Ce Shi, Zhiyao Zhao, Zhixin Jia, Mengyuan Hou, Xinting Yang, Xiaoguo Ying, Zengtao Ji
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引用次数: 0
Abstract
The prediction of food shelf life has become a vital tool for distributors and consumers, enabling them to determine storage and optimal edible time, thus avoiding unexpected food waste. Artificial neural network (ANN) have emerged as an effective, fast and accurate method for modeling, simulating and predicting shelf life in food. ANNs are capable of tackling nonlinear, complex and ill-defined problems between the variables without prior knowledge. ANN model exhibited excellent fit performance evidenced by low root mean squared error and high correlation coefficient. The low relative error between actual values and predicted values from the ANN model demonstrates its high accuracy. This paper describes the modeling of ANN in food quality prediction, encompassing commonly used ANN architectures, ANN simulation techniques, and criteria for evaluating ANN model performance. The review focuses on the application of ANN for modeling nonlinear food quality during storage, including dairy, meat, aquatic, fruits, and vegetables products. The future prospects of ANN development mainly focus on optimal models and learning algorithm selection, multiple model fusion, self-learning and self-correcting shelf-life prediction model development, and the potential utilization of deep learning techniques.
食品保质期预测已成为分销商和消费者的重要工具,使他们能够确定储存和最佳食用时间,从而避免意外的食品浪费。人工神经网络(ANN)已成为一种有效、快速、准确的建模、模拟和预测食品保质期的方法。人工神经网络能够解决变量之间的非线性、复杂和不明确问题,而无需事先了解相关知识。ANN 模型具有极佳的拟合性能,表现为较低的均方根误差和较高的相关系数。ANN 模型的实际值与预测值之间的相对误差较小,这表明其具有很高的准确性。本文介绍了食品质量预测中的 ANN 建模,包括常用的 ANN 架构、ANN 仿真技术和 ANN 模型性能的评估标准。综述的重点是 ANN 在贮藏期间非线性食品质量建模中的应用,包括乳制品、肉类、水产品、水果和蔬菜产品。未来 ANN 的发展前景主要集中在最优模型和学习算法选择、多模型融合、自学习和自校正货架期预测模型开发,以及深度学习技术的潜在利用。
期刊介绍:
Critical Reviews in Food Science and Nutrition serves as an authoritative outlet for critical perspectives on contemporary technology, food science, and human nutrition.
With a specific focus on issues of national significance, particularly for food scientists, nutritionists, and health professionals, the journal delves into nutrition, functional foods, food safety, and food science and technology. Research areas span diverse topics such as diet and disease, antioxidants, allergenicity, microbiological concerns, flavor chemistry, nutrient roles and bioavailability, pesticides, toxic chemicals and regulation, risk assessment, food safety, and emerging food products, ingredients, and technologies.