A Pessimistic Bilevel Stochastic Problem for Elastic Shape Optimization

03/03/2021
by   Johanna Burtscheidt, et al.
0

We consider pessimistic bilevel stochastic programs in which the follower maximizes over a fixed compact convex set a strictly convex quadratic function, whose Hessian depends on the leader's decision. The resulting random variable is evaluated by a convex risk measure. Under assumptions including real analyticity of the lower-level goal function, we prove existence of optimal solutions. We discuss an alternate model where the leader hedges against optimal lower-level solutions, and show that in this case solvability can be guaranteed under weaker conditions both in a deterministic and in a stochastic setting. The approach is applied to a mechanical shape optimization problem in which the leader decides on an optimal material distribution to minimize a tracking-type cost functional, whereas the follower chooses forces from an admissible set to maximize a compliance objective. The material distribution is considered to be stochastically perturbed in the actual construction phase. Computational results illustrate the bilevel optimization concept and demonstrate the interplay of follower and leader in shape design and testing.

READ FULL TEXT

page 12

page 13

page 14

page 16

research
02/28/2020

On Material Optimisation for Nonlinearly Elastic Plates and Shells

This paper investigates the optimal distribution of hard and soft materi...
research
02/28/2020

On Material Optimisation for Nonlinearly ElasticPlates and Shells

This paper investigates the optimal distribution of hard and soft materi...
research
11/24/2022

Solving Bilevel Knapsack Problem using Graph Neural Networks

The Bilevel Optimization Problem is a hierarchical optimization problem ...
research
05/24/2019

Leader Stochastic Gradient Descent for Distributed Training of Deep Learning Models

We consider distributed optimization under communication constraints for...
research
06/26/2022

Stackelberg Risk Preference Design

Risk measures are commonly used to capture the risk preferences of decis...
research
09/20/2022

A Machine Learning Approach to Solving Large Bilevel and Stochastic Programs: Application to Cycling Network Design

We present a novel machine learning-based approach to solving bilevel pr...
research
11/17/2018

Optimal Allocations for Sample Average Approximation

We consider a single stage stochastic program without recourse with a st...

Please sign up or login with your details

Forgot password? Click here to reset