TL;DR
This paper demonstrates that off-the-shelf metal-oxide gas sensors, combined with simple signal processing, can effectively estimate gas source distance and position in turbulent environments by analyzing rapid fluctuations in gas concentration.
Contribution
The study introduces a novel, low-cost method to decode gas source proximity using metal-oxide sensors and simple analysis of concentration 'bouts', independent of gas concentration levels.
Findings
Bout frequency predicts source distance accurately.
Variance of bout counts indicates cross-wind offset.
Method is suitable for low-power microcontrollers.
Abstract
Estimating the distance of a gas source is important in many applications of chemical sensing, like e.g. environmental monitoring, or chemically-guided robot navigation. If an estimation of the gas concentration at the source is available, source proximity can be estimated from the time-averaged gas concentration at the sensing site. However, in turbulent environments, where fast concentration fluctuations dominate, comparably long measurements are required to obtain a reliable estimate. A lesser known feature that can be exploited for distance estimation in a turbulent environment lies in the relationship between source proximity and the temporal variance of the local gas concentration - the farther the source, the more intermittent are gas encounters. However, exploiting this feature requires measurement of changes in gas concentration on a comparably fast time scale, that have up to…
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