Model-based research toward design of innovative materials: molecular weight prediction of bridged polysilsesquioxanes
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Kenji Sato | Takayoshi Ishimoto | J. Ohshita | Satoru Tsukada | Shin Wakitani | Daiki Saito | Yuki Nakanishi | Sakino Takase | T. Hamada | H. Kai | S. Wakitani
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