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Determination of food age using neural network

机译:神经网络测定食物时代

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摘要

Artificial intelligence (AI) is the aspect of computing concerned with programming computers to behave like humans. In spite of the fact that no artificial intelligence system is capable of fully simulating human behaviour, there are aspects which have been successfully mimicked. One of these applications is the development of intelligent systems to model the human sense of smell. The artificial neural network is one tool which makes inferences based on pattern recognition of selected parameters in their environment. This paper applies the neural network to the determination of food age using ammonia concentration as the major metric. The resulting algorithm is capable of determining age of common food types (in days) using supervised learning to obtain the knowledge inference database. A two process-layer neural network topology was observed to provide most accurate results with overall accuracy of 95 percent. Food samples used to obtain inference database include rice, beans, fresh vegetables, yam and potatoes.
机译:人工智能(AI)是有关编程计算机的计算,以表现为人类。尽管没有人工智能系统能够完全模拟人类行为,但有些方面已经成功模仿了。其中一个应用是开发智能系统,以模拟人类的嗅觉。人工神经网络是一种工具,其基于对其环境中所选参数的模式识别的推论。本文将神经网络应用于使用氨浓度作为主要度量的食物时代的测定。得到的算法能够使用监督学习来确定普通食品类型的年龄(以天)获取知识推理数据库。观察到两个过程层神经网络拓扑,以提供最精确的结果,整体准确性为95%。用于获得推理数据库的食物样品包括米饭,豆类,新鲜蔬菜,山药和土豆。

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