Olfactory pursuit: catching a moving odor source in complex flows
Maurizio Carbone, Lorenzo Piro, Robin A. Heinonen, Luca Biferale, Massimo Cencini, Antonio Celani

TL;DR
This paper develops a computational framework for olfactory pursuit, enabling an agent to effectively locate moving odor sources in complex, turbulent environments by combining information gain and predictive inference.
Contribution
It introduces a hybrid policy that outperforms existing strategies by integrating information-theoretic and predictive control methods for dynamic odor source localization.
Findings
Hybrid policy achieves near-optimal performance across various target behaviors.
Purely exploratory strategies fail with persistent target motion.
The approach is robust to model mismatch and complex plume dynamics.
Abstract
Locating and intercepting a moving target from possibly delayed, intermittent sensory signals is a paradigmatic problem in decision-making under uncertainty, and a fundamental challenge for, e.g., animals seeking prey or mates and autonomous robotic systems. Odor signals are intermittent, strongly mixed by turbulent-like transport, and typically lag behind the true target position, thereby complicating localization. Here, we formulate olfactory pursuit as a partially observable Markov decision process in which an agent maintains a joint belief over the target's position and velocity. Using a discrete run-and-tumble model, we compute quasi-optimal policies by numerically solving the Bellman equation and benchmark them against well-established information-theoretic strategies such as Infotaxis. We show that purely exploratory policies are near-optimal when the target frequently reorients,…
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