Optimal Control tools to minimize dispersion in turbulent flows
ORAL
Abstract
We develop optimal and quasi-optimal strategies to control Lagrangian objects navigating in 3d turbulent flows. We consider the problem of minimizing the dispersion rate of a couple of autonomous explorers moving into the complex fluid environment. Starting from the optimal solutions derived in control theory, we find approximated solutions that could be applied also under less restrictive conditions as, e.g., in the presence of partial observability. We are going to compare hard-wired policies resulting from different approximated solutions of the optimal control theory against strategies obtained by data-driven tools based on Reinforcement Learning.
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Presenters
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Chiara Calascibetta
University of Roma Tor Vergata & INFN
Authors
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Chiara Calascibetta
University of Roma Tor Vergata & INFN
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Luca Biferale
University of Roma Tor Vergata & INFN, University of Rome Tor Vergata, Department of Physics and INFN, University of Rome "Tor Vergata", Via della Ricerca Scientifica 1, 00133, Rome, Italy, University of Rome
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Francesco Borra
LPENS, CNRS Paris
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Antonio Celani
ICTP, Trieste, The Abdus Salam International Centre for Theoretical Physics
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Massimo Cencini
ISC-CNR, CNR-ISC & INFN Tor Vergata