A multi-dimensional random number generation algorithm was used to distribute chemical concentrations of each of the alloying elements in the candidate alloys as uniformly as possible while maintaining the prescribed bounds on the minimum and maximum allowable values for the concentration of each of the alloying elements. The generated candidate alloy compositions were then examined for phase equilibria and associated magnetic properties using a thermodynamic database in the desired temperature range. These initial candidate alloys were manufactured, synthesized and tested for desired properties. Then, the experimentally obtained values of the properties were fitted with a multi-dimensional response surface. The desired properties were trea...
Machine Learning (ML) plays an increasingly important role in the discovery and design of new materi...
We formulate a materials design strategy combining a machine learning (ML) surrogate model with expe...
We apply machine learning algorithms to optimize thermodynamic and elastic properties of multicompon...
This work demonstrates a novel approach to design and optimization of rare-earth free magnetic mater...
AlNiCo magnets are known for high-temperature stability and superior corrosion resistance and have b...
AlNiCo magnets are known for high-temperature stability and superior corrosion resistance and have b...
ABSTRACT AlNiCo magnets are permanent magnetic alloys based on the Al-Ni-Co-Fe system. In the presen...
A combined experimental\u2013computational methodology for accelerated design of AlNiCo-type permane...
An advanced semi-stochastic algorithm for constrained multi-objective optimization has been adapted ...
International audienceA new computational framework for systematic and optimal alloy design is intro...
The primary goal of this research was to develop a comprehensive methodology for designing and optim...
The soft magnetic properties of Fe-based amorphous alloys can be controlled by their compositions th...
A theory-guided computational approach for alloy design is presented. Aimed at optimising the desire...
International audienceA new alloy design procedure is proposed, combining in a single computational ...
With the development of the materials genome philosophy and data mining methodologies, machine learn...
Machine Learning (ML) plays an increasingly important role in the discovery and design of new materi...
We formulate a materials design strategy combining a machine learning (ML) surrogate model with expe...
We apply machine learning algorithms to optimize thermodynamic and elastic properties of multicompon...
This work demonstrates a novel approach to design and optimization of rare-earth free magnetic mater...
AlNiCo magnets are known for high-temperature stability and superior corrosion resistance and have b...
AlNiCo magnets are known for high-temperature stability and superior corrosion resistance and have b...
ABSTRACT AlNiCo magnets are permanent magnetic alloys based on the Al-Ni-Co-Fe system. In the presen...
A combined experimental\u2013computational methodology for accelerated design of AlNiCo-type permane...
An advanced semi-stochastic algorithm for constrained multi-objective optimization has been adapted ...
International audienceA new computational framework for systematic and optimal alloy design is intro...
The primary goal of this research was to develop a comprehensive methodology for designing and optim...
The soft magnetic properties of Fe-based amorphous alloys can be controlled by their compositions th...
A theory-guided computational approach for alloy design is presented. Aimed at optimising the desire...
International audienceA new alloy design procedure is proposed, combining in a single computational ...
With the development of the materials genome philosophy and data mining methodologies, machine learn...
Machine Learning (ML) plays an increasingly important role in the discovery and design of new materi...
We formulate a materials design strategy combining a machine learning (ML) surrogate model with expe...
We apply machine learning algorithms to optimize thermodynamic and elastic properties of multicompon...