Jaddu Samuel, Abdullah S, Dwivedi Madhuresh, Pradhan Rama Chandra
Department of Food Process Engineering, National Institute of Technology Rourkela, Odisha 769008, India.
Food Chem (Oxf). 2022 Sep 5;5:100132. doi: 10.1016/j.fochms.2022.100132. eCollection 2022 Dec 30.
The effect on functional properties of kodo millet flour was studied using multipin cold plasma electric reactor. The analysis was carried out at various levels of voltage (10-20 kV) and treatment time (10-30 min) for four different parameters such as water absorption capacity (WAC), oil absorption capacity (OAC), solubility index (SI) and swelling capacity (SC). Response surface methodology (RSM) and artificial neural network - genetic algorithm (ANN - GA) were adopted for modelling and optimization of process variables. The optimized values obtained from RSM were 20 kV and 17.9 min. On the contrary, 17.5 kV and 23.3 min were the optimized values obtained from ANN - GA. The RSM optimal values of WAC, OAC, SI and SC were 1.51 g/g, 1.40 g/g, 0.06 g/g and 3.68 g/g whereas optimized ANN - GA values were 1.51 g/g, 1.50 g/g, 0.06 g/g and 4.39 g/g, respectively. Infrared spectra, peak temperature, diffractograms and micrographs of both optimized values were analyzed and showed significant differences. ANN showed a higher value of R and lesser values of other statistical parameters compared to RSM. Therefore, ANN - GA was treated as the best model for optimization and modelling of cold plasma treated kodo millet flour. Hence, the ANN - GA optimized values of cold plasma treated flour could be utilized for practical applications in food processing industries.
使用多针冷等离子体电反应器研究了稷米粉功能特性的影响。针对四个不同参数,即吸水能力(WAC)、吸油能力(OAC)、溶解度指数(SI)和膨胀能力(SC),在不同电压(10 - 20 kV)和处理时间(10 - 30分钟)水平下进行了分析。采用响应面法(RSM)和人工神经网络 - 遗传算法(ANN - GA)对工艺变量进行建模和优化。从RSM获得的优化值为20 kV和17.9分钟。相反,从ANN - GA获得的优化值为17.5 kV和23.3分钟。WAC、OAC、SI和SC的RSM最佳值分别为1.51 g/g、1.40 g/g、0.06 g/g和3.68 g/g,而ANN - GA优化值分别为1.51 g/g、1.50 g/g、0.06 g/g和4.39 g/g。对两个优化值的红外光谱、峰值温度、衍射图和显微照片进行了分析,结果显示存在显著差异。与RSM相比,ANN的R值更高,其他统计参数值更低。因此,ANN - GA被视为冷等离子体处理稷米粉优化和建模的最佳模型。因此,冷等离子体处理面粉的ANN - GA优化值可用于食品加工业的实际应用。