In this work we propose reduced order methods as a reliable strategy to efficiently solve parametrized optimal control problems governed by shallow waters equations in a solution tracking setting. The physical parametrized model we deal with is nonlinear and time dependent: this leads to very time consuming simulations which can be unbearable e.g. in a marine environmental monitoring plan application. Our aim is to show how reduced order modelling could help in studying different configurations and phenomena in a fast way. After building the optimality system, we rely on a POD-Galerkin reduction in order to solve the optimal control problem in a low dimensional reduced space. The presented theoretical framework is actually suited to general nonlinear time dependent optimal control problems. The proposed methodology is finally tested with a numerical experiment: the reduced optimal control problem governed by shallow waters equations reproduces the desired velocity and height profiles faster than the standard model, still remaining accurate.
翻译:在这项工作中,我们提出减少定序方法,作为在解决方案跟踪环境中有效解决浅水方程式所制约的表面水方程式最佳控制问题的可靠战略。我们处理的物理平衡模型不线性和时间依赖性:这导致非常耗时的模拟,例如海洋环境监测计划应用中可以忍受。我们的目的是显示减少定序模型如何有助于快速研究不同的配置和现象。在建立优化系统之后,我们依靠减少POD-Galerkin来解决低维度缩小空间的最佳控制问题。提出的理论框架实际上适合一般的非线性时间依赖最佳控制问题。最后,对拟议方法进行了数字试验:由浅水方程式所制约的最佳控制问题减少了,其速度和高度都比标准模型更快,仍然精确。