arXiv Open Access 2023

VAE for Modified 1-Hot Generative Materials Modeling, A Step Towards Inverse Material Design

Khalid El-Awady
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Abstrak

We investigate the construction of generative models capable of encoding physical constraints that can be hard to express explicitly. For the problem of inverse material design, where one seeks to design a material with a prescribed set of properties, a significant challenge is ensuring synthetic viability of a proposed new material. We encode an implicit dataset relationships, namely that certain materials can be decomposed into other ones in the dataset, and present a VAE model capable of preserving this property in the latent space and generating new samples with the same. This is particularly useful in sequential inverse material design, an emergent research area that seeks to design a material with specific properties by sequentially adding (or removing) elements using policies trained through deep reinforcement learning.

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K

Khalid El-Awady

Format Sitasi

El-Awady, K. (2023). VAE for Modified 1-Hot Generative Materials Modeling, A Step Towards Inverse Material Design. https://arxiv.org/abs/2401.06779

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Tahun Terbit
2023
Bahasa
en
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arXiv
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Open Access ✓