Unlocking new possibilities in ionic thermoelectric materials: a machine learning perspective
Yidan Wu(Tsinghua University), Xing Zhang(Tsinghua University), Chunyu Zhao(Capital Medical University), Meng An(Shaanxi University of Science and Technology), Bing Yao(Xuzhou University of Technology), Dongxing Song(Tsinghua University), Weigang Ma(Tsinghua University), Cheng Chi(North China Electric Power University)
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