Artificial Neural Network and Regression Models to Evaluate Rheological Properties of Selected Brazilian Honeys

IF 0.7 4区 农林科学 Q4 ENTOMOLOGY
V. M. D. Silva, W. S. Lacerda, J. V. de Resende
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引用次数: 3

Abstract

Abstract The relationships between physico-chemical and rheological properties are considered complex nonlinear systems. Thus, the artificial neural network (ANN) and regression models were used for the rheological characterization of Brazilian honeys, based on low-cost measurements of water content and temperature. The steady shear viscosity (η) performed well when measured in the test phase in a 2-12-1 neuron multilayer perceptron (MLP) ANN (model 1) with a root mean square error (RMSE) and correlation coefficient (r) equal to 0.0430 and 0.9681, respectively. The parameter loss modulus (G″), storage modulus (G′) and complex viscosity (η*) were predicted in the temperature sweep test by small amplitude oscillatory shear (SAOS) measurements during heating and cooling, and the MLP ANNs with architectures of 2-9-3 (model 2) and 2-3-3 (model 3) showed RMSE values equal to 0.0261 and 0.0387 in the test phase, respectively. For all the determined parameters, non-linear exponential models showed similar results to models 1, 2 and 3. An ANN with 3-9-3 architecture (model 4) showed RMSE and r for G′ equal to 0.0158 and 0.7301, for G″ equal to 0.0176 and 0.9581, and for η* equal to 0.0407 and 0.9647, respectively, in the test phase for date of the frequency sweep test obtained by SAOS. These results were far superior to those obtained by second-order multiple linear models. The acquisition of all models is an important application for the processing of honey and honey-based products, since these properties are essential in engineering calculations and quality control of products.
人工神经网络和回归模型评价巴西蜂蜜流变特性
摘要物理化学性质和流变性质之间的关系被认为是复杂的非线性系统。因此,基于低成本的含水量和温度测量,将人工神经网络(ANN)和回归模型用于巴西蜂蜜的流变学表征。在2-12-1神经元多层感知器(MLP)ANN(模型1)的测试阶段测量时,稳态剪切粘度(η)表现良好,均方根误差(RMSE)和相关系数(r)分别等于0.0430和0.9681。通过加热和冷却过程中的小振幅振荡剪切(SAOS)测量,在温度扫描试验中预测了参数损耗模量(G〃)、储能模量(G′)和复粘度(η*),结构为2-9-3(模型2)和2-3-3(模型3)的MLP Ann在试验阶段的RMSE值分别等于0.0261和0.0387。对于所有确定的参数,非线性指数模型显示出与模型1、2和3相似的结果。在SAOS获得的频率扫描测试日期的测试阶段,具有3-9-3架构的ANN(模型4)显示,G′的RMSE和r分别等于0.0158和0.7301,G〃的RMSE为0.0176和0.9581,η*为0.0407和0.9647。这些结果远远优于二阶多元线性模型的结果。所有模型的获取是蜂蜜和蜂蜜产品加工的重要应用,因为这些特性在产品的工程计算和质量控制中至关重要。
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来源期刊
CiteScore
1.70
自引率
0.00%
发文量
9
审稿时长
>12 weeks
期刊介绍: The Journal of Apicultural Science is a scientific, English-language journal that publishes both original research articles and review papers covering all aspects of the life of bees (superfamily Apoidea) and broadly defined apiculture. The main subject areas include: -bee biology- bee genetics- bee breeding- pathology and toxicology- pollination and bee botany- bee products- management, technologies, and economy- solitary bees and bumblebees
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