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Application of fuzzy set and neural network techniques in determining food process control set points

机译:模糊集和神经网络技术在确定食品过程控制设定点中的应用

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Fuzzy set and neural network techniques were used to determine food process control set points for producing products of certain desirable sensory quality. Fuzzy sets were employed to interpret sensory responses while neural networks were applied to model the relationships between process and sensory variables. Rice cake production was used as a model process. Product sensory attributes were evaluated by a trained panel. Multi-judge responses were formulated as fuzzy membership vectors, which in turn were formed into fuzzy membership matrices of multiple sensory attributes. Neural networks were used to determine the sensory attribute controllability and the process control set points for achieving a given target of sensory quality. New products were made by using the process set points determined, and the product sensory attributes matched the desired sensory target values by less than 9% error. The results demonstrate the great potential of the fuzzy set concept and neural network techniques in sensory quality-based food process control with sensory evaluations quantified in a naturally fuzzy manner.
机译:使用模糊集和神经网络技术来确定食品过程控制的设定点,以生产具有某些理想感官品质的产品。模糊集用于解释感官反应,而神经网络则用于模拟过程和感官变量之间的关系。年糕的生产被用作模型过程。产品的感官属性由训练有素的专家小组评估。将多判断响应公式化为模糊隶属度向量,然后将其形成为具有多个感官属性的模糊隶属度矩阵。神经网络用于确定感官属性可控制性和过程控制设定点,以实现给定的感官质量目标。通过使用确定的过程设定点制作新产品,并且产品的感官属性与所需的感官目标值相匹配的误差小于9%。结果证明了模糊集概念和神经网络技术在基于感官质量的食品过程控制中的巨大潜力,并且以自然模糊的方式量化了感官评估。

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