An Effective Gas Sensor Array Optimization Method Based on Random Forest*

G. Wei, Jie Zhao, Zechuan Yu, Yanli Feng, Gang Li, Xue-Rong Sun
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引用次数: 16

Abstract

The quality of gas sensor array is directly related to the performance of the electronic nose, which makes the optimization of sensor array a key issue in the study of electronic noses. A new sensor array optimization method is proposed based on Random Forest by using the Gini importance as the new measure of sensor contributions. An optimal sensor array of two sensors is built up targeting to classify CO, CH4 and their mixtures from an initial array composed of six sensors based on the method. Recognition results with the selected and other sensors by Random Forest, Back Propagation Neural Network and Support Vector Machine prove the effectiveness of the proposed array optimization algorithm.
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一种有效的基于随机森林的气体传感器阵列优化方法
气体传感器阵列的质量直接关系到电子鼻的性能,因此传感器阵列的优化是电子鼻研究中的一个关键问题。提出了一种基于随机森林的传感器阵列优化方法,将基尼重要度作为传感器贡献的新度量。基于该方法,构建了一个由2个传感器组成的最优传感器阵列,目标是对CO、CH4及其混合物进行分类。随机森林、反向传播神经网络和支持向量机对选定传感器和其他传感器的识别结果证明了该阵列优化算法的有效性。
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