April 7 - 11, 2025
Seattle, Washington
Symposium Supporters
2025 MRS Spring Meeting & Exhibit
SF01.01.03

Machine Learning-Assisted 3D Printing of Thermoelectric Materials of Ultrahigh Performances at Room Temperature

When and Where

Apr 7, 2025
11:00am - 11:15am
Summit, Level 3, Room 348

Presenter(s)

Co-Author(s)

Kaidong Song1,Guoyue Xu1,Ali Newaz Mohammad Tanvir1,Tengfei Luo1,Yanliang Zhang1

University of Notre Dame1

Abstract

Kaidong Song1,Guoyue Xu1,Ali Newaz Mohammad Tanvir1,Tengfei Luo1,Yanliang Zhang1

University of Notre Dame1
Thermoelectric energy conversion is an attractive technology for generating electricity from waste heat and using electricity for solid-state cooling. However, conventional manufacturing processes for thermoelectric devices are costly and limited to simple device geometries. This work reports an extrusion printing method to fabricate high-performance thermoelectric materials with complex 3D architectures. By integrating high-throughput experimentation and Bayesian optimization (BO), our approach significantly accelerates the simultaneous search for the optimal ink formulation and printing parameters that deliver high thermoelectric performances while maintaining desired shape fidelity. A Gaussian process regression (GPR)-based machine learning model is employed to expeditiously predict thermoelectric power factor as a function of ink formulation and printing parameters. The printed bismuth antimony telluride (BiSbTe)-based thermoelectric materials under the optimized conditions exhibit an ultrahigh room temperature zT of 1.3, which is by far the highest in the printed thermoelectric materials. The machine learning-guided ink-based printing strategy can be easily generalized to a wide range of functional materials and devices for broad technological applications.

Keywords

additive manufacturing

Symposium Organizers

Yee Kan Koh, National University of Singapore
Zhiting Tian, Cornell University
Tianli Feng, University of Utah
Hyejin Jang, Seoul National University

Session Chairs

Jun Liu
Wee-Liat Ong

In this Session