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External control of a genetic toggle switch via Reinforcement Learning (2204.04972v1)
Published 11 Apr 2022 in eess.SY, cs.LG, cs.SY, q-bio.MN, and q-bio.QM
Abstract: We investigate the problem of using a learning-based strategy to stabilize a synthetic toggle switch via an external control approach. To overcome the data efficiency problem that would render the algorithm unfeasible for practical use in synthetic biology, we adopt a sim-to-real paradigm where the policy is learnt via training on a simplified model of the toggle switch and it is then subsequently exploited to control a more realistic model of the switch parameterized from in-vivo experiments. Our in-silico experiments confirm the viability of the approach suggesting its potential use for in-vivo control implementations.