Abstract In this work, the authors have demonstrated the use of machine learning (ML) models in the prediction of bulk modulus for High Entropy Alloys (HEA). For the first time, ML has been used for optimizing the composition of HEA to achieve enhanced bulk modulus values. A total of 12 ML algorithms were trained to classify the elemental composition as HEA or non-HEA. Among these models, Gradient Boosting Classifier (GBC) was found to be the most accurate, with a test accuracy of 78%. Further, six regression models were trained to predict the bulk modulus of HEAs, and the best results were obtained by LASSO Regression model with an R-square value of 0.98 and an adjusted R-Square value of 0.97 for the test data set. This work effectively br...
High-entropy alloys (HEA) are a very new development in the field of metallurgical materials. They a...
In material science, experiments and high-throughput models often consume a large amount of calendar...
The development of multicomponent alloys with target properties poses a significant challenge, owing...
We formulate a materials design strategy combining a machine learning (ML) surrogate model with expe...
High entropy alloys (HEAs) are considered as a way to unlock the unlimited potentials of materials d...
High-entropy alloys (HEAs) with multiple constituent elements have been extensively studied in the p...
The high entropy alloys have become the most intensely researched materials in recent times. They of...
We combined descriptor-based analytical models for stiffness-matrix and elastic-moduli with mean-fie...
Abstract We identify compositionally complex alloys (CCAs) that offer exceptional mechanical propert...
High-entropy alloys (HEAs) have received much attention since presented in 2004. Machine learning (M...
Nearly ~10^8 types of High entropy alloys (HEAs) can be developed from about 64 elements in the peri...
High-entropy alloys (HEAs) have attracted a wide range of academic interest for their promising prop...
Abstract High-entropy alloys (HEAs) represent a promising class of materials with exceptional struct...
Alloys with excellent properties are always in significant demand for meeting the severe conditions ...
A new approach method has been studied for the efficient and accurate prediction of high-entropy all...
High-entropy alloys (HEA) are a very new development in the field of metallurgical materials. They a...
In material science, experiments and high-throughput models often consume a large amount of calendar...
The development of multicomponent alloys with target properties poses a significant challenge, owing...
We formulate a materials design strategy combining a machine learning (ML) surrogate model with expe...
High entropy alloys (HEAs) are considered as a way to unlock the unlimited potentials of materials d...
High-entropy alloys (HEAs) with multiple constituent elements have been extensively studied in the p...
The high entropy alloys have become the most intensely researched materials in recent times. They of...
We combined descriptor-based analytical models for stiffness-matrix and elastic-moduli with mean-fie...
Abstract We identify compositionally complex alloys (CCAs) that offer exceptional mechanical propert...
High-entropy alloys (HEAs) have received much attention since presented in 2004. Machine learning (M...
Nearly ~10^8 types of High entropy alloys (HEAs) can be developed from about 64 elements in the peri...
High-entropy alloys (HEAs) have attracted a wide range of academic interest for their promising prop...
Abstract High-entropy alloys (HEAs) represent a promising class of materials with exceptional struct...
Alloys with excellent properties are always in significant demand for meeting the severe conditions ...
A new approach method has been studied for the efficient and accurate prediction of high-entropy all...
High-entropy alloys (HEA) are a very new development in the field of metallurgical materials. They a...
In material science, experiments and high-throughput models often consume a large amount of calendar...
The development of multicomponent alloys with target properties poses a significant challenge, owing...