Two neural networks (NN) are designed to predict the particle mobility of a molecular glassformer in a wide time window ranging from vibrational dynamics to structural relaxation. Both NNs are trained by information concerning the local structure of the environment surrounding a given particle. The only difference in the learning procedure is the inclusion (NN A) or not (NN B) of the information provided by the fast, vibrational dynamics and quantified by the local Debye–Waller factor. It is found that, for a given temperature, the prediction provided by the NN A is more accurate, a finding which is tentatively ascribed to better account of the bond reorientation. Both NNs are found to exhibit impressive and rather comparable performance to...
We present a general framework for the construction of a deep feedforward neural network (FFNN) to p...
Within the glassy liquids community, the use of Machine Learning (ML) to model particles' static str...
International audienceSolid-State NMR has become an essential spectroscopy for the elucidation of th...
The recent developments of machine learning have enabled accurate predictions of glassy dynamics. Ho...
Glass transition temperature and related dynamics play an essential role in amorphous materials rese...
In the quest to understand how structure and dynamics are connected in glasses, a number of machine ...
Glass transitions are widely observed in various types of soft matter systems. However, the physical...
Due to lack of either translational or rotational symmetries at atomic-scale, predicting properties ...
A nonlinear model and a linear model have been developed to correlate glass transition temperature (...
Infrared spectroscopy is key to elucidate molecular structures, monitor reactions and observe confor...
© 2018 Informa UK Limited, trading as Taylor & Francis Group. Understanding the thermal properties o...
Predicting the local dynamics of supercooled liquids based purely on local structure is a key challe...
AbstractThe longitudinal and shear velocities of ultrasonic waves in glass systems are influenced by...
We used fully connected artificial neural networks (ANN) to localize and quantify, based on the mono...
We present a general framework for the construction of a deep feedforward neural network (FFNN) to p...
We present a general framework for the construction of a deep feedforward neural network (FFNN) to p...
Within the glassy liquids community, the use of Machine Learning (ML) to model particles' static str...
International audienceSolid-State NMR has become an essential spectroscopy for the elucidation of th...
The recent developments of machine learning have enabled accurate predictions of glassy dynamics. Ho...
Glass transition temperature and related dynamics play an essential role in amorphous materials rese...
In the quest to understand how structure and dynamics are connected in glasses, a number of machine ...
Glass transitions are widely observed in various types of soft matter systems. However, the physical...
Due to lack of either translational or rotational symmetries at atomic-scale, predicting properties ...
A nonlinear model and a linear model have been developed to correlate glass transition temperature (...
Infrared spectroscopy is key to elucidate molecular structures, monitor reactions and observe confor...
© 2018 Informa UK Limited, trading as Taylor & Francis Group. Understanding the thermal properties o...
Predicting the local dynamics of supercooled liquids based purely on local structure is a key challe...
AbstractThe longitudinal and shear velocities of ultrasonic waves in glass systems are influenced by...
We used fully connected artificial neural networks (ANN) to localize and quantify, based on the mono...
We present a general framework for the construction of a deep feedforward neural network (FFNN) to p...
We present a general framework for the construction of a deep feedforward neural network (FFNN) to p...
Within the glassy liquids community, the use of Machine Learning (ML) to model particles' static str...
International audienceSolid-State NMR has become an essential spectroscopy for the elucidation of th...