Autonomous synthesis and characterization of inorganic materials require the automatic and accurate analysis of X-ray diffraction spectra. For this task, we designed a probabilistic deep learning algorithm to identify complex multi-phase mixtures. At the core of this algorithm lies an ensemble convolutional neural network trained on simulated diffraction spectra, which are systematically augmented with physics-informed perturbations to account for artifacts that can arise during experimental sample preparation and synthesis. Larger perturbations associated with off-stoichiometry are also captured by supplementing the training set with hypothetical solid solutions. Spectra containing mixtures of materials are analyzed with a newly developed ...
Deep learning consists of deep convolutional layers and an unsupervised feature selection phase. The...
We apply variational autoencoders (VAE) to X-ray diffraction (XRD) data analysis on both simulated a...
As the materials science community seeks to capitalize on recent advancements in computer science, t...
We present Parameter Quantification Network (PQ-Net), a regression deep convolutional neural network...
A deep machine-learning technique based on a convolutional neural network (CNN) is introduced. It ha...
© 2019, The Author(s). X-ray diffraction (XRD) data acquisition and analysis is among the most time-...
Machine learning has been successfully employed in computer vision, speech processing, and natural l...
Deep learning (DL) is one of the fastest-growing topics in materials data science, with rapidly emer...
Due to their ability to recognize complex patterns, neural networks can drive a paradigm shift in th...
Herein, data‐driven symmetry identification, property prediction, and low‐dimensional embedding from...
International audienceMachine learning (ML) methods are becoming the state-of-the-art in numerous do...
Machine learning algorithms based on artificial neural networks have proven very useful for a variet...
The discovery of multicomponent inorganic compounds can provide direct solutions to scientific and e...
Convolutional neural network (CNN) consists of shallow learning machine and automatic feature extrac...
We demonstrate the application of deep neural networks as a machine-learning tool for the analysis o...
Deep learning consists of deep convolutional layers and an unsupervised feature selection phase. The...
We apply variational autoencoders (VAE) to X-ray diffraction (XRD) data analysis on both simulated a...
As the materials science community seeks to capitalize on recent advancements in computer science, t...
We present Parameter Quantification Network (PQ-Net), a regression deep convolutional neural network...
A deep machine-learning technique based on a convolutional neural network (CNN) is introduced. It ha...
© 2019, The Author(s). X-ray diffraction (XRD) data acquisition and analysis is among the most time-...
Machine learning has been successfully employed in computer vision, speech processing, and natural l...
Deep learning (DL) is one of the fastest-growing topics in materials data science, with rapidly emer...
Due to their ability to recognize complex patterns, neural networks can drive a paradigm shift in th...
Herein, data‐driven symmetry identification, property prediction, and low‐dimensional embedding from...
International audienceMachine learning (ML) methods are becoming the state-of-the-art in numerous do...
Machine learning algorithms based on artificial neural networks have proven very useful for a variet...
The discovery of multicomponent inorganic compounds can provide direct solutions to scientific and e...
Convolutional neural network (CNN) consists of shallow learning machine and automatic feature extrac...
We demonstrate the application of deep neural networks as a machine-learning tool for the analysis o...
Deep learning consists of deep convolutional layers and an unsupervised feature selection phase. The...
We apply variational autoencoders (VAE) to X-ray diffraction (XRD) data analysis on both simulated a...
As the materials science community seeks to capitalize on recent advancements in computer science, t...