Tahribatsız ve hızlı yöntemlerle gıdalarda kalite kontrolü

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Proje Grubu: EEEAG Sayfa Sayısı: 190 Proje No: 106E057 Proje Bitiş Tarihi: 31.12.2008 Metin Dili: Türkçe İndeks Tarihi: 29-07-2022

Tahribatsız ve hızlı yöntemlerle gıdalarda kalite kontrolü

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Konular: Bilgisayar Bilimleri, Yazılım Mühendisliği Gıda Bilimi ve Teknolojisi
Erişim Türü: Erişime Açık
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APA YARDIMCI Y, BAŞARAN P (2008). Tahribatsız ve hızlı yöntemlerle gıdalarda kalite kontrolü. , 1 - 190.
Chicago YARDIMCI Yasemin,BAŞARAN Pervin Tahribatsız ve hızlı yöntemlerle gıdalarda kalite kontrolü. (2008): 1 - 190.
MLA YARDIMCI Yasemin,BAŞARAN Pervin Tahribatsız ve hızlı yöntemlerle gıdalarda kalite kontrolü. , 2008, ss.1 - 190.
AMA YARDIMCI Y,BAŞARAN P Tahribatsız ve hızlı yöntemlerle gıdalarda kalite kontrolü. . 2008; 1 - 190.
Vancouver YARDIMCI Y,BAŞARAN P Tahribatsız ve hızlı yöntemlerle gıdalarda kalite kontrolü. . 2008; 1 - 190.
IEEE YARDIMCI Y,BAŞARAN P "Tahribatsız ve hızlı yöntemlerle gıdalarda kalite kontrolü." , ss.1 - 190, 2008.
ISNAD YARDIMCI, Yasemin - BAŞARAN, Pervin. "Tahribatsız ve hızlı yöntemlerle gıdalarda kalite kontrolü". (2008), 1-190.
APA YARDIMCI Y, BAŞARAN P (2008). Tahribatsız ve hızlı yöntemlerle gıdalarda kalite kontrolü. , 1 - 190.
Chicago YARDIMCI Yasemin,BAŞARAN Pervin Tahribatsız ve hızlı yöntemlerle gıdalarda kalite kontrolü. (2008): 1 - 190.
MLA YARDIMCI Yasemin,BAŞARAN Pervin Tahribatsız ve hızlı yöntemlerle gıdalarda kalite kontrolü. , 2008, ss.1 - 190.
AMA YARDIMCI Y,BAŞARAN P Tahribatsız ve hızlı yöntemlerle gıdalarda kalite kontrolü. . 2008; 1 - 190.
Vancouver YARDIMCI Y,BAŞARAN P Tahribatsız ve hızlı yöntemlerle gıdalarda kalite kontrolü. . 2008; 1 - 190.
IEEE YARDIMCI Y,BAŞARAN P "Tahribatsız ve hızlı yöntemlerle gıdalarda kalite kontrolü." , ss.1 - 190, 2008.
ISNAD YARDIMCI, Yasemin - BAŞARAN, Pervin. "Tahribatsız ve hızlı yöntemlerle gıdalarda kalite kontrolü". (2008), 1-190.