Wei Chen ", Akshay Iyer'
1 Department of Mechanical Engineering, Northwestern University, Evanston, Illinois, USA
EXTENDED ABSTRACT: Material design often involves qualitative and quantitative design variables, which requires systematic methods for the exploration of these mixed-variable design spaces. Existing machine learning (ML) models that can handle mixed variables as inputs require a large amount of data but do not provide uncertainty quantification that is crucial for sequential (adaptive) design of experiments. We have developed a novel Latent triable Gaussian Process (LVGP) based ML approach that involves a latent variable (LV) representation of qualitative inputs, and automatically discovers a categorical-to-numerical nonlinear map that transforms the underlying high dimensional physical attributes into the LV space. The nonlinear mapping also provides an inherent ordering and structure for the levels of the qualitative factor(s), which leads to substantial insight and interpretable ML. In addition, LVGP provides uncertainty quantification of prediction which is critical for adaptive sampling to sequentially choose samples based on current observations and the method also offers easy integration with Bayesian optimization (BO) or other reinforcement learning strategies for the purpose of design optimization. Although recent developments in mixed-variable Bayesian optimization have shown promise, high dimensional qualitative variables, i.e., with many levels, impose a large design cost as they typically require a larger dataset to quantify the effect of each level on the optimization objective. We develop a descriptor aided Bayesian optimization approach to address this challenge by leveraging domain knowledge about underlying physical descriptors. We show that physical descriptors can be intuitively embedded into the LVGP approach and used to selectively explore levels of qualitative variables in the Bayesian optimization framework. Using material design examples, we will show that our LVGP approach is robust to certain types of incomplete domain knowledge and significantly reduces the design cost for problems with high-dimensional qualitative variables.
Keywords: Material design, Latent Variable Gaussian Process, Mixed Variables, Descriptors, Bayesian optimization
Dr. Wei Chen is the Wilson-Cook Professor in Engineering Design and Chair of Department of Mechanical Engineering at Northwestern University. Directing the Integrated DEsign Automation Laboratory (IDEAL- http://ideal.mech.northwestem.edu/), her current research involves issues such as simulation-based design under uncertainty; model validation and uncertainty quantification; data science in design and advanced manufacturing; stochastic multiscale analysis and materials design; design of metamaterials; multidisciplinary design optimization; consumer choice modeling and decision-based design. Dr. Chen is an elected member of the National Academy of Engineering (NAE) and currently serving as the Editor-in- chief of the ASME Journal of Mechanical Design and the President of the International Society of Structural and Multidisciplinary Design (ISSMO). In the past, she served as the Chair of the ASME Design Engineering Division (DED). Dr. Chen is the recipient of the 2022 Engineering Science Medal from the Society of Engineering Science (SES), ASME Pi Tau Sigma Charles Russ Richards Memorial Award (2021), ASME Design Automation Award (2015), Intelligent Optimal Design Prize (2005), ASME Pi Tau Sigma Gold Medal achievement award (1998), and the NSF Faculty Career Award (1996). She received her Ph.D. from the Georgia Institute of Technology in 1995.