In the present paper non-convex multi-objective parameter optimization problems are considered which are governed by elliptic parametrized partial differential equations (PDEs). To solve these problems numerically the Pascoletti-Serafini scalarization is applied and the obtained scalar optimization problems are solved by an augmented Lagrangian method. However, due to the PDE constraints, the numerical solution is very expensive so that a model reduction is utilized by using the reduced basis (RB) method. The quality of the RB approximation is ensured by a trust-region strategy which does not require any offline procedure, where the RB functions are computed in a greedy algorithm. Moreover, convergence of the proposed method is guaranteed. Numerical examples illustrate the efficiency of the proposed solution technique.
翻译:在本文件中,考虑的是非convex多目标参数优化问题,这些问题由椭圆顶对齐部分差异方程式(PDEs)处理。为了从数字上解决这些问题,采用了Pascoletti-Serafini 的缩放法,通过扩大拉格朗加法解决所获得的缩放优化问题。然而,由于PDE的局限性,数字解决方案非常昂贵,因此通过使用缩小基数(RB)法来使用模型削减。RB近似的质量通过信任区域战略得到保证,而信任区域战略不需要任何离线程序,因为RB函数是用贪婪算法计算的。此外,还保证了拟议方法的趋同性。数字示例说明了拟议解决方案技术的效率。