Litcius/Paper detail

Recognition Algorithms in E-Nose: A Review

Xingan Yang, Meng Li, Xiaohua Ji, Junqing Chang, Zanhong Deng, Gang Meng

2023IEEE Sensors Journal57 citationsDOIOpen Access PDF

Abstract

In recent years, the smart electronic nose (E-nose) has witnessed rapid applications in diverse fields. Apart from sensor arrays, the recognition algorithm plays a determinant role in the performance of E-nose. Focusing on the signal processing of E-nose, the response signal characteristic of a sensor is introduced first in this article. Based on the differences between the processing of features, the algorithms are subsequently divided into traditional and artificial neural networks (ANNs)-based, and their respective properties are specifically analyzed through the application in reality. The evaluation metrics for these algorithms are then summarized. Finally, the challenges and prospects of the algorithm are concluded. This article aims to help researchers in diverse fields employ and explore the appropriate gas recognition algorithms for the emerging applications of E-nose.

Topics & Concepts

Electronic noseComputer scienceArtificial neural networkArtificial intelligenceSignal processingAlgorithmMachine learningPattern recognition (psychology)Digital signal processingComputer hardwareAdvanced Chemical Sensor TechnologiesGas Sensing Nanomaterials and SensorsInsect Pheromone Research and Control
Recognition Algorithms in E-Nose: A Review | Litcius