| Literature DB >> 29057792 |
Yuan Luo1,2, Wenbin Ye3, Xiaojin Zhao4, Xiaofang Pan5, Yuan Cao6.
Abstract
In this paper, an approach that can fast classify the data from the electronic nose is presented. In this approach the gradient tree boosting algorithm is used to classify the gas data and the experiment results show that the proposed gradient tree boosting algorithm achieved high performance on this classification problem, outperforming other algorithms as comparison. In addition, electronic nose we used only requires a few seconds of data after the gas reaction begins. Therefore, the proposed approach can realize a fast recognition of gas, as it does not need to wait for the gas reaction to reach steady state.Entities:
Keywords: electronic nose; fast recognition; gas sensors; gradient tree boosting
Year: 2017 PMID: 29057792 PMCID: PMC5677404 DOI: 10.3390/s17102376
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Tree Ensemble Model. The final prediction for an instance is the sum of predictions from each tree.
Figure 2Experimental setup to acquire signatures of the target gases with the sensor array.
Types of metal oxide semiconductor (MOS) sensors (provided by Figaro Inc.)
| Channel | Sensor Part Number | Voltage in Sensor Heater |
|---|---|---|
| 0 | TGS821 | 5 V |
| 1 | TGS812 | 5 V |
| 2 | TGS2610 | 5 V |
| 3 | TGS2612 | 5 V |
| 4 | TGS3870 | 5 V |
| 5 | TGS2611 | 5 V |
| 6 | TGS816 | 5 V |
| 7 | TGS2602 | 5 V |
Figure 3The response of a metal-oxide based chemical sensor to 200 ppm of .
Classification Performance of Algorithms.
| Classifier | Accuracy(%) |
|---|---|
| GMM [ | 25.7 |
| KNN [ | 84.6 |
| MLP [ | 86.9 |
| SVM [ | 86.2 |
| The Proposed Gradient Tree Boosting Algorithm | 96.9 |
Classification Performance of Algorithms after PCA Preprcessing.
| Classifier | Accuracy (%) |
|---|---|
| GMM [ | 25.9 |
| KNN [ | 84.5 |
| MLP [ | 86.7 |
| SVM [ | 86.3 |
| The Proposed Gradient Tree Boosting Algorithm | 96.7 |
Figure 42-dimensional PCA plot of 4 gases.