Controlling network ensembles
Isaac Klickstein, Francesco Sorrentino

TL;DR
This paper develops a framework for minimum energy control of network ensembles with uncertainty, ensuring controllability with tunable accuracy and analyzing how control costs scale with uncertainty.
Contribution
It introduces a method for controlling network ensembles under uncertainty, demonstrating that control costs remain finite with bounded uncertainty across many network realizations.
Findings
Control cost remains finite with bounded uncertainty.
Control energy scales with the number of realizations.
Validated in biological and synthetic network examples.
Abstract
The field of optimal control typically requires the assumption of perfect knowledge of the system one desires to control, which is an unrealistic assumption for biological systems, or networks, typically affected by high levels of uncertainty. Here, we investigate the minimum energy control of network ensembles, which may take one of a finite number of possible realizations. We ensure the controller derived can perform the desired control with a tunable amount of accuracy and we study how the control energy and the overall control cost scale with the number of possible realizations. We verify the theory in three examples of interest: a unidirectional chain network with uncertain edge weights and self-loop weights, a network where each edge weight is drawn from a given distribution, and the Jacobian of the dynamics corresponding to the cell signaling network of autophagy in the presence…
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