Intelligent fault diagnosis for triboelectric nanogenerators via a novel deep learning framework
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Hao Wu | Zhongjie Li | Dan Zhang | Chuanfu Xin | Yichen Liu | Xing'ang Xu | Runze Rao | Y. Wu | Senzhe Han
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