Abstract:Abstract:In order to solve the problem that normal electronic nose (enose) can hardly detect the low concentration gas odor of parts per billion (ppb) order, an enose preconcentration scheme and three temperature compensation (TC) methods are presented in this paper. Firstly, a preconcentrator is designed to improve the detection lower limit of the enose. Then, aiming at the problem that the detection and recognition effect of the enose decreases when the gas temperature is too high after preconcentration, three TC methods are proposed, which are the multivariate regression method, the neural network regression method and the TC ensemble learning method based on the two methods. Finally, enose detection experiment on the interior decoration material ppb level gas odor in vehicle was conducted. Two materials of polyurethane (PU) leather and polyvinyl chloride (PVC) leather were used to prepare the gases to be measured in the experiment. The average recognition accuracy rates before preconcentration, after preconcentration without TC and after preconcentration using the above three TC methods are 6114%, 8064%, 9167%, 9121% and 9506%, respectively, which verifies the effectiveness of the proposed enose preconcentrator and the TC methods.