We consider a class of epidemiological models in which a compartmental linear system, including various categories of infected individuals (e.g. asymptomatic, symptomatic, quarantined), is fed back by a positive feedback, representing contagion. The positive feedback gain decreases (in a sort of negative feedback) as the epidemic evolves, due to the decrease in the number of susceptible individuals. We first propose a convergence result based on a special copositive Lyapunov function. Then, we address a major problem for this class of systems: the deep uncertainty affecting parameter values. We face the problem adopting techniques from optimal and robust control theory to assess the sensitivity of the model. For this class of systems, the optimal control solution has a peculiar decoupling property that no shooting procedure is required. Finally, we exploit the obtained bounds to assess the effectiveness of possible epidemic control strategies, including intermittent restrictions adopted during the COVID-19 pandemic.

Generalized epidemiological compartmental models: guaranteed bounds via optimal control / Blanchini, Franco; Bolzern, Paolo; Colaneri, Patrizio; De Nicolao, Giuseppe; Giordano, Giulia. - (2021), pp. 3532-3537. (Intervento presentato al convegno CDC 2021 tenutosi a Austin, Texas nel 13th-15th December 2021) [10.1109/CDC45484.2021.9683200].

Generalized epidemiological compartmental models: guaranteed bounds via optimal control

Giordano, Giulia
2021-01-01

Abstract

We consider a class of epidemiological models in which a compartmental linear system, including various categories of infected individuals (e.g. asymptomatic, symptomatic, quarantined), is fed back by a positive feedback, representing contagion. The positive feedback gain decreases (in a sort of negative feedback) as the epidemic evolves, due to the decrease in the number of susceptible individuals. We first propose a convergence result based on a special copositive Lyapunov function. Then, we address a major problem for this class of systems: the deep uncertainty affecting parameter values. We face the problem adopting techniques from optimal and robust control theory to assess the sensitivity of the model. For this class of systems, the optimal control solution has a peculiar decoupling property that no shooting procedure is required. Finally, we exploit the obtained bounds to assess the effectiveness of possible epidemic control strategies, including intermittent restrictions adopted during the COVID-19 pandemic.
2021
2021 60th IEEE Conference on Decision and Control (CDC)
Piscataway, NJ
Institute of Electrical and Electronics Engineers Inc.
978-1-6654-3659-5
9781665436601
Blanchini, Franco; Bolzern, Paolo; Colaneri, Patrizio; De Nicolao, Giuseppe; Giordano, Giulia
Generalized epidemiological compartmental models: guaranteed bounds via optimal control / Blanchini, Franco; Bolzern, Paolo; Colaneri, Patrizio; De Nicolao, Giuseppe; Giordano, Giulia. - (2021), pp. 3532-3537. (Intervento presentato al convegno CDC 2021 tenutosi a Austin, Texas nel 13th-15th December 2021) [10.1109/CDC45484.2021.9683200].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/340812
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