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Kim, Jae Joon
Circuits & Systems Design Lab.
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A Mixture-Gas Edge-Computing Multi-Sensor Device with Generative Learning Framework

Author(s)
Cho, JeonghoonPyeon, You JangKwon, Yeong MinKim, YonggiYeom, JunyeongKim, Myeong WooPark, Chan SamKim, In-HoLee, Yun-SikKim, Jae Joon
Issued Date
2024-03
DOI
10.1109/JSEN.2024.3374358
URI
https://scholarworks.unist.ac.kr/handle/201301/81808
Citation
IEEE SENSORS JOURNAL
Abstract
This paper presents a mixture-gas detectable edge-computing device with a generative learning framework for selectivity and accuracy. Mixture-gas detection capability is enabled through two proposed schemes of temperature modulation and cross-iterative-tuning artificial neural network (CIT-ANN). Their related computations are facilitated inside the edge device level, applying analog normalization concepts in the readout integrated circuit (ROIC). This proposed edge platform provides generative training data for mixture-gas detection, allowing much less empirical data for its learning process, especially under mixture gas environment. An edge-computing IoT device prototype was manufactured based on a fabricated ROIC and in-house metal-oxide-semiconductor sensor arrays embedding heater modulation function. Under mixture-gas experiments of NO2 and CO gases, the proposed CIT-ANN together with the heater modulation demonstrated 44% higher recognition performance than in the conventional ANN. The proposed generative learning method showed higher relative label coincidence, achieving 17% higher correlation with real training data than in the conventional mathematical interpolation method
Publisher
Institute of Electrical and Electronics Engineers
ISSN
1530-437X
Keyword (Author)
Cross-Iterative-Tuning Artificial Neural NetworkEdge ComputingGas detectorsGenerative Adversarial NetworksHeating systemsImage edge detectionMetal-Oxide SemiconductorMixture Gas SensorModulationReadout Integrated CircuitResistanceSensorsTemperature sensors

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