Title :
Dealing With Redundant Features and Inconsistent Training Data in Electronic Nose: A Rough Set Based Approach
Author :
Bag, Anil Kumar ; Tudu, B. ; Bhattacharyya, Nabarun ; Bandyopadhyay, Rajib
Author_Institution :
Dept. of Appl. Electron. & Instrum. Eng., Future Inst. of Eng. & Manage., Kolkata, India
Abstract :
In many applications of electronic nose, the instrument is trained with data generated by human experts prior to its deployment in the fields. Quite often, these data are conflicting and inaccurate and thus the performance of an electronic nose is degraded. Moreover, degradation of its performance may also be due to the presence of redundant features or sensors in the array. While deploying an electronic nose for a specific application, it is observed that some of the sensors may not be required and only a subset of the sensor array contributes to the decision, which implies that optimization of the sensor array is also very important. To obtain a consistent and precise data set, both the conflicting data and irrelevant features must be removed. The rough set theory is capable of dealing with such an imprecise, inconsistent data set and in this paper, the rough-set based algorithm has been applied to remove the conflicting training patterns and optimize the sensor array in an electronic nose instrument used for sensing aroma of black tea samples.
Keywords :
electronic noses; optimisation; rough set theory; sensor arrays; aroma sensor; black tea sample; electronic nose; inconsistent training data set; optimization; redundant feature presence; rough set based approach; sensor array; Electronic noses; Information systems; Sensor arrays; Sensor phenomena and characterization; Set theory; Black tea; electronic nose; feature selection; reduct; rough set; sensor array;
Journal_Title :
Sensors Journal, IEEE
DOI :
10.1109/JSEN.2013.2286110