@article{Clayton Fowler_Sensong An_Bowen Zheng_Hong Tang_Hang Li_Wei Guo_Hualiang Zhang_2020, title={Deep Neural Network Inverse-Design for Long Wave Infrared Hyperspectral Imaging}, volume={35}, url={https://journals.riverpublishers.com/index.php/ACES/article/view/7533}, abstractNote={<p>This paper presents a deep learning approach for the inverse-design of metal-insulator-metal metasurfaces for hyperspectral imaging applications. Deep neural networks are able to compensate for the complex interactions between electromagnetic waves and metastructures to efficiently produce design solutions that would be difficult to obtain using other methods. Since electromagnetic spectra are sequential in nature, recurrent neural networks are especially suited for relating such spectra to structural parameters.</p>}, number={11}, journal={The Applied Computational Electromagnetics Society Journal (ACES)}, author={Clayton Fowler and Sensong An and Bowen Zheng and Hong Tang and Hang Li and Wei Guo and Hualiang Zhang}, year={2020}, month={Nov.}, pages={1336–1337} }