基于多目标粒子群优化的面包本构建模方法

IF 2.8 3区 农林科学 Q2 FOOD SCIENCE & TECHNOLOGY
Yusheng Zhang, Hui Yu, Haiyu Zhang, Xiuying Tang
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引用次数: 1

摘要

针对当前面包霉变检测技术复杂繁琐的问题,提出了一种基于多目标粒子群优化(MOPSO)的食品本构建模方法,该方法能够快速高效地识别面包的蠕变试验参数,并利用分析得到的粘弹性参数预测面包霉变的粘弹性参数,实现了面包霉变检测的便捷高效。首先,采用气流激光检测技术对面包进行快速、高效、无损的流变试验,获取面包蠕变试验数据;利用基于Pareto集的MOPSO对广义开尔文模型进行识别,并利用粘弹性参数建立的反演结果对识别精度进行评价,实现了对以面包为代表的淀粉类产品蠕变试验数据的有效识别。最后,利用极限学习机回归(ELM),建立了分析结果与面包霉变含水率之间的预测模型,验证了分析结果对面包霉变的预测效果。实验结果表明,与有限元分析(FEA)和非线性回归(NLR)辨识蠕变参数相比,MOPSO克服了容易陷入局部最优解的缺点,易于实现,具有较强的全局搜索能力,适用于复杂食品高维粘弹性模型的分析。在多元粘弹性参数与面包含水率建立的预测模型中,由12元粘弹性参数建立的预测集的相关系数(R)为0.847,均方根误差(RMSE)为0.021。这表明,气流激光检测技术与MOPSO相结合,可以有效地识别面包的粘弹性参数,建立了一种适用于工业生产中面包变质监测的方法。研究结果可为复杂食品粘弹性参数的鉴定和快速有效地检测面包变质提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Bread staling prediction with a multiobjective particle swarm optimization-based bread constitutive modeling method

Bread staling prediction with a multiobjective particle swarm optimization-based bread constitutive modeling method

Aiming at the complex and cumbersome problems of current bread staling detection technology, a food constitutive modeling method based on the multiobjective particle swarm optimization (MOPSO) was proposed, which can quickly and efficiently identify the creep test parameters for bread, and predict the viscoelastic parameters of bread staling using the analyzed viscoelastic parameters, resulting in convenient and efficient detection of bread staling. Firstly, airflow-laser detection technology was used to carry out rapid, efficient, and non-destructive bread rheological tests to obtain bread creep test data. The MOPSO based on the Pareto set was then used to identify the generalized Kelvin model, and the discrimination accuracy was evaluated by using the inversion results established by the viscoelastic parameters, which resulted in efficient discrimination of creep test data of starch-based products represented by bread. Finally, using extreme learning machine regression (ELM), a prediction model between the analysis results and the moisture content of bread staling was established, and the prediction effect of the analysis results on bread staling was verified. The experimental results show that, when compared to finite element analysis (FEA) and non-linear regression (NLR) to identify creep parameters, the MOPSO overcomes the shortcomings of easy falling into the local optimal solution, is easy to implement, has strong global search ability, and is suitable for the analysis of high-dimensional viscoelastic models of complex foods. The correlation coefficient (R) of the prediction set established by the 12-membered viscoelastic parameters in the prediction model established by multi-element viscoelastic parameters and bread moisture content was 0.847, and the root mean square error (RMSE) was 0.021. This demonstrated that, when combined with MOPSO, airflow-laser detection technology could effectively identify the viscoelastic parameters of bread and establish a method suitable for monitoring bread staling in industrial production. The results of this study provide a reference for the identification of viscoelastic parameters of complex foods and to detect bread staling quickly and efficiently.

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来源期刊
Journal of texture studies
Journal of texture studies 工程技术-食品科技
CiteScore
6.30
自引率
9.40%
发文量
78
审稿时长
>24 weeks
期刊介绍: The Journal of Texture Studies is a fully peer-reviewed international journal specialized in the physics, physiology, and psychology of food oral processing, with an emphasis on the food texture and structure, sensory perception and mouth-feel, food oral behaviour, food liking and preference. The journal was first published in 1969 and has been the primary source for disseminating advances in knowledge on all of the sciences that relate to food texture. In recent years, Journal of Texture Studies has expanded its coverage to a much broader range of texture research and continues to publish high quality original and innovative experimental-based (including numerical analysis and simulation) research concerned with all aspects of eating and food preference. Journal of Texture Studies welcomes research articles, research notes, reviews, discussion papers, and communications from contributors of all relevant disciplines. Some key coverage areas/topics include (but not limited to): • Physical, mechanical, and micro-structural principles of food texture • Oral physiology • Psychology and brain responses of eating and food sensory • Food texture design and modification for specific consumers • In vitro and in vivo studies of eating and swallowing • Novel technologies and methodologies for the assessment of sensory properties • Simulation and numerical analysis of eating and swallowing
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