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Optimization of sensor array in electronic nose by combinational feature selection method

机译:组合特征选择方法优化电子鼻传感器阵列

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Electronic nose (e-nose) is a machine olfaction system and the sensor array is an essential part of the electronic olfaction process. A pattern recognition unit is necessary in electronic nose system to efficiently decide about the output of the test using the responses of all the sensors in the array. The output of a pattern recognition algorithm depends on the quality of the feature set used for training and testing. Relevant and independent feature set improves the performance of a pattern classification algorithm. In some applications of electronic nose, the responses of few sensors are highly corrupted with noise and are either irrelevant or are redundant to the process. These sensors should be identified and eliminated from the sensor system for better accuracy. This paper addresses the selection of sensors in an e-nose system by different feature selection methods and then integrates them to achieve improved classification performance. We have used three types of feature selection methods namely, t-statistics, Fisher's criterion and minimum redundancy maximum relevance (MRMR) technique to select the most informative features. We have tested the proposed method on data obtained from the major aroma producing chemicals of black tea. Multi-class support vector machine (SVM) has been used as a pattern classifier in an electronic nose with black tea samples. The experimental results show that the performance of the e-nose system increased by 6–10% with the use of the proposed combinational feature selection technique.
机译:电子鼻(电子鼻)是一种机器嗅觉系统,传感器阵列是电子嗅觉过程的重要组成部分。在电子鼻系统中,模式识别单元是必需的,以便利用阵列中所有传感器的响应有效地决定测试的输出。模式识别算法的输出取决于用于训练和测试的功能集的质量。相关且独立的特征集提高了模式分类算法的性能。在电子鼻的某些应用中,很少有传感器的响应被噪声严重破坏,或者与过程无关或多余。这些传感器应被识别并从传感器系统中删除,以提高准确性。本文介绍了通过不同的特征选择方法在电子鼻系统中选择传感器,然后将其集成以实现改进的分类性能。我们使用了三种类型的特征选择方法,即t统计量,Fisher准则和最小冗余最大相关性(MRMR)技术来选择信息量最大的特征。我们已经从红茶主要产生香气的化学物质中获得的数据测试了该方法。多类支持向量机(SVM)已用作带有红茶样本的电子鼻子中的模式分类器。实验结果表明,使用提出的组合特征选择技术,电子鼻系统的性能提高了6–10%。

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