problems arise in a number of settings, from synthetic biology to computer architectures.
We propose a method that learns a model of the objective function that lower bounds the actual value of the ground-truth objective on out-of-distribution inputs.
COMs are simple to implement and outperform a number of existing methods on a wide range of MBO problems.
arXiv Detail & Related papers (2021-07-14T17:55:28Z) - Reinforcement Learning for Adaptive Mesh Refinement [63.7867809197671]
We propose a novel formulation of AMR as a Markov decision process and apply deep reinforcement learning to train refinement policies directly from simulation.
The model sizes of these policy architectures are independent of the mesh size and hence scale to arbitrarily large and complex simulations.
arXiv Detail & Related papers (2021-03-01T22:55:48Z) - Deep Generative Modeling for Mechanistic-based Learning and Design of
Metamaterial Systems [20.659457956055366]
We propose a novel data-driven metamaterial design framework based on deep generative modeling.
We show in this study that the latent space of VAE provides a distance metric to measure shape similarity.
We demonstrate our framework by designing both functionally graded and heterogeneous metamaterial systems.
arXiv Detail & Related papers (2020-06-27T03:56:55Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.