Predicting the Dielectric Constants of (Zr0.7Sn0.3)TiO4 Ceramics Using Artificial Neural Network
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Wei You | Jun Rao | Songlin Wang | Song Fan | Chuanli Yan | Xiangzhou Zhu | Songlin Wang | Xiangzhou Zhu | C. Yan | Wei You | Song Fan | J. Rao
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