Abstract Interfacial thermal resistance (ITR) is a critical property for the performance of nanostructured devices where phonon mean free paths are larger than the characteristic length scales. The affordable, accurate and reliable prediction of ITR is essential for material selection in thermal management. In this work, the state-of-the-art machine learning methods were employed to realize this. Descriptor selection was conducted to build robust models and provide guidelines on determining the most important characteristics for targets. Firstly, decision tree (DT) was adopted to calculate the descriptor importances. And descriptor subsets with topX highest importances were chosen (topX-DT, X = 20, 15, 10, 5) to build models. To verify the ...
Directed energy deposition (DED) is a rising field in the arena of metal additive manufacturing and ...
In Direct Energy Deposition (DED), the melt pool temperature is a critical control parameter that a...
In-situ monitoring of the additive layer characteristics in the directed energy deposition (DED) pro...
Interfacial thermal resistance (ITR) plays a critical role in the thermal properties of a variety of...
We present details of the two datasets for the ITR model training and prediction, one is the "ITR da...
High-throughput computational and experimental design of materials aided by machine learning have be...
Particle-laden composites are typical thermal interfacial materials (TIMs) in the electronic applica...
A knowledge of the physical properties of materials as a function of temperature, composition, appli...
During the last 30 years, microelectronic devices have been continuously designed and developed with...
Statistical methods, and especially machine learning, have been increasingly used in nanofluid model...
International audienceThermoelectric (TE) materials provide a solid-state solution in waste heat rec...
Thermal conductivity is one of the crucial properties of nano enhanced phase change materials (NEPCM...
A machine learning strategy based on the semi-analytical singular boundary method (SBM) is presented...
First principles-based modeling on phonon dynamics and transport using density functional theory and...
peer reviewedIn the last decade, machine learning is increasingly attracting researchers in several ...
Directed energy deposition (DED) is a rising field in the arena of metal additive manufacturing and ...
In Direct Energy Deposition (DED), the melt pool temperature is a critical control parameter that a...
In-situ monitoring of the additive layer characteristics in the directed energy deposition (DED) pro...
Interfacial thermal resistance (ITR) plays a critical role in the thermal properties of a variety of...
We present details of the two datasets for the ITR model training and prediction, one is the "ITR da...
High-throughput computational and experimental design of materials aided by machine learning have be...
Particle-laden composites are typical thermal interfacial materials (TIMs) in the electronic applica...
A knowledge of the physical properties of materials as a function of temperature, composition, appli...
During the last 30 years, microelectronic devices have been continuously designed and developed with...
Statistical methods, and especially machine learning, have been increasingly used in nanofluid model...
International audienceThermoelectric (TE) materials provide a solid-state solution in waste heat rec...
Thermal conductivity is one of the crucial properties of nano enhanced phase change materials (NEPCM...
A machine learning strategy based on the semi-analytical singular boundary method (SBM) is presented...
First principles-based modeling on phonon dynamics and transport using density functional theory and...
peer reviewedIn the last decade, machine learning is increasingly attracting researchers in several ...
Directed energy deposition (DED) is a rising field in the arena of metal additive manufacturing and ...
In Direct Energy Deposition (DED), the melt pool temperature is a critical control parameter that a...
In-situ monitoring of the additive layer characteristics in the directed energy deposition (DED) pro...