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UPCOMING DISSERTATION DEFENSE: RANDALL KANIA

Author: Randall Kania

Date: Friday, October 28th, 2022 at 11:00 am

Location: Martin Hall, Room EGR-2164

Committee Members:

Professor Shapour Azarm, Chair
Professor Balakumar Balachandran
Professor Jin-Oh Hahn
Professor Jefferey Herrmann
Professor P.K. Kannan, Dean’s Representative

Title of Paper: “SINGLE- AND MULTI-OBJECTIVE FEASIBILITY ROBUST OPTIMIZATION UNDER INTERVAL UNCERTAINTY WITH SURROGATE MODELING”

Abstract: 

This dissertation presents new methodsfor solving single- and multi-objective
optimization problems when there is uncertainty in the values of decision variables and/or
parameters.The uncertainty in these problems is considered to come from sources with no
known or assumed probability distribution, bounded only by an interval. The goal is to obtain a single solution (for single-objective optimization problems) or multiple solutions (for multi-
objective optimization problems) that are optimal and “feasibly robust”. A feasibly robust solution is one that remainsfeasible for all values of uncertain parameters within the uncertainty
interval. Obtaining such a solution can become computationally costly and require many
function calls.To reduce the computational cost, the presented methods use surrogate modeling
to approximate the functions in the optimization problem. This dissertation aims at addressing several key research questions.

The first Research Question (RQ1) is: How can the computational cost for solving single-objective robust optimization problems be enhanced with surrogate modelling when compared to previous work? RQ2 is: How can the computational cost of solving bi-objective robust optimization problems be improved by using surrogates in concert with a Bayesian optimization technique when compared to previous work? And RQ3 is: How can surrogate modeling be leveraged to make multi-objective robust optimization computationally less expensive when compared to previous work?

In addressing RQ1, a new single-objective robust optimization method has been developed with improvements over an existing method from the literature. This method uses a deterministic, local solver, paired with a surrogate modelling technique for finding worst-case scenario of parameter configurations. Using this single-objective robust optimization method, improved scalability and robust feasibility were demonstrated. The second method presented solves bi-objective robust optimization problems under interval uncertainty by introducing a relaxation technique to facilitate combining iterative robust optimization and Bayesian optimization techniques. This method showed improved feasibility robustness and scalability over existing methods. The third method presented in this dissertation extends the current
literature by considering multiple (beyond two) competing objectivesfor surrogate robust
optimization. Increasing the number of objectives adds more dimensions and complexity to the
search for solutions and can greatly increase the computational costs. In the third method, the
robust optimization strategy from the bi-objective second method was combined with a new
Monte Carlo approximated method. The key contributions in this dissertation are 1) a new single-objective robust optimization method combining a local optimization solver and surrogate modelling for
robustness, 2) a bi-objective robust optimization method that employs iterative Bayesian optimization technique in tandem with iterative robust optimization techniques, and 3) a new acquisition function for robust optimization in problems of more than two objectives.