Egg freshness during storage: the effect of laying hen age and shelf life prediction using a novel hybrid modeling method

IF 5.2 Q1 FOOD SCIENCE & TECHNOLOGY
Yifeng Lu , Jing Li , Zihao He , Linyun Chen , Huixin Tian , Chen Xu , Xinglian Xu , Minyi Han
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引用次数: 0

Abstract

Changes in the quality of eggs during storage relate to their shelf life and economic value. Factors such as temperature, relative humidity, the operation of cleaning, and microorganisms have been shown to play a role in the storage quality of eggs. This study thus aimed at investigating the effect of hen age on the storage quality of egg, and predicting egg shelf life using back propagation artificial neural network (BP-ANN) based models. Eggs laid by Jingfen No.1 (27 and 58 weeks of age) and Jingfen No.6 (26 and 57 weeks of age) hens were stored under ambient conditions and evaluated by physicochemical properties. It was found that the shelf life of the lower age group was significantly longer than that of the higher age group. A novel hybrid model combining BP-ANN, cuckoo search and adaptive boosting (CS-BP-AdaBoost) was proposed for predicting the remaining egg shelf life, with the input being Haugh unit, yolk index, air cell depth, albumen pH, hen age, and breed. The tuning process of hyperparameters such as learning rate, training function, and transfer function was presented in detail. Results show that CS-BP-AdaBoost had satisfactory performance on the test set with root mean square error (RMSE) and coefficient of determination (R2) of 0.68 and 0.97, respectively. And it outperformed BP-ANN by reducing RMSE by 0.39 and improving R2 by 0.05. The model used solved the problem that the traditional BP-ANN tends to fall into local minima. The removal of hen age from the input parameters caused a decrease in prediction accuracy (R2 = 0.95, RMSE = 1.00), suggesting an important role of hen age in shelf life prediction. This study demonstrates the great potential of applying combinatorial modeling approaches to predict egg shelf life and the crucial impact of hen age on egg shelf life prediction.
鸡蛋储存期间的新鲜度:利用一种新的杂交建模方法预测蛋鸡年龄和保质期的影响
鸡蛋在储存过程中质量的变化与它们的保质期和经济价值有关。温度、相对湿度、清洗操作和微生物等因素已被证明对鸡蛋的储存质量起作用。因此,本研究旨在探讨母鸡年龄对鸡蛋贮藏品质的影响,并利用基于BP-ANN的反向传播人工神经网络模型预测鸡蛋的保质期。将精芬1号(27和58周龄)和精芬6号(26和57周龄)产的蛋置于常温保存条件下,进行理化性质评价。结果发现,低年龄组的保质期明显长于高年龄组的保质期。以哈氏单位、蛋黄指数、空气细胞深度、蛋白pH值、母鸡年龄和品种为输入参数,提出了一种结合BP-ANN、布谷鸟搜索和自适应增强的新型混合模型(CS-BP-AdaBoost),用于预测剩余鸡蛋保质期。详细介绍了学习率、训练函数和传递函数等超参数的整定过程。结果表明,CS-BP-AdaBoost在测试集上的表现令人满意,均方根误差(RMSE)和决定系数(R2)分别为0.68和0.97。其RMSE降低0.39,R2提高0.05,优于BP-ANN。该模型解决了传统BP-ANN算法容易陷入局部极小值的问题。从输入参数中剔除母鸡年龄导致预测精度下降(R2 = 0.95,RMSE = 1.00),说明母鸡年龄在货架期预测中起重要作用。本研究证明了组合建模方法在鸡蛋货架期预测中的巨大潜力,以及母鸡年龄对鸡蛋货架期预测的重要影响。
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CiteScore
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