Elamshity Mahmoud G, Alhamdan Abdullah M
Chair of Dates Industry and Technology, Department of Agricultural Engineering, College of Food and Agricultural Sciences, King Saud University, Riyadh 11451, Saudi Arabia.
Foods. 2025 Aug 29;14(17):3060. doi: 10.3390/foods14173060.
This study proposes a novel non-destructive approach to assessing and predicting the quality of stored date fruits using a composite quality index (Qi) modeled via visible-near-infrared (VIS-NIR) spectroscopy and artificial neural networks (ANNs). Two leading cultivars, Sukkary and Khlass, were stored for 12 months using three temperature regimes (25 °C, 5 °C, and -18 °C) and five types of packaging. The samples were grouped into six moisture content categories (4.36-36.70% d.b.), and key physicochemical traits, namely moisture, pH, hardness, total soluble solids (TSSs), density, color, and microbial load, were used to construct a normalized, dimensionless Qi. Spectral data (410-990 nm) were preprocessed using second-derivative transformation and modeled using partial least squares regression (PLSR) and the ANNs. The ANNs outperformed PLSR, achieving the correlation coefficient (R) values of up to 0.944 (Sukkary) and 0.927 (Khlass), with corresponding root mean square error of prediction (RMSEP) values of 0.042 and 0.049, and the relative error of prediction (REP < 5%). The best quality retention was observed in the dates stored at -18 °C in pressed semi-rigid plastic containers (PSSPCs), with minimal microbial growth and superior sensory scores. The second-order Qi model showed a significantly better fit ( < 0.05, AIC-reduced) over that of linear alternatives, capturing the nonlinear degradation patterns during storage. The proposed system enables real-time, non-invasive quality monitoring and could support automated decision-making in postharvest management, packaging selection, and shelf-life prediction.
本研究提出了一种新颖的无损方法,用于使用通过可见-近红外(VIS-NIR)光谱和人工神经网络(ANN)建模的综合质量指数(Qi)来评估和预测储存椰枣的质量。选用两个主要品种Sukkary和Khlass,在三种温度条件(25°C、5°C和-18°C)和五种包装类型下储存12个月。将样品分为六个水分含量类别(4.36-36.70%干基),并使用关键理化特性,即水分、pH值、硬度、总可溶性固形物(TSS)、密度、颜色和微生物负荷,构建一个归一化的无量纲Qi。光谱数据(410-990nm)使用二阶导数变换进行预处理,并使用偏最小二乘回归(PLSR)和人工神经网络进行建模。人工神经网络的表现优于PLSR,相关系数(R)值高达0.944(Sukkary)和0.927(Khlass),相应的预测均方根误差(RMSEP)值分别为0.042和0.049,预测相对误差(REP<5%)。在-18°C下储存在压制半刚性塑料容器(PSSPC)中的椰枣质量保持最佳,微生物生长最少,感官评分优异。二阶Qi模型比线性替代模型显示出显著更好的拟合度(<0.05,AIC降低),能够捕捉储存期间的非线性降解模式。所提出的系统能够实现实时、非侵入性的质量监测,并可为收获后管理、包装选择和保质期预测中的自动化决策提供支持。