Hamiltonian bridge: A physics-driven generative framework for targeted pattern control
Vishaal Krishnan, Sumit Sinha, L. Mahadevan

TL;DR
This paper introduces the Hamiltonian bridge, a physics-driven generative framework that leverages stochastic control and physical laws to manipulate patterns across multiple scales in non-equilibrium systems.
Contribution
It presents a novel control framework combining dynamical laws and stochastic optimal control for targeted pattern manipulation in complex systems.
Findings
Successfully controls phase separation and self-assembly patterns
Demonstrates control of reaction-diffusion systems and tissue differentiation models
Provides a theoretical understanding of pattern geometry and transport paths
Abstract
Patterns arise spontaneously in a range of systems spanning the sciences, and their study typically focuses on mechanisms to understand their evolution in space-time. Increasingly, there has been a transition towards controlling these patterns in various functional settings, with implications for engineering. Here, we combine our knowledge of a general class of dynamical laws for pattern formation in non-equilibrium systems, and the power of stochastic optimal control approaches to present a framework that allows us to control patterns at multiple scales, which we dub the "Hamiltonian bridge". We use a mapping between stochastic many-body Lagrangian physics and deterministic Eulerian pattern forming PDEs to leverage our recent approach utilizing the Feynman-Kac-based adjoint path integral formulation for the control of interacting particles and generalize this to the active control of…
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Taxonomy
TopicsCellular Automata and Applications · Parallel Computing and Optimization Techniques · Evolutionary Algorithms and Applications
