Real-Time Calibration Model for Low-Cost Sensor in Fine-Grained Time Series

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초록

Precise measurements from sensors are crucial, but data is usually collected from low-cost, low-tech systems, which are often inaccurate. Thus, they require further calibrations. To that end, we first identify three requirements for effective calibration under practical low-tech sensor conditions. Based on the requirements, we develop a model called TESLA, Transformer for effective sensor calibration utilizing logarithmic-binned attention. TESLA uses a high-performance deep learning model, Transformers, to calibrate and capture non-linear components. At its core, it employs logarithmic binning to minimize attention complexity. TESLA achieves consistent real-time calibration, even with longer sequences and finer-grained time series in hardware-constrained systems. Experiments show that TESLA outperforms existing novel deep learning and newly crafted linear models in accuracy, calibration speed, and energy efficiency.

제목
Real-Time Calibration Model for Low-Cost Sensor in Fine-Grained Time Series
저자
Ahn, SeokhoKim, HyungjinShin, SungbokSeo, Young-Duk
DOI
10.1609/aaai.v39i1.31974
발행일
2025
유형
Proceedings Paper
저널명
THIRTY-NINTH AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE, AAAI-25, VOL 39 NO 1
39
1
페이지
3 ~ 11