Multi-Sensor E-Nose Based on Online Transfer Learning Trend Predictive Neural Network
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Date
2024
Authors
Pervin Bulucu
Mert Nakip
Cuneyt Guzelis
Journal Title
Journal ISSN
Volume Title
Publisher
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
Open Access Color
GOLD
Green Open Access
Yes
OpenAIRE Downloads
OpenAIRE Views
Publicly Funded
No
Abstract
Electronic Nose (E-Nose) systems widely applied across diverse fields have revolutionized quality control disease diagnostics and environmental management through their odor detection and analysis capabilities. The decision and analysis of E-Nose systems often enabled by Machine Learning (ML) models that are trained offline using existing datasets. However despite their potential offline training efforts often prove intensive and may still fall short in achieving high generalization ability and specialization for considered application. To address these challenges this paper introduces the e-rTPNN decision system which leverages the Recurrent Trend Predictive Neural Network (rTPNN) combined with online transfer learning. The recurrent architecture of the e-rTPNN system effectively captures temporal dependencies and hidden sequential patterns within E-Nose sensor data enabling accurate estimation of trends and levels. Notably the system demonstrates the ability to adapt quickly to new data during online operation requiring only a small offline dataset for initial learning. We evaluate the performance of the e-rTPNN decision system in two domains: beverage quality assessment and medical diagnosis using publicly available wine quality and Chronic Obstructive Pulmonary Disease (COPD) datasets respectively. Our evaluation indicates that the proposed e-rTPNN achieves decision accuracy exceeding 97 % while maintaining low execution times. Furthermore comparative analysis against established Machine Learning (ML) models reveals that the e-rTPNN decision system consistently outperforms these models by a significant margin in terms of accuracy.
Description
Keywords
Market research, Transfer learning, Long short term memory, Feature extraction, Convolutional neural networks, Quality control, Electronic noses, Multisensor systems, Neural networks, E-Nose, trend prediction, multi-sensor, recurrent trend predictive neural network, online learning, OXIDE-SEMICONDUCTOR SENSORS, ELECTRONIC-NOSE, FOOD, E-Nose, online learning, trend prediction, multi-sensor, Electrical engineering. Electronics. Nuclear engineering, recurrent trend predictive neural network, TK1-9971
Fields of Science
02 engineering and technology, 0210 nano-technology, 01 natural sciences, 0104 chemical sciences
Citation
WoS Q
Scopus Q

OpenCitations Citation Count
6
Source
IEEE Access
Volume
12
Issue
Start Page
71442
End Page
71452
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Scopus : 8
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Mendeley Readers : 23
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