人工神经网络在食品加工工程中的应用

R. Guiné, Ci Dets
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引用次数: 29

摘要

人工神经网络(ANN)旨在通过建立一个具有模拟人脑链接的系统来解决人工智能的问题。这种方法包括通过试错来学习的过程。人工神经网络是一个由突触连接的神经元组成的系统,分为接收外部环境刺激的传入神经元、与系统外部通信的内部或隐藏神经元和输出神经元。人工神经网络具有自适应特性好、泛化可能性大、抗噪能力强等优点。神经网络已经成功地应用于商业、金融、医学和工业等各个领域,主要用于分类、预测、模式识别和控制等问题。在食品工业、食品加工、食品工程、食品特性或质量控制中,经常使用统计工具,人工神经网络可以更有效地处理包含多个输入和输出变量的数据。这篇综述的目的是强调人工神经网络在食品加工中的应用,并评估其使用范围和对不同食品系统的适应性。为此,从科学文献中进行了系统的审查,并根据确定的纳入标准选择了信息。结果表明,人工神经网络广泛应用于食品系统建模和预测,具有良好的准确性和适用性,适用于食品工程中的各种情况和过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Use of Artificial Neural Networks (ANN) in Food Process Engineering
Artificial neural networks (ANN) aim to solve problems of artificial intelligence, by building a system with links that simulate the human brain. This approach includes the learning process by trial and error. The ANN is a system of neurons connected by synaptic connections and divided into incoming neurons, which receive stimulus from the external environment, internal or hidden neurons and output neurons, that communicate with the outside of the system. The ANNs present many advantages, such as good adaptability characteristics, possibility of generalization and high noise tolerance, among others. Neural networks have been successfully used in various areas, for example, business, finance, medicine, and industry, mainly in problems of classification, prediction, pattern recognition and control. In the food industry, food processing, food engineering, food properties or quality control, statistical tools are frequently present, and ANNs can process more efficiently data comprising multiple input and output variables. The objective of this review was to highlight the application of ANN to food processing, and evaluate its range of use and adaptability to different food systems. For that a systematic review was undertaken from the scientific literature and the selection of the information was based on inclusion criteria defined. The results indicated that ANN is widely used for modelling and prediction in food systems, showing good accuracy and applicability to a wide range of situations and processes in food engineering.
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