NANADec 27, 2018

A high-order partitioned solver for general multiphysics problems and its applications in optimization

arXiv:1812.118532 citationsh-index: 40
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This work provides a novel method for gradient-based optimization of coupled multiphysics systems, enabling efficient and accurate design optimization for engineers.

The paper presents a high-order adjoint-based optimization framework for unsteady multiphysics problems using a partitioned solver, enabling exact gradient computation. It demonstrates the framework on two fluid-structure interaction problems, achieving accurate optimization results.

A high-order accurate adjoint-based optimization framework is presented for unsteady multiphysics problems. The fully discrete adjoint solver relies on the high-order, linearly stable, partitioned solver introduced in [1], where different subsystems are modeled and discretized separately. The coupled system of semi-discretized ordinary differential equations is taken as a monolithic system and partitioned using an implicit-explicit Runge-Kutta (IMEX-RK) discretization [2]. Quantities of interest (QoI) that take the form of space-time integrals are discretized in a solver-consistent manner. The corresponding adjoint equations are derived to compute exact gradients of QoI, which can be solved in a partitioned manner, i.e. subsystem-by-subsystem and substage-by-substage, thanks to the partitioned primal solver. These quantities of interest and their gradients are then used in the context of gradient-based PDE-constrained optimization. The present optimization framework is applied to two fluid-structure interaction problems: 1D piston problem with a three-field formulation and a 2D energy harvesting problem with a two-field formulation.

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