Journal of Dairy Science
Volume 90, Issue 7 , Pages 3118-3125 , July 2007

Estimation of Storage Time of Yogurt with Artificial Neural Network Modeling

Received 13 September 2006 ,Accepted 23 February 2007.

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PII: S0022-0302(07)71759-9

doi: 10.3168/jds.2006-591

Journal of Dairy Science
Volume 90, Issue 7 , Pages 3118-3125 , July 2007