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中国精品科技期刊2020
张泽辉,刘巧瑜,肖斯立,等. 不同热加工方式对金枪鱼品质的影响及水分预测模型建立J. 食品工业科技,2026,47(15):1−10. doi: 10.13386/j.issn1002-0306.2025090324.
引用本文: 张泽辉,刘巧瑜,肖斯立,等. 不同热加工方式对金枪鱼品质的影响及水分预测模型建立J. 食品工业科技,2026,47(15):1−10. doi: 10.13386/j.issn1002-0306.2025090324.
ZHANG Zehui, LIU Qiaoyu, XIAO Sili, et al. Effects of Different Thermal Processing Methods on the Quality of Tuna and Development of a Moisture Prediction ModelJ. Science and Technology of Food Industry, 2026, 47(15): 1−10. (in Chinese with English abstract). doi: 10.13386/j.issn1002-0306.2025090324.
Citation: ZHANG Zehui, LIU Qiaoyu, XIAO Sili, et al. Effects of Different Thermal Processing Methods on the Quality of Tuna and Development of a Moisture Prediction ModelJ. Science and Technology of Food Industry, 2026, 47(15): 1−10. (in Chinese with English abstract). doi: 10.13386/j.issn1002-0306.2025090324.

不同热加工方式对金枪鱼品质的影响及水分预测模型建立

Effects of Different Thermal Processing Methods on the Quality of Tuna and Development of a Moisture Prediction Model

  • 摘要: 采用蒸煮、烤制、空气炸及低温水煮处理金枪鱼,系统分析其感官、色泽、质构、水分、pH、粗蛋白与粗脂肪的变化规律,并运用偏最小二乘回归(PLSR)、支持向量回归(SVR)和反向传播神经网络(BPNN)三种模型,基于水分含量这一特征参数,结合光谱预处理技术构建预测模型,建立了一种基于高光谱成像技术的无损检测方法。结果表明,湿热处理(低温水煮与蒸煮)鱼肉硬度低,能有效保持金枪鱼的水分,使其质地松软;而蛋白质及脂肪、水分含量结果表明干热处理(烤制与空气炸)则通过促进美拉德反应和水分蒸发,赋予产品酥脆质地和浓郁香气。随着热加工强度的增加,各组水分含量显著降低(P<0.05),由于浓缩效应,蛋白质与脂肪的相对含量则相应上升。在建立的三种模型中,通过比较决定系数(R2)与误差(RMSE)等关键指标,反向传播神经网络(BPNN)模型在预测精度与稳定性方面均优于PLSR与SVR模型,被确定为最优预测模型(R2=0.9239,RMSEP=2.0284),该模型能最为精准地实现金枪鱼水分含量的快速无损检测,为热加工金枪鱼的品质监控提供了最可靠的光谱分析方案。

     

    Abstract: Tuna samples were processed using steaming, roasting, air frying, and low-temperature boiling methods. Changes in sensory attributes, color, texture, moisture content, pH, crude protein, and crude fat were systematically analyzed. Three prediction models—Partial Least Squares Regression (PLSR), Support Vector Regression (SVR), and Back-Propagation Neural Network (BPNN)—were developed based on moisture content as the characteristic parameter, combined with spectral preprocessing techniques, to establish a non-destructive detection method using hyperspectral imaging technology. The results demonstrated that moist-heat treatments (low-temperature boiling and steaming) resulted in lower hardness, effectively preserved moisture, and yielded a soft texture. In contrast, dry-heat treatments (roasting and air frying) promoted the Maillard reaction and moisture evaporation, imparting a crisp texture and rich aroma. As the thermal processing intensity increased, the moisture content decreased significantly (P<0.05), while the relative contents of protein and fat increased due to the concentration effect. Among the three models developed, the BPNN model exhibited superior prediction accuracy and stability compared to the PLSR and SVR models, achieving optimal performance (R2=0.9239, RMSEP=2.0284). The BPNN model enables accurate and rapid non-destructive detection of moisture content in tuna, providing a highly reliable spectral analysis solution for quality monitoring of thermally processed tuna products.

     

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