Machine Learning on Experimental Data for Optimizing Colloidal Quantum Dot Solar Cells

Program:

Electrical and Computer Engineering

Project Description:

In this project, we used machine learning models to assist in the characterization process of PbS colloidal quantum dot (CQD) solar cells. We performed spatially-resolved optoelectronic measurements and used experimental data to train a neural network to automatically predict several materials parameters.

Team Members

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Project Mentors, Sponsors, and Partners

  • Susanna Thon

Course Faculty

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