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Sensor Drift Compensation Based on the Improved LSTM and SVM Multi-Class Ensemble Learning Models
by
Yu, Chongchong
, Xiao, Kaitai
, Zhao, Xia
, Han, Lu
, Li, Pengfei
, Meng, Xiangning
in
Accuracy
/ Algorithms
/ Artificial intelligence
/ Classification
/ Compensation
/ Data processing
/ Datasets
/ Deep learning
/ drift compensation
/ Fault diagnosis
/ gas recognition
/ Gases
/ Hypotheses
/ Identification systems
/ Information processing
/ Laboratories
/ LSTM
/ Machine learning
/ Neural networks
/ Poisoning
/ Principal components analysis
/ Regularization methods
/ Sensors
/ Signal processing
/ Software
/ Support vector machines
/ SVM
/ the multi-classification ensemble learning model
2019
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Sensor Drift Compensation Based on the Improved LSTM and SVM Multi-Class Ensemble Learning Models
by
Yu, Chongchong
, Xiao, Kaitai
, Zhao, Xia
, Han, Lu
, Li, Pengfei
, Meng, Xiangning
in
Accuracy
/ Algorithms
/ Artificial intelligence
/ Classification
/ Compensation
/ Data processing
/ Datasets
/ Deep learning
/ drift compensation
/ Fault diagnosis
/ gas recognition
/ Gases
/ Hypotheses
/ Identification systems
/ Information processing
/ Laboratories
/ LSTM
/ Machine learning
/ Neural networks
/ Poisoning
/ Principal components analysis
/ Regularization methods
/ Sensors
/ Signal processing
/ Software
/ Support vector machines
/ SVM
/ the multi-classification ensemble learning model
2019
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Sensor Drift Compensation Based on the Improved LSTM and SVM Multi-Class Ensemble Learning Models
by
Yu, Chongchong
, Xiao, Kaitai
, Zhao, Xia
, Han, Lu
, Li, Pengfei
, Meng, Xiangning
in
Accuracy
/ Algorithms
/ Artificial intelligence
/ Classification
/ Compensation
/ Data processing
/ Datasets
/ Deep learning
/ drift compensation
/ Fault diagnosis
/ gas recognition
/ Gases
/ Hypotheses
/ Identification systems
/ Information processing
/ Laboratories
/ LSTM
/ Machine learning
/ Neural networks
/ Poisoning
/ Principal components analysis
/ Regularization methods
/ Sensors
/ Signal processing
/ Software
/ Support vector machines
/ SVM
/ the multi-classification ensemble learning model
2019
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Sensor Drift Compensation Based on the Improved LSTM and SVM Multi-Class Ensemble Learning Models
Journal Article
Sensor Drift Compensation Based on the Improved LSTM and SVM Multi-Class Ensemble Learning Models
2019
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Overview
Drift is an important issue that impairs the reliability of sensors, especially in gas sensors. The conventional method usually adopts the reference gas to compensate for the drift. However, its classification accuracy is not high. We propose a supervised learning algorithm that is based on multi-classifier integration for drift compensation in this paper, which incorporates drift compensation into the classification process, motivated by the fact that the goal of drift compensation is to improve the classification performance. In our method, with the obtained characteristics of sensors and the advantage of Support Vector Machine (SVM) in few-shot classification, the improved Long Shot Term Memory (LSTM) is integrated to build the multi-class classifier model. We tested the proposed approach on the publicly available time series dataset that was collected over three years by the metal-oxide gas sensors. The results clearly indicate the superiority of multiple classifier approach, which achieves higher classification accuracy as compared with different approaches during testing period with an ensemble of classifiers in the presence of sensor drift over time.
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