Milk Assessment using Potentiometric and Gas Sensors in Conjunction With Neural Network

Marson Ady Putra, M. Rivai, A. Arifin
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引用次数: 8

Abstract

Currently, the identification of milk quality requires laboratory tests that are time-consuming because by analyzing the microorganisms commonly found in milk. In addition, milk quality can be directly detected by using the human nose and tongue. However, this is harmful because it can affect the human health. Moreover, the human senses have a different sensitivity that is not accurate in detecting the quality of milk. In this study has developed a sensor system to assess the quality of milk. The role of the human nose is replaced by gas sensor array for the identification of the smell or odor of milk. While the tongue is taken over by a potentiometric sensor array for identification of taste or compounds in the milk. The experimental result shows that this sensor array can produce different patterns to the fresh, sour, and spoiled milk samples. The Neural Network can be used to assess the quality of milk with a success rate of 83%. This technique is expected to be used as a tool to assess the quality of milk quickly, easily, and accurately.
结合神经网络的电位和气体传感器的牛奶评估
目前,牛奶质量的鉴定需要实验室测试,这是耗时的,因为要分析牛奶中常见的微生物。此外,用人的鼻子和舌头可以直接检测牛奶的质量。然而,这是有害的,因为它会影响人体健康。此外,人类的感官具有不同的灵敏度,在检测牛奶质量时并不准确。在这项研究中,开发了一种传感器系统来评估牛奶的质量。气体传感器阵列取代了人类鼻子的作用,用于识别牛奶的气味或气味。而舌头则被电位传感器阵列接管,用于识别牛奶中的味道或化合物。实验结果表明,该传感器阵列能够对新鲜、酸味和变质的牛奶样品产生不同的图案。神经网络可以用来评估牛奶的质量,成功率为83%。该技术有望成为一种快速、简便、准确地评价牛奶质量的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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