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正交试验优化猪肉脯感官品质

Meat Research(2012)

Institute of Agricultural Products Processing and Nuclear-agricultural Technology

Cited 24|Views33
Abstract
以新鲜猪肉为原料,结合感官评定方法,通过单因素试验和正交试验分析红曲色素、酱油、白糖添加量对猪肉脯产品色泽特性的影响,并研究腌制时间、烤制时间、肉片厚度、食盐与复合磷酸盐添加量对其质构特性的影响,从色泽和质地两方面对猪肉脯产品的感官品质进行优化.结果表明猪肉脯最优工艺参数为:猪后腿肉1kg,食盐16g,白砂糖90g,老抽35g,复合磷酸盐3g,红曲色素0.5g,腌制时间45min,烤制时间10min.
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