Litcius/Paper detail

Large scale dataset of real space electronic charge density of cubic inorganic materials from density functional theory (DFT) calculations

Fancy Qian Wang, Kamal Choudhary, Yu Liu, Jianjun Hu, Ming Hu

2022Scientific Data13 citationsDOIOpen Access PDF

Abstract

Driven by the big data science, material informatics has attracted enormous research interests recently along with many recognized achievements. To acquire knowledge of materials by previous experience, both feature descriptors and databases are essential for training machine learning (ML) models with high accuracy. In this regard, the electronic charge density ρ(r), which in principle determines the properties of materials at their ground state, can be considered as one of the most appropriate descriptors. However, the systematic electronic charge density ρ(r) database of inorganic materials is still in its infancy due to the difficulties in collecting raw data in experiment and the expensive first-principles based computational cost in theory. Herein, a real space electronic charge density ρ(r) database of 17,418 cubic inorganic materials is constructed by performing high-throughput density functional theory calculations. The displayed ρ(r) patterns show good agreements with those reported in previous studies, which validates our computations. Further statistical analysis reveals that it possesses abundant and diverse data, which could accelerate ρ(r) related machine learning studies. Moreover, the electronic charge density database will also assists chemical bonding identifications and promotes new crystal discovery in experiments.

Topics & Concepts

Density functional theoryCharge (physics)Computer scienceChemical spaceMaterials informaticsSpace (punctuation)Electronic structureCharge densityComputationElectronic densityDatabaseData miningMachine learningPhysicsChemistryComputational chemistryAlgorithmHealth informaticsQuantum mechanicsDrug discoveryMedicineOperating systemPublic healthNursingBiochemistryEngineering informaticsMachine Learning in Materials ScienceX-ray Diffraction in CrystallographyComputational Drug Discovery Methods