Optimal sensor selection for classifying a set of ginsengs using metal-oxide sensors

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Abstract

The sensor selection problem was investigated for the application of classification of a set of ginsengs using a metal-oxide sensor-based homemade electronic nose with linear discriminant analysis. Samples (315) were measured for nine kinds of ginsengs using 12 sensors. We investigated the classification performances of combinations of 12 sensors for the overall discrimination of combinations of nine ginsengs. The minimum numbers of sensors for discriminating each sample set to obtain an optimal classification performance were defined. The relation of the minimum numbers of sensors with number of samples in the sample set was revealed. The results showed that as the number of samples increased, the average minimum number of sensors increased, while the increment decreased gradually and the average optimal classification rate decreased gradually. Moreover, a new approach of sensor selection was proposed to estimate and compare the effective information capacity of each sensor.

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Miao, J. C., Zhang, T. L., Wang, Y., & Li, G. (2015). Optimal sensor selection for classifying a set of ginsengs using metal-oxide sensors. Sensors (Switzerland), 15(7), 16027–16039. https://doi.org/10.3390/s150716027

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