Graphic Expression in Engineering, University of Salamanca, Escuela Politécnica Superior de Zamora, Avenida Requejo 33, 49022 Zamora, Spain.
Food Technology, University of Salamanca, Escuela Politécnica Superior de Zamora, Avenida Requejo 33, 49022 Zamora, Spain.
Sensors (Basel). 2020 Oct 1;20(19):5624. doi: 10.3390/s20195624.
Dry-cured ham is a high-quality product owing to its organoleptic characteristics. Sensory analysis is an essential part of assessing its quality. However, sensory assessment is a laborious process which implies the availability of a trained tasting panel. The aim of this study was the prediction of dry-ham sensory characteristics by means of an instrumental technique. To do so, an artificial neural network (ANN) model for the prediction of sensory parameters of dry-cured hams based on NIR spectral information was developed and optimized. The NIR spectra were obtained with a fiber-optic probe applied directly to the ham sample. In order to achieve this objective, the neural network was designed using 28 sensory parameters analyzed by a trained panel for sensory profile analysis as output data. A total of 91 samples of dry-cured ham matured for 24 months were analyzed. The hams corresponded to two different breeds (Iberian and Iberian x Duroc) and two different feeding systems (feeding outdoors with acorns or feeding with concentrates). The training algorithm and ANN architecture (the number of neurons in the hidden layer) used for the training were optimized. The parameters of ANN architecture analyzed have been shown to have an effect on the prediction capacity of the network. The Levenberg-Marquardt training algorithm has been shown to be the most suitable for the application of an ANN to sensory parameters.
干腌火腿因其感官特性而成为一种优质产品。感官分析是评估其质量的重要组成部分。然而,感官评估是一个繁琐的过程,需要有一个经过训练的品尝小组。本研究的目的是通过仪器技术预测干腌火腿的感官特性。为此,开发并优化了基于近红外光谱信息预测干腌火腿感官参数的人工神经网络(ANN)模型。近红外光谱是通过光纤探头直接应用于火腿样品获得的。为了实现这一目标,神经网络的设计使用了 28 个由经过训练的小组分析的感官参数作为输出数据,用于感官特征分析。分析了 91 个成熟 24 个月的干腌火腿样本。这些火腿对应于两个不同的品种(伊比利亚和伊比利亚 x 杜洛克)和两种不同的饲养系统(户外用橡果饲养或用浓缩饲料饲养)。优化了用于训练的训练算法和 ANN 架构(隐藏层中的神经元数量)。分析的 ANN 架构参数已被证明对网络的预测能力有影响。莱文贝格-马夸尔特训练算法已被证明最适合将 ANN 应用于感官参数。