Temperature control of Ginjo sake mashing process by automatic fuzzy modeling using fuzzy neural networks
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Taizo Hanai | Hiroyuki Honda | Takeshi Kobayashi | Akemi Katayama | Hisao Tohyama | T. Hanai | H. Honda | Takeshi Kobayashi | H. Tohyama | Akemi Katayama
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