Platform for AI-driven inverse design of metamaterials

The 20th century saw incredible advancement in physics, while the 21st century has become the century of digital services and AI. 

At Matterdyne, we aim to drive a new era of advancement in physical and materials science with AI.

We are building a platform and tooling to design metamaterials with customized physical properties on demand.


We are taking part in the Oxford University Innovation Startup Incubator Phase 1 programme

 

Metamaterials

Microscopic structures, such as repeating units of 3D-printed cells, can possess exotic physical properties differing from their underlying material. 

Well-known examples include extreme stiffness at low density, negative refractive index, and negative Poisson ratio.

Metamaterials can be designed for bespoke mechanical, thermodynamic, optical, acoustic and electromagnetic properties.

Metasurfaces

Thin coatings or structures on material surfaces can be designed to have unusual physical properties.

Just as 3D metamaterials can have exotic properties, e.g. mechanical, optical, acoustic, so can specially engineered 2D metasurfaces.

Well-known examples include anisotropic friction, anti-reflection coatings, and antibacterial properties.

 

Physics-based "forward" simulation

With our knowledge of physics and properties of base materials, we can write and test physics-based simulators for metamaterials.

This is the "forward" simulation problem, and it is well-defined. The "inverse design problem", i.e. calculating the correct structure to fit the required physical properties is, to a traditional physicist, an "ill-posed" problem, since it can have one, zero, or many possible solutions.

"Classically", this is a hard problem. We can leverage AI to solve it.

Generative AI for "inverse design"

Machine learning is an approach to AI that tunes the parameters of expressive mathematical models to fit a dataset, rather than to hard-code the logic like a conventional programmer.

Machine learning allows us to use datasets produced by forward simulation of many metamaterials to model the reverse process (inverse design). Generative AI allows us to produce many different suggestions that may meet the requirements.

Questions?

Contact anthony@matterdyne.com for more insight 😎.