Dynamic Decision Making in Engineering System Design: A Deep Q-Learning Approach
Giahi, Ramin, MacKenzie, Cameron A., Bijari, Reyhaneh
–arXiv.org Artificial Intelligence
Engineering system design, viewed as a decision-making process, faces challenges due to complexity and uncertainty. In this paper, we present a framework proposing the use of the Deep Q-learning algorithm to optimize the design of engineering systems. We outline a step-by-step framework for optimizing engineering system designs. The goal is to find policies that maximize the output of a simulation model given multiple sources of uncertainties. The proposed algorithm handles linear and non-linear multi-stage stochastic problems, where decision variables are discrete, and the objective function and constraints are assessed via a Monte Carlo simulation. We demonstrate the effectiveness of our proposed framework by solving two engineering system design problems in the presence of multiple uncertainties, such as price and demand.
arXiv.org Artificial Intelligence
Dec-28-2023
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