TY - JOUR
T1 - Drift-Insensitive Features for Learning Artificial Olfaction in E-Nose System
AU - Rehman, A. U.
AU - Bermak, Amine
N1 - Publisher Copyright:
© 2001-2012 IEEE.
PY - 2018/9/1
Y1 - 2018/9/1
N2 - Domain features and independence maximization are proposed recently for learning the domain-invariant subspace to handle drift in gas sensors. The proposed domain features were the acquisition time and a unique device label for the collected gas samples. In real-Time applications of gas sensing, a sample is usually collected using a multi-sensor sensing approach, so a unique device label is not possible in that case, which results in performance degradation. Similarly, semisupervised learning algorithms are proposed to handle drift for gas sensing applications, but getting data from the target domain for the calibration of the system is not always possible. To address these problems, this paper proposes a novel approach to handle the drift in gas sensors, with the following merits: 1) a new classification system based on cosine similarity is developed and features are exploited using a metaheuristic; the outcome is drift-insensitive features that are capable of handling drift in gas sensors; 2) the proposed system is robust against the drift without requiring any re-calibration, domain transformation, or data from target domain; 3) the classification system is an integration of two classifiers; this enables the system to outperform other baseline methods; and 4) only median values of drift-insensitive features are used for learning, so the system requires very few memory cells for storage. The proposed system is validated against a large-scale data set of 13910 samples from six gases, with 36 months' drift and has demonstrated 86.01% classification accuracy, which is 2.76% improvement, when compared with other state-of-The-Art methods.
AB - Domain features and independence maximization are proposed recently for learning the domain-invariant subspace to handle drift in gas sensors. The proposed domain features were the acquisition time and a unique device label for the collected gas samples. In real-Time applications of gas sensing, a sample is usually collected using a multi-sensor sensing approach, so a unique device label is not possible in that case, which results in performance degradation. Similarly, semisupervised learning algorithms are proposed to handle drift for gas sensing applications, but getting data from the target domain for the calibration of the system is not always possible. To address these problems, this paper proposes a novel approach to handle the drift in gas sensors, with the following merits: 1) a new classification system based on cosine similarity is developed and features are exploited using a metaheuristic; the outcome is drift-insensitive features that are capable of handling drift in gas sensors; 2) the proposed system is robust against the drift without requiring any re-calibration, domain transformation, or data from target domain; 3) the classification system is an integration of two classifiers; this enables the system to outperform other baseline methods; and 4) only median values of drift-insensitive features are used for learning, so the system requires very few memory cells for storage. The proposed system is validated against a large-scale data set of 13910 samples from six gases, with 36 months' drift and has demonstrated 86.01% classification accuracy, which is 2.76% improvement, when compared with other state-of-The-Art methods.
KW - Cosine similarity
KW - electronic nose
KW - gas sensors
KW - particle swarm optimization
KW - sensor drift
UR - https://www.scopus.com/pages/publications/85049675654
U2 - 10.1109/JSEN.2018.2853674
DO - 10.1109/JSEN.2018.2853674
M3 - Article
AN - SCOPUS:85049675654
SN - 1530-437X
VL - 18
SP - 7173
EP - 7182
JO - IEEE Sensors Journal
JF - IEEE Sensors Journal
IS - 17
ER -