An active learning approach to train machine-learning interatomic potentials (moment tensor potentials) for multicomponent alloys to ab initio data is presented. Employing this approach, the disordered body-centered cubic (bcc) TiZrHfTax system with varying Ta concentration is investigated via molecular dynamics simulations. Our results show a strong interplay between elastic properties and the structural ω phase stability, strongly affecting the mechanical properties. Based on these insights we systematically screen composition space for regimes where elastic constants show little or no temperature dependence (elinvar effect).Team Marcel Sluite
High-temperature thermal stability, elastic moduli and anisotropy are among the key properties, whic...
We utilize a machine-learning force field, trained by a neural network (NN) with bispectrum coeffici...
We utilize a machine-learning force field, trained by a neural network (NN) with bispectrum coeffici...
An active learning approach to train machine-learning interatomic potentials (moment tensor potentia...
An active learning approach to train machine-learning interatomic potentials (moment tensor potentia...
Abstract Chemically complex multicomponent alloys possess exceptional properties derived from an ine...
Recently, high-entropy alloys (HEAs) have attracted wide attention due to their extraordinary materi...
Recently, high-entropy alloys (HEAs) have attracted wide attention due to their extraordinary materi...
A combination of quantum mechanics calculations with machine learning techniques can lead to a parad...
Recent experiments show that the chemical composition of body-centered cubic (bcc) refractory high e...
Considering Ti-V alloys with the body-centered cubic crystal lattice, a system with mechanical insta...
Recent experiments show that the chemical composition of body-centered cubic (bcc) refractory high e...
Understanding materials dynamics under extreme conditions of pressure, temperature, and strain rate ...
Understanding materials dynamics under extreme conditions of pressure, temperature, and strain rate ...
We utilize a machine-learning force field, trained by a neural network (NN) with bispectrum coeffici...
High-temperature thermal stability, elastic moduli and anisotropy are among the key properties, whic...
We utilize a machine-learning force field, trained by a neural network (NN) with bispectrum coeffici...
We utilize a machine-learning force field, trained by a neural network (NN) with bispectrum coeffici...
An active learning approach to train machine-learning interatomic potentials (moment tensor potentia...
An active learning approach to train machine-learning interatomic potentials (moment tensor potentia...
Abstract Chemically complex multicomponent alloys possess exceptional properties derived from an ine...
Recently, high-entropy alloys (HEAs) have attracted wide attention due to their extraordinary materi...
Recently, high-entropy alloys (HEAs) have attracted wide attention due to their extraordinary materi...
A combination of quantum mechanics calculations with machine learning techniques can lead to a parad...
Recent experiments show that the chemical composition of body-centered cubic (bcc) refractory high e...
Considering Ti-V alloys with the body-centered cubic crystal lattice, a system with mechanical insta...
Recent experiments show that the chemical composition of body-centered cubic (bcc) refractory high e...
Understanding materials dynamics under extreme conditions of pressure, temperature, and strain rate ...
Understanding materials dynamics under extreme conditions of pressure, temperature, and strain rate ...
We utilize a machine-learning force field, trained by a neural network (NN) with bispectrum coeffici...
High-temperature thermal stability, elastic moduli and anisotropy are among the key properties, whic...
We utilize a machine-learning force field, trained by a neural network (NN) with bispectrum coeffici...
We utilize a machine-learning force field, trained by a neural network (NN) with bispectrum coeffici...