Exploring epidemic control policies using nonlinear programming and mathematical models
Sandra Montes-Olivas, Adam J. Kucharski, Michael B. Gravenor, Simon D.W. Frost

TL;DR
This paper explores the use of nonlinear programming and direct optimal control methods to determine effective epidemic intervention strategies, offering a potentially more robust and adaptable alternative to traditional indirect methods.
Contribution
It demonstrates the feasibility and robustness of applying nonlinear programming solvers to epidemic models for optimizing intervention strategies in real-time.
Findings
NLP solvers effectively determine optimal interventions for epidemic control.
Direct methods are more robust and adaptable than indirect approaches.
Multi-objective optimization balances various intervention goals.
Abstract
Optimal control theory in epidemiology has been used to establish the most effective intervention strategies for managing and mitigating the spread of infectious diseases while considering constraints and costs. Using Pontryagin's Maximum Principle, indirect methods provide necessary optimality conditions by transforming the control problem into a two-point boundary value problem. However, these approaches are often sensitive to initial guesses and can be computationally challenging, especially when dealing with complex constraints. In contrast, direct methods, which discretise the optimal control problem into a nonlinear programming (NLP) formulation, could offer robust, adaptable solutions for real-time decision-making. Despite their potential, the widespread adoption of these techniques has been limited, which may be due to restricted access to specialised software, perceived high…
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