Automated Author Profile

Anjiang, Ye

Current S-Index

0.9

Sum of Dataset Indices for all datasets

Average Dataset Index per Dataset

0.3

Average Dataset Index per dataset

Total Datasets

3

Total datasets for this author

Average FAIR Score

13.5%

Average FAIR Score per dataset

Total Citations

0

Total citations to the author's datasets

Total Mentions

0

Total mentions of the author's datasets

S-Index Interpretation

S-Index Over Time

Cumulative Citations Over Time

Cumulative Mentions Over Time

Datasets

High-Throughput Screening Platform for Solid Electrolytes Combining Hierarchical Ion-Transport Prediction Algorithms

The combination of a materials database with high-throughput ion-transport calculations is an effective approach to screen for promising solid electrolytes. However, automating the complicated preprocessing involved in currently widely used ion-transport characterization algorithms, such as the first-principles nudged elastic band (FP-NEB) method, remains challenging. Here, we report on high-throughput screening platform for solid electrolytes (SPSE) that integrates a materials database with hierarchical ion-transport calculations realized by implementing empirical algorithms to assist in FP-NEB calculation. We first preliminarily screen candidates and determine the approximate ion-transport paths using empirical geometric analysis and bond valence method. A chain of images is then automatically generated along these paths for accurate FP-NEB calculation. In addition, an open web interface is actualized to enable access to the SPSE database, thereby facilitating machine learning. This interactive platform provides a workflow toward high-throughput screening for future discovery and design of promising solid electrolytes and the SPSE database is based on the FAIR principles for the benefit of the broad research community.

Authors

  • Bing, He ;
  • Chi, Shuting ;
  • Anjiang, Ye ;
  • Penghui, Mi ;
  • Liwen, Zhang ;
  • Bowei, Pu ;
  • Zheyi, Zou ;
  • Li, Pan ;
  • Yunbing, Ran ;
  • Qian, Zhao ;
  • Da, Wang ;
  • Wenqing, Zhang ;
  • Jingtai, Zhao ;
  • Avdeev, Maxim ;
  • Siqi, Shi
0 Citations0 Mentions13% FAIR0.3 Dataset Index
10.6084/m9.figshare.9783827January 2020

High-Throughput Screening Platform for Solid Electrolytes Combining Hierarchical Ion-Transport Prediction Algorithms

The combination of a materials database with high-throughput ion-transport calculations is an effective approach to screen for promising solid electrolytes. However, automating the complicated preprocessing involved in currently widely used ion-transport characterization algorithms, such as the first-principles nudged elastic band (FP-NEB) method, remains challenging. Here, we report on high-throughput screening platform for solid electrolytes (SPSE) that integrates a materials database with hierarchical ion-transport calculations realized by implementing empirical algorithms to assist in FP-NEB calculation. We first preliminarily screen candidates and determine the approximate ion-transport paths using empirical geometric analysis and bond valence method. A chain of images is then automatically generated along these paths for accurate FP-NEB calculation. In addition, an open web interface is actualized to enable access to the SPSE database, thereby facilitating machine learning. This interactive platform provides a workflow toward high-throughput screening for future discovery and design of promising solid electrolytes and the SPSE database is based on the FAIR principles for the benefit of the broad research community.

Authors

  • Bing, He ;
  • Chi, Shuting ;
  • Anjiang, Ye ;
  • Penghui, Mi ;
  • Liwen, Zhang ;
  • Bowei, Pu ;
  • Zheyi, Zou ;
  • Li, Pan ;
  • Yunbing, Ran ;
  • Qian, Zhao ;
  • Da, Wang ;
  • Wenqing, Zhang ;
  • Jingtai, Zhao ;
  • Adams, Stefan ;
  • Avdeev, Maxim ;
  • Siqi, Shi
0 Citations0 Mentions13% FAIR0.3 Dataset Index
10.6084/m9.figshare.11406540January 2020

High-Throughput Screening Platform for Solid Electrolytes Combining Hierarchical Ion-Transport Prediction Algorithms

The combination of a materials database with high-throughput ion-transport calculations is an effective approach to screen for promising solid electrolytes. However, automating the complicated preprocessing involved in currently widely used ion-transport characterization algorithms, such as the first-principles nudged elastic band (FP-NEB) method, remains challenging. Here, we report on high-throughput screening platform for solid electrolytes (SPSE) that integrates a materials database with hierarchical ion-transport calculations realized by implementing empirical algorithms to assist in FP-NEB calculation. We first preliminarily screen candidates and determine the approximate ion-transport paths using empirical geometric analysis and bond valence method. A chain of images is then automatically generated along these paths for accurate FP-NEB calculation. In addition, an open web interface is actualized to enable access to the SPSE database, thereby facilitating machine learning. This interactive platform provides a workflow toward high-throughput screening for future discovery and design of promising solid electrolytes and the SPSE database is based on the FAIR principles for the benefit of the broad research community.

Authors

  • Bing, He ;
  • Chi, Shuting ;
  • Anjiang, Ye ;
  • Penghui, Mi ;
  • Liwen, Zhang ;
  • Bowei, Pu ;
  • Zheyi, Zou ;
  • Li, Pan ;
  • Yunbing, Ran ;
  • Qian, Zhao ;
  • Da, Wang ;
  • Wenqing, Zhang ;
  • Jingtai, Zhao ;
  • Avdeev, Maxim ;
  • Siqi, Shi
0 Citations0 Mentions13% FAIR0.3 Dataset Index
10.6084/m9.figshare.9770876January 2019