
doi: 10.3934/mbe.2023239
pmid: 36896540
<abstract><p>A two-dimensional diffusion process is controlled until it enters a given subset of $ \mathbb{R}^2 $. The aim is to find the control that minimizes the expected value of a cost function in which there are no control costs. The optimal control can be expressed in terms of the value function, which gives the smallest value that the expected cost can take. To obtain the value function, one can make use of dynamic programming to find the differential equation it satisfies. This differential equation is a non-linear second-order partial differential equation. We find explicit solutions to this non-linear equation, subject to the appropriate boundary conditions, in important particular cases. The method of similarity solutions is used.</p></abstract>
dynamic programming, first-passage time, partial differential equation, QA1-939, diffusion processes, stochastic optimal control, TP248.13-248.65, Mathematics, Biotechnology
dynamic programming, first-passage time, partial differential equation, QA1-939, diffusion processes, stochastic optimal control, TP248.13-248.65, Mathematics, Biotechnology
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