用机器学习补偿占空比MOX气体传感器灵敏度的变化

Markus-Philipp Gherman, Yun Cheng, Andres Gomez, O. Saukh
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引用次数: 5

摘要

嵌入物联网和移动设备的流行低成本空气质量传感器是基于金属氧化物(MOX)的,金属氧化物(MOX)会改变其电阻,以响应以气体形式排放的环境污染物。连续操作MOX传感器是昂贵的,因为它需要加热并保持几百度的加热板。为了节省能源,传感器通常是占空比短的接通时间和长断开时间。然而,这样做会对传感器的化学反应产生不利影响,随着关闭时间的增加,传感器的化学反应会变慢。因此,传感器对各种气体的灵敏度会偏离连续供电的传感器。在本文中,我们表明可以从占空比传感器获得的瞬态响应中恢复精确的连续传感器测量值,并使用机器学习方法补偿改变的多气体交叉灵敏度剖面。在一个测试集上,我们在连续的地面真值测量和获得的tVOC模型预测之间实现了24ppb的平均绝对误差(MAE)。这导致了86.6%的室内空气质量(IAQ)水平的正确估计,而如果不使用校正,则为68.1%。我们的模型对微小的基线位移是不变的,并且对传感器提供的tVOC和CO2-eq信号都有效。由于我们的模型,98.5%的能源消耗可以减少,同时保持高精度。这种优化使室内物联网场景中的室内空气质量传感器能够基于能量收集进行操作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compensating Altered Sensitivity of Duty-Cycled MOX Gas Sensors with Machine Learning
Popular low-cost air quality sensors embedded into IoT and mobile devices are based on metal oxides (MOX) that change their electrical resistance in response to ambient pollutants emitted as gases. Operating MOX sensors continuously is expensive, since it requires to heat up and maintain a hotplate at several hundred degrees. To save energy, sensors are commonly duty cycled with short on-times and long off-times. However, doing so adversely affects the sensor’s chemical reactions, which have slower transients as the off-time increases. As a result, sensor sensitivity to various gases deviates from a continuously powered sensor. In this paper, we show that it is possible to recover accurate continuous-sensor measurements from transient responses obtained from a duty cycled sensor and compensate for an altered multi-gas cross-sensitivity profile using machine learning methods. On a test set, we achieve a mean absolute error (MAE) of 24ppb between continuous ground-truth measurements and obtained model predictions of tVOC. This results in estimating 86.6% of Indoor Air Quality (IAQ) levels correctly compared to 68.1% if no correction is used. Our models are invariant to minor baseline shifts and work for both tVOC and CO2-eq signals provided by the sensor. Thanks to our models, 98.5% of the energy consumption can be reduced while maintaining high accuracy. This optimization enables energy-harvesting-based operation of IAQ sensors in indoor IoT scenarios.
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