Many wrong models approach to localize an odor source in turbulence with static sensors
The problem of locating an odor source in turbulent flows is central to key applications such as environmental monitoring and disaster response. We address this challenge by designing an algorithm based on Bayesian inference, which uses odor measurements from an ensemble of static sensors to estimat...
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Zusammenfassung: | The problem of locating an odor source in turbulent flows is central to key
applications such as environmental monitoring and disaster response. We address
this challenge by designing an algorithm based on Bayesian inference, which
uses odor measurements from an ensemble of static sensors to estimate the
source position through a stochastic model of the environment. The problem is
hard because of the multi-scale and out-of-equilibrium properties of turbulent
transport, which lacks accurate analytical and phenomenological modeling, thus
preventing a guaranteed convergence for Bayesian approaches. To overcome the
risk of relying on a single unavoidably wrong model approximation, we propose a
method to rank "many wrong models" and to blend their predictions. We evaluate
our weighted Bayesian update algorithm by its ability to estimate the source
location with predefined accuracy and/or within a specified time frame, and
compare it to standard Monte Carlo sampling methods. To demonstrate the
robustness and potential applications of both approaches under realistic
environmental conditions, we use high-quality direct numerical simulations of
the Navier-Stokes equations to mimic the transport of odors in the atmospheric
boundary layer. Despite minimal prior information about the source and
environmental conditions, our proposed approach consistently proves to be more
accurate, reliable, and robust than Monte Carlo methods, thus showing promise
as a new tool for addressing the odor source localization problem in real-world
scenarios. |
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DOI: | 10.48550/arxiv.2407.08343 |