Erfaniannejad Hosseini Nabadou Fatemeh, Moghimi Masoumeh, Tahmasebi Aminallah, Bakhshabadi Hamid
Department of Food Science and Technology, Gonbad Kavoos Branch Islamic Azad University Gonbad Kavoos Iran.
Department of Chemistry, Gonbad Kavoos Branch Islamic Azad University Gonbad Kavoos Iran.
Food Sci Nutr. 2025 Apr 30;13(5):e70214. doi: 10.1002/fsn3.70214. eCollection 2025 May.
The quality of malt produced from cereals is significantly influenced by various factors, including steeping and germination periods. Monitoring these factors and their effects on malt grain characteristics is often time-consuming and costly. In this context, this study aimed to predict trends in changes to certain characteristics of millet-derived malt, influenced by varying steeping durations (24-48 h) and germination times (5-9 days). Changes in these characteristics were predicted using response surface methodology (RSM), which incorporated a central composite design and an artificial neural network (ANN). The findings indicated that increasing the steeping and germination durations led to a decrease in malting efficiency, thousand grain weight, and true density of the samples. Conversely, the cold-water extract efficiency, the Kolbach index, and the extract color increased. The optimization process revealed that to achieve the highest-quality malt, the steeping duration should be 42.54 h, followed by a germination period of 5 days. Under these conditions, the malting efficiency reached 75.44%, with a thousand grain weight of 4.85 g, a true density of 977.43 kg/m, a cold-water extract efficiency of 9.19%, a Kolbach index of 32.45%, and an extract color value of 13.87. An analysis of different neural networks revealed that the feed-forward backpropagation network with a 2-6-6 topology was the best-performing model. This network achieved a correlation coefficient greater than 0.999 and a mean squared error of less than 0.00001. It employed the hyperbolic tangent sigmoid transfer function, the resilient backpropagation learning algorithm, and 1000 learning cycles. Furthermore, a comparison of the correlation coefficients derived from the RSM and the ANN demonstrated that the ANN method is superior for predicting changing trends in millet grains during the malting process.
谷物制成的麦芽质量受多种因素显著影响,包括浸泡和发芽时间。监测这些因素及其对麦芽籽粒特性的影响通常既耗时又昂贵。在此背景下,本研究旨在预测不同浸泡时长(24 - 48小时)和发芽时间(5 - 9天)对小米麦芽某些特性变化趋势的影响。利用响应面法(RSM)预测这些特性的变化,该方法结合了中心复合设计和人工神经网络(ANN)。研究结果表明,浸泡和发芽时间延长会导致样品的制麦效率、千粒重和真密度降低。相反,冷水浸出效率、库尔巴哈值和浸出物颜色增加。优化过程表明,要获得最高质量的麦芽,浸泡时间应为42.54小时,随后发芽期为5天。在这些条件下,制麦效率达到75.44%,千粒重为4.85克,真密度为977.43千克/立方米,冷水浸出效率为9.19%,库尔巴哈值为32.45%,浸出物颜色值为13.87。对不同神经网络的分析表明,具有2 - 6 - 6拓扑结构的前馈反向传播网络是性能最佳的模型。该网络的相关系数大于0.999,均方误差小于0.00001。它采用双曲正切S型传递函数、弹性反向传播学习算法和1000个学习周期。此外,对RSM和ANN得出的相关系数进行比较表明,ANN方法在预测制麦过程中小米籽粒的变化趋势方面更具优势。