Enhanced Gas Source Localization Using Distributed IoT Sensors and Bayesian Inference
Identifying a gas source in turbulent environments presents a significant challenge for critical applications such as environmental monitoring and emergency response. This issue is addressed through an approach that combines distributed IoT smart sensors with an algorithm based on Bayesian inference...
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Zusammenfassung: | Identifying a gas source in turbulent environments presents a significant
challenge for critical applications such as environmental monitoring and
emergency response. This issue is addressed through an approach that combines
distributed IoT smart sensors with an algorithm based on Bayesian inference and
Monte Carlo sampling techniques. Employing a probabilistic model of the
environment, such an algorithm interprets the gas readings obtained from an
array of static sensors to estimate the location of the source. The performance
of our methodology is evaluated by its ability to estimate the source's
location within a given time frame. To test the robustness and practical
applications of the methods under real-world conditions, we deployed an
advanced distributed sensors network to gather water vapor data from a
controlled source. The proposed methodology performs well when using both the
synthetic data generated by the model of the environment and those measured in
the real experiment, with the source localization error consistently lower than
the distance between one sensor and the next in the array. |
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DOI: | 10.48550/arxiv.2411.13268 |