Identification of Coffee Types Using an Electronic Nose with the Backpropagation Artificial Neural Network

Roza Susanti, Zaini Zaini, Anton Hidayat, Nadia Alfitri, Muhammad Ilhamdi Rusydi
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Abstract

Coffee is one of the famous plants’ commodities in the world. There are some coffee powders such as Arabica dan Robusta. This study aimed to identify two various coffee powders, Arabica and Robusta based on the blended aroma profiles, employing the backpropagation Artificial Neural Network (ANN). Four taste sensors were employed, namely TGS 2602, 2610, 2611, and 2620, to capture the diverse coffee aroma. These detectors were combined with the aroma sensors having transducers integrated with signal amplifiers or processors, which featured a load of 10 KΩ resistance. Three aroma types were investigated, namely Arabica coffee, Robusta coffee, and without coffee beans. The neural network architecture consisted of four inputs from all sensors, with one hidden layer housing eight neurons. Two neuron outputs were employed for classification, with 70 samples used for training ANN for each type. During the training phase, the developed neural network showed an impressive accuracy rate of 91.90%. TGS 2602 and 2611 sensors showed the most significant differences among the three aroma types. When analyzing ground Robusta coffee, TGS 2602 and 2611 sensors recorded 2.967 volts and 1.263 volts, with a gas concentration of 17.92 ppm and 2441.8 ppm. Similarly, the sensors for ground Arabica coffee displayed 3.384 volts and 1.582 volts with a gas concentration of 20.445 ppm and 3058.5 ppm in both TGS 2602 and 2611, respectively. The implemented ANN with aroma sensor as input successfully identify the coffee powders.
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基于反向传播人工神经网络的电子鼻咖啡品种识别
咖啡是世界上著名的植物商品之一。有一些咖啡粉,如阿拉比卡和罗布斯塔。本研究旨在利用反向传播人工神经网络(ANN)对阿拉比卡和罗布斯塔两种不同的咖啡粉的混合香气特征进行识别。四种味觉传感器分别是TGS 2602、2610、2611和2620,用来捕捉不同的咖啡香气。这些探测器与气味传感器相结合,传感器集成了信号放大器或处理器,其负载为10 KΩ电阻。研究了阿拉比卡咖啡、罗布斯塔咖啡和不含咖啡豆的三种香气类型。神经网络架构由来自所有传感器的四个输入组成,一个隐藏层容纳八个神经元。使用两个神经元输出进行分类,每种类型使用70个样本进行人工神经网络训练。在训练阶段,开发的神经网络显示出令人印象深刻的准确率,达到91.90%。TGS 2602和2611传感器在三种香气类型之间的差异最为显著。在分析研磨的罗布斯塔咖啡时,TGS 2602和2611传感器记录的电压分别为2.967伏和1.263伏,气体浓度分别为17.92 ppm和2441.8 ppm。同样,用于研磨阿拉比卡咖啡的传感器在TGS 2602和2611中显示的电压分别为3.384伏和1.582伏,气体浓度分别为20.445 ppm和3058.5 ppm。以香气传感器为输入的人工神经网络成功地识别了咖啡粉。
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来源期刊
JOIV International Journal on Informatics Visualization
JOIV International Journal on Informatics Visualization Decision Sciences-Information Systems and Management
CiteScore
1.40
自引率
0.00%
发文量
100
审稿时长
16 weeks
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