High-throughput screening platform for solid electrolytes combining hierarchical ion-transport prediction algorithms
Bing He(Shanghai University of Engineering Science), Siqi Shi(Shanghai University), Yunbing Ran(Shanghai University), Anjiang Ye(Shanghai University of Engineering Science), Bowei Pu(Shanghai University), Stefan Adams(National University of Singapore), Shuting Chi(Shanghai University of Engineering Science), Penghui Mi(Shanghai University of Engineering Science), Zheyi Zou(Shanghai University), Wenqing Zhang(Southern University of Science and Technology), Liwen Zhang(Shanghai University), Jing‐Tai Zhao(Guilin University of Electronic Technology), Da Wang(Shanghai University), Qian Zhao(Shanghai University), Maxim Avdeev(The University of Sydney)
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