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Optimization of a Heterogeneous Ternary Li3PO4-Li3BO3-Li2SO4 Mixture for Li-Ion Conductivity by Machine Learning 원문보기

The journal of physical chemistry. C, Nanomaterials and Interfaces, v.124 no.24, 2020년, pp.12865 - 12870  

Homma, Kenji (Fujitsu Laboratories Ltd. , 10-1 Morinosato-Wakamiya , Atsugi 243-0197 , Japan) ,  Liu, Yu (Center for Advanced Intelligence Project , RIKEN , 1-4-1 Nihonbashi , Chuo-ku, Tokyo 103-0027 , Japan) ,  Sumita, Masato (Center for Advanced Intelligence Project , RIKEN , 1-4-1 Nihonbashi , Chuo-ku, Tokyo 103-0027 , Japan) ,  Tamura, Ryo (Fujitsu Laboratories Ltd. , 10-1 Morinosato-Wakamiya , Atsugi 243-0197 , Japan) ,  Fushimi, Naoki (Fujitsu Laboratories Ltd. , 10-1 Morinosato-Wakamiya , Atsugi 243-0197 , Japan) ,  Iwata, Junichi (Center for Advanced Intelligence Project , RIKEN , 1-4-1 Nihonbashi , Chuo-ku, Tokyo 103-0027 , Japan) ,  Tsuda, Koji (Fujitsu Laboratories Ltd. , 10-1 Morinosato-Wakamiya , Atsugi 243-0197 , Japan) ,  Kaneta, Chioko

Abstract AI-Helper 아이콘AI-Helper

Mixing heterogeneous Li-ion conductive materials is one potential way to enhance Li-ion conductivity more than that of the parent materials. However, the huge number of possible compositions of parent materials impedes the development of an optimal mixture by using conventional methods. In this stud...

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