Jue Wang, Jiaqi Suo, Alex Chortos

This dataset is the supplementary material of an IEEE RAL paper named "Design of Fully Controllable and Continuous Programmable Surface Based on Machine Learning". It includes the z-displacement data derived from the FEA simulation, voltage input data derived from Matlab, and dataset for inverse application. The detailed description can be found in that paper.

Dataset Files

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[1] Jue Wang, "Training dataset of "Design of Fully Controllable and Continuous Programmable Surface Based on Machine Learning"", IEEE Dataport, 2021. [Online]. Available: http://dx.doi.org/10.21227/j49f-xh11. Accessed: Jan. 26, 2022.
@data{j49f-xh11-21,
doi = {10.21227/j49f-xh11},
url = {http://dx.doi.org/10.21227/j49f-xh11},
author = {Jue Wang },
publisher = {IEEE Dataport},
title = {Training dataset of "Design of Fully Controllable and Continuous Programmable Surface Based on Machine Learning"},
year = {2021} }
TY - DATA
T1 - Training dataset of "Design of Fully Controllable and Continuous Programmable Surface Based on Machine Learning"
AU - Jue Wang
PY - 2021
PB - IEEE Dataport
UR - 10.21227/j49f-xh11
ER -
Jue Wang. (2021). Training dataset of "Design of Fully Controllable and Continuous Programmable Surface Based on Machine Learning". IEEE Dataport. http://dx.doi.org/10.21227/j49f-xh11
Jue Wang, 2021. Training dataset of "Design of Fully Controllable and Continuous Programmable Surface Based on Machine Learning". Available at: http://dx.doi.org/10.21227/j49f-xh11.
Jue Wang. (2021). "Training dataset of "Design of Fully Controllable and Continuous Programmable Surface Based on Machine Learning"." Web.
1. Jue Wang. Training dataset of "Design of Fully Controllable and Continuous Programmable Surface Based on Machine Learning" [Internet]. IEEE Dataport; 2021. Available from : http://dx.doi.org/10.21227/j49f-xh11
Jue Wang. "Training dataset of "Design of Fully Controllable and Continuous Programmable Surface Based on Machine Learning"." doi: 10.21227/j49f-xh11