ExLibris header image
SFX Logo
Title: Gas identification with drift counteraction for electronic noses using augmented convolutional neural network
Source:

Sensors and Actuators B - Chemical [0925-4005] Feng, Lihang yr:2022


Collapse list of basic services Basic
Sorry, no full text available...
Please use the document delivery service (see below)  
Holding information
Holdings in library search engine ALBERT GO
Document delivery
Request document via Library/Bibliothek GO
Users interested in this article also expressed an interest in the following:
1. "Target discrimination, concentration prediction, and status judgment of electronic nose system based on large-scale measurement and multi-task deep learning." Sensors and actuators. 351: 130915-. Link to SFX for this item
2. "Data set from chemical sensor array exposed to turbulent gas mixtures." Data in brief. 3.C: 216-220. Link to SFX for this item
3. "A grey-box machine learning based model of an electrochemical gas sensor." Sensors and actuators. 321: 128414-. Link to SFX for this item
4. "Efficient terahertz absorption gas sensor with Gaussian process regression in time- and frequency-domain." Sensors and actuators. 369: 1-. Link to SFX for this item
5. "Efficient fusion of spiking neural networks and FET-type gas sensors for a fast and reliable artificial olfactory system." Sensors and actuators. 345: 130419-. Link to SFX for this item
6. "Classification and Regression of Binary Hydrocarbon Mixtures using Single Metal Oxide Semiconductor Sensor With Application to Natural Gas Detection." Sensors and actuators. 326: 129012-. Link to SFX for this item
Select All Clear All

Expand list of advanced services Advanced