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Article
Interpretable deep learning for guided microstructure-property explorations in photovoltaics
npj Computational Materials
  • Balaji Sesha Sarath Pokuri, Iowa State University
  • Sambuddha Ghosal, Iowa State University
  • Apurva Kokate, Iowa State University
  • Soumik Sarkar, Iowa State University
  • Baskar Ganapathysubramanian, Iowa State University
Document Type
Article
Publication Version
Published Version
Publication Date
10-1-2019
DOI
10.1038/s41524-019-0231-y
Abstract

The microstructure determines the photovoltaic performance of a thin film organic semiconductor film. The relationship between microstructure and performance is usually highly non-linear and expensive to evaluate, thus making microstructure optimization challenging. Here, we show a data-driven approach for mapping the microstructure to photovoltaic performance using deep convolutional neural networks. We characterize this approach in terms of two critical metrics, its generalizability (has it learnt a reasonable map?), and its intepretability (can it produce meaningful microstructure characteristics that influence its prediction?). A surrogate model that exhibits these two features of generalizability and intepretability is particularly useful for subsequent design exploration. We illustrate this by using the surrogate model for both manual exploration (that verifies known domain insight) as well as automated microstructure optimization. We envision such approaches to be widely applicable to a wide variety of microstructure-sensitive design problems.

Comments

This article is published as Pokuri, Balaji Sesha Sarath, Sambuddha Ghosal, Apurva Kokate, Soumik Sarkar, and Baskar Ganapathysubramanian. "Interpretable deep learning for guided microstructure-property explorations in photovoltaics." npj Computational Materials 5 (2019): 95. DOI: 10.1038/s41524-019-0231-y. Posted with permission.

Creative Commons License
Creative Commons Attribution 4.0 International
Copyright Owner
Springer Nature
Language
en
File Format
application/pdf
Citation Information
Balaji Sesha Sarath Pokuri, Sambuddha Ghosal, Apurva Kokate, Soumik Sarkar, et al.. "Interpretable deep learning for guided microstructure-property explorations in photovoltaics" npj Computational Materials Vol. 5 (2019) p. 95
Available at: http://works.bepress.com/baskar-ganapathysubramanian/90/