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Classification via an Embedded Approach

机译:通过嵌入式方法进行分类

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This paper presents the results of an automated volatile organic compound (VOC) classification process implemented by embedding a machine learning algorithm into an Arduino Uno board. An electronic nose prototype is constructed to detect VOCs from three different fruits. The electronic nose is constructed using an array of five tin dioxide (SnO2) gas sensors, an Arduino Uno board used as a data acquisition section, as well as an intelligent classification module by embedding an approach function which receives data signals from the electronic nose. For the intelligent classification module, a training algorithm is also implemented to create the base of a portable, automated, fast-response, and economical electronic nose device. This solution proposes a portable system to identify and classify VOCs without using a personal computer (PC). Results show an acceptable precision for the embedded approach in comparison with the performance of a toolbox used in a PC. This constitutes an embedded solution able to recognize VOCs in a reliable way to create application products for a wide variety of industries, which are able to classify data acquired by an electronic nose, as VOCs. With this proposed and implemented algorithm, a precision of 99% for classification was achieved into the embedded solution.
机译:本文介绍了通过将机器学习算法嵌入Arduino Uno板实现的自动挥发性有机化合物(VOC)分类过程的结果。构建了一个电子鼻原型,以检测来自三种不同水果的挥发性有机化合物。电子鼻使用五个阵列的二氧化锡(SnO2)气体传感器,用作数据采集部分的Arduino Uno板以及通过嵌入从电子鼻接收数据信号的逼近功能的智能分类模块来构造。对于智能分类模块,还实施了一种训练算法来创建便携式,自动,快速响应且经济的电子鼻装置的基础。该解决方案提出了一种便携式系统,无需使用个人计算机(PC)即可识别和分类VOC。结果表明,与PC中使用的工具箱的性能相比,嵌入式方法的精度可以接受。这构成了一种嵌入式解决方案,该解决方案能够可靠地识别VOC,从而为各种行业创建应用产品,这些产品能够将电子鼻所采集的数据归类为VOC。利用该提出并实现的算法,嵌入式解决方案的分类精度达到了99%。

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