AMGenC: Generating Charge Balanced Amorphous Materials
Yan Lin, Jilin Hu, N. M. Anoop Krishnan, Morten M. Smedskjaer

TL;DR
AMGenC is a novel generative inverse design method for amorphous materials that guarantees charge-balanced samples efficiently, enhancing the design process for energy and thermal applications.
Contribution
It introduces a new approach combining element noise and projection techniques to ensure charge balance without extra computational cost.
Findings
AMGenC successfully generates charge-balanced amorphous materials.
Experimental results confirm the effectiveness of AMGenC in achieving design goals.
The method maintains inverse design accuracy while ensuring charge balance.
Abstract
Amorphous (disordered) materials are solids that have shown great potential in various domains, including energy storage, thermal management, and advanced materials. Unlike crystalline materials that can be described by unit cells containing a few to hundreds of atoms, amorphous materials require larger simulation cells with at least hundreds to thousands of atoms. To advance the design of amorphous materials with desired properties and facilitate the exploration of their vast design space, generative inverse design has emerged as a promising approach. It aims to directly output materials with properties closely aligned with the desired ones using probabilistic generative models conditioned on desired properties, which can be more resource efficient than the traditional trial-and-error approach. However, due to the inherent stochasticity of probabilistic generative models, when element…
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