Machine learning-accelerated design and synthesis of polyelemental heterostructures.
Carolin B WahlMuratahan AykolJordan H SwisherJoseph H MontoyaSantosh K SuramChad Alexander MirkinPublished in: Science advances (2021)
In materials discovery efforts, synthetic capabilities far outpace the ability to extract meaningful data from them. To bridge this gap, machine learning methods are necessary to reduce the search space for identifying desired materials. Here, we present a machine learning–driven, closed-loop experimental process to guide the synthesis of polyelemental nanomaterials with targeted structural properties. By leveraging data from an eight-dimensional chemical space (Au-Ag-Cu-Co-Ni-Pd-Sn-Pt) as inputs, a Bayesian optimization algorithm is used to suggest previously unidentified nanoparticle compositions that target specific interfacial motifs for synthesis, results of which are iteratively shared back with the algorithm. This feedback loop resulted in successful syntheses of 18 heterojunction nanomaterials that are too complex to discover by chemical intuition alone, including extremely chemically complex biphasic nanoparticles reported to date. Platforms like the one developed here are poised to transform materials discovery across a wide swath of applications and industries.
Keyphrases
- machine learning
- big data
- artificial intelligence
- deep learning
- small molecule
- electronic health record
- high throughput
- visible light
- ionic liquid
- oxidative stress
- cancer therapy
- quantum dots
- sensitive detection
- reduced graphene oxide
- transcription factor
- drug delivery
- gold nanoparticles
- molecular dynamics simulations
- anti inflammatory
- perovskite solar cells
- highly efficient
- neural network
- iron oxide