Ahmed Abdelrahman R, Aleid Salah M, Mohammed Maged
Department of Food and Nutrition Sciences, College of Agricultural and Food Sciences, King Faisal University, P.O. Box 400, Al-Ahsa 31982, Saudi Arabia.
Home Economics Department, Faculty of Specific Education, Ain Shams University, Cairo 11566, Egypt.
Foods. 2023 Oct 17;12(20):3811. doi: 10.3390/foods12203811.
Dates are highly perishable fruits, and maintaining their quality during storage is crucial. The current study aims to investigate the impact of storage conditions on the quality of dates (Khalas and Sukary cultivars) at the Tamer stage and predict their quality attributes during storage using artificial neural networks (ANN). The studied storage conditions were the modified atmosphere packing (MAP) gases (CO, O, and N), packaging materials, storage temperature, and storage time, and the evaluated quality attributes were moisture content, firmness, color parameters (L*, a*, b*, and ∆E), pH, water activity, total soluble solids, and microbial contamination. The findings demonstrated that the storage conditions significantly impacted ( < 0.05) the quality of the two stored date cultivars. The use of MAP with 20% CO + 80% N had a high potential to decrease the rate of color transformation and microbial growth of dates stored at 4 °C for both stored date cultivars. The developed ANN models efficiently predicted the quality changes of stored dates closely aligned with observed values under the different storage conditions, as evidenced by low Root Mean Square Error (RMSE) and Mean Absolute Percentage Error (MAPE) values. In addition, the reliability of the developed ANN models was further affirmed by the linear regression between predicted and measured values, which closely follow the 1:1 line, with R values ranging from 0.766 to 0.980, the ANN models demonstrate accurate estimating of fruit quality attributes. The study's findings contribute to food quality and supply chain management through the identification of optimal storage conditions and predicting the fruit quality during storage under different atmosphere conditions, thereby minimizing food waste and enhancing food safety.
枣是极易腐烂的水果,在储存期间保持其品质至关重要。当前的研究旨在调查储存条件对枣果(哈拉尔和苏卡里品种)在塔梅尔阶段的品质影响,并使用人工神经网络(ANN)预测其在储存期间的品质属性。所研究的储存条件包括气调包装(MAP)气体(CO、O和N)、包装材料、储存温度和储存时间,评估的品质属性包括水分含量、硬度、颜色参数(L*、a*、b*和∆E)、pH值、水分活度、总可溶性固形物和微生物污染。研究结果表明,储存条件对两种储存枣品种的品质有显著影响(<0.05)。对于两种储存枣品种,使用含有20%CO + 80%N的气调包装在4°C储存时,有很大潜力降低枣的颜色变化率和微生物生长率。所开发的人工神经网络模型有效地预测了储存枣在不同储存条件下的品质变化,与观察值紧密相符,低均方根误差(RMSE)和平均绝对百分比误差(MAPE)值证明了这一点。此外,预测值与测量值之间的线性回归进一步证实了所开发人工神经网络模型的可靠性,其紧密遵循1:1线,R值范围为0.766至0.980,人工神经网络模型显示出对水果品质属性的准确估计。该研究结果通过确定最佳储存条件并预测不同气氛条件下储存期间的水果品质,为食品质量和供应链管理做出了贡献,从而最大限度地减少食物浪费并提高食品安全。