AbstractIn materials science, the discovery of recipes that yield nanomaterials with defined optical properties is costly and time-consuming. In this study, we present a two-step framework for a machine learning-driven high-throughput microfluidic platform to rapidly produce silver nanoparticles with the desired absorbance spectrum. Combining a Gaussian process-based Bayesian optimization (BO) with a deep neural network (DNN), the algorithmic framework is able to converge towards the target spectrum after sampling 120 conditions. Once the dataset is large enough to train the DNN with sufficient accuracy in the region of the target spectrum, the DNN is used to predict the colour palette accessible with the reaction synthesis. While remaining...
The optimization of nanomaterial synthesis using numerous synthetic variables is considered to be ex...
Knowing the correlation of reaction parameters in the preparation process of carbon dots (CDs) is es...
Sustainable energy strategies, particularly solar-to-hydrogen production, are anticipated to overcom...
Nanomaterials draw attention because of their unique physical, chemical and biological properties in...
The catalytic performance of nanoparticles is dependent on an extensive number of properties, reacti...
Artificial neural network (ANN) models have the capacity to eliminate the need for expensive experim...
We present an autonomous chemical synthesis robot for the exploration, discovery, and optimization o...
The quality and property control of nanomaterials are center themes to guarantee and promote their a...
Machine learning has been an emerging scientific field serving the modern multidisciplinary needs in...
Recently, a novel machine learning model has emerged in the field of reinforcement learning known as...
Advances in plasmonic materials and devices have given rise to a variety of applications in photocat...
Artificial neural network (ANN) is the most accepted method for non-parametric modelling and process...
Nowadays, technologies involving nanoparticles, colloids,sensors, and artificial intelligence are wi...
We present an autonomous chemical synthesis robot for the exploration, discovery, and optimisation o...
Nanoparticles (NPs) have a broad range of applications. Nanoparticle properties are governed by thei...
The optimization of nanomaterial synthesis using numerous synthetic variables is considered to be ex...
Knowing the correlation of reaction parameters in the preparation process of carbon dots (CDs) is es...
Sustainable energy strategies, particularly solar-to-hydrogen production, are anticipated to overcom...
Nanomaterials draw attention because of their unique physical, chemical and biological properties in...
The catalytic performance of nanoparticles is dependent on an extensive number of properties, reacti...
Artificial neural network (ANN) models have the capacity to eliminate the need for expensive experim...
We present an autonomous chemical synthesis robot for the exploration, discovery, and optimization o...
The quality and property control of nanomaterials are center themes to guarantee and promote their a...
Machine learning has been an emerging scientific field serving the modern multidisciplinary needs in...
Recently, a novel machine learning model has emerged in the field of reinforcement learning known as...
Advances in plasmonic materials and devices have given rise to a variety of applications in photocat...
Artificial neural network (ANN) is the most accepted method for non-parametric modelling and process...
Nowadays, technologies involving nanoparticles, colloids,sensors, and artificial intelligence are wi...
We present an autonomous chemical synthesis robot for the exploration, discovery, and optimisation o...
Nanoparticles (NPs) have a broad range of applications. Nanoparticle properties are governed by thei...
The optimization of nanomaterial synthesis using numerous synthetic variables is considered to be ex...
Knowing the correlation of reaction parameters in the preparation process of carbon dots (CDs) is es...
Sustainable energy strategies, particularly solar-to-hydrogen production, are anticipated to overcom...