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arxiv: 1804.07565 · v1 · pith:GXVVAQQHnew · submitted 2018-04-20 · 🧮 math.OC · math.AP

Moments and convex optimization for analysis and control of nonlinear partial differential equations

classification 🧮 math.OC math.AP
keywords nonlinearapproachcontrolanalysisconvexsdpssolutionsbounds
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This work presents a convex-optimization-based framework for analysis and control of nonlinear partial differential equations. The approach uses a particular weak embedding of the nonlinear PDE, resulting in a linear equation in the space of Borel measures. This equation is then used as a constraint of an infinite-dimensional linear programming problem (LP). This LP is then approximated by a hierarchy of convex, finite-dimensional, semidefinite programming problems (SDPs). In the case of analysis of uncontrolled PDEs, the solutions to these SDPs provide bounds on a specified, possibly nonlinear, functional of the solutions to the PDE; in the case of PDE control, the solutions to these SDPs provide bounds on the optimal value of a given optimal control problem as well as suboptimal feedback controllers. The entire approach is based purely on convex optimization and does not rely on spatio-temporal gridding, even though the PDE addressed can be fully nonlinear. The approach is applicable to a very broad class nonlinear PDEs with polynomial data. Computational complexity is analyzed and several complexity reduction procedures are described. Numerical examples demonstrate the approach.

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  1. Duality of convex relaxations for constrained variational problems

    math.OC 2019-06 unverdicted novelty 5.0

    Proves weak and strong duality between function-space and measure-space convex relaxations of constrained variational problems, establishing their equivalence for SDP hierarchy computations when data are polynomial.