利用 ANN 优化超滤法生产大豆蛋白的工艺参数

IF 2 3区 农林科学 Q3 FOOD SCIENCE & TECHNOLOGY
Hima John, Saroj Kumar Giri, A. Subeesh, Punit Chandra, R. Pandiselvam
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引用次数: 0

摘要

大豆蛋白因其蛋白质含量高、供应广泛而日益受到素食主义者和素食者的青睐,这促使人们对其各种提取方法(主要是超滤法)进行科学研究。本研究采用人工神经网络(ANN)和盒式贝肯设计(BBD)方法来预测超滤制备大豆蛋白的工艺参数。利用 BBD,通过可取函数法确定了超滤的最佳工艺参数。优化后的渗透通量为 11.13 升/小时(LPH),回流液中蛋白质含量为 85.52%。为实现最大蛋白质截留量而确定的超滤理想工艺参数包括:10 kDa 膜组件、117 kPa(17 PSI)跨膜压力、3.5 的体积浓度比、重滤设定为 1、流速为泵容量的 65%,绝对误差值为 2.81。采用这些改进后的工艺参数,蛋白质回流物的预测值为 80.49%。该模型对蛋白质保留的预测准确率达到了令人印象深刻的 99.61%。ANN 模型有效地预测了最佳超滤条件,使蛋白质保留率达到最高,蛋白质含量准确率分别为 96.41% 和 99.61%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of Process Parameters for the Production of Soy Protein by Ultrafiltration Using ANN

The growing popularity of soy proteins among vegans and vegetarians, owing to their high protein content and widespread availability, has led to scientific studies on its various extraction methods mainly on ultrafiltration. This research employed artificial neural network (ANN) and Box-Behnken design (BBD) methodologies to predict the process parameters of ultrafiltration for the preparation of soy protein. Using BBD, the optimum process parameters of ultrafiltration were identified via the desirability function approach. The optimized permeate flux was 11.13 litres per hour (LPH) and 85.52% protein content in retentate. The identified ideal process parameters for ultrafiltration to achieve maximal protein retention encompassed a 10 kDa membrane module, a transmembrane pressure of 117 kPa (17 PSI), a volume concentration ratio of 3.5, diafiltration set at 1, and a flow rate of 65% of the pump capacity, exhibiting an absolute percent error value of 2.81. Employing these refined process parameters, the predicted value for protein retentate stood at 80.49%. The predictive accuracy of the model achieved an impressive 99.61% for protein retention. The ANN model effectively predicted the optimal ultrafiltration conditions, resulting in maximal protein retention and a protein content accuracy of 96.41% and 99.61%, respectively.

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来源期刊
CiteScore
5.30
自引率
12.00%
发文量
1000
审稿时长
2.3 months
期刊介绍: The journal presents readers with the latest research, knowledge, emerging technologies, and advances in food processing and preservation. Encompassing chemical, physical, quality, and engineering properties of food materials, the Journal of Food Processing and Preservation provides a balance between fundamental chemistry and engineering principles and applicable food processing and preservation technologies. This is the only journal dedicated to publishing both fundamental and applied research relating to food processing and preservation, benefiting the research, commercial, and industrial communities. It publishes research articles directed at the safe preservation and successful consumer acceptance of unique, innovative, non-traditional international or domestic foods. In addition, the journal features important discussions of current economic and regulatory policies and their effects on the safe and quality processing and preservation of a wide array of foods.
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