Sensor optimization for urban wind estimation with a cluster-based probabilistic framework

Abstract

This work proposes a physics-informed machine-learning framework for sensor-based wind flow estimation along drone trajectories in complex urban environments. The method uses a database of flow simulations under different wind conditions to estimate velocity fields and their associated uncertainty within a target domain, enabling the optimization of sensor placement to minimize uncertainty. The framework introduces several innovations: scalability with domain complexity through a physics-based domain decomposition, the ability to extrapolate beyond the training wind conditions, and flexible sensor positioning as a free input variable. The approach combines Reynolds-number-based scaling of flow variables, cluster-based representations of subdomain flows, entropy-based correlations between subdomains, and a multivariate probabilistic model linking sensor measurements to velocity estimates. The methodology is demonstrated on drone trajectories through a three-building configuration, illustrating its capability for urban wind estimation and sensor optimization. The framework is expected to scale to larger urban domains and incorporate weather information in future applications.

Publication
Physics of Fluids