DoHaiSon/ISDNN
Code for "ISDNN: A Deep Neural Network for Channel Estimation in Massive MIMO systems," Hanoi University of Industry Journal of Science and Technology, vol. 60, no. 11, pp. 48-54, Nov. 2024.
This project offers a deep learning method to improve channel estimation in large-scale wireless communication systems. It takes raw signal data from Massive MIMO setups and provides more accurate channel state information, which is crucial for optimizing data transmission. Communication engineers and researchers working on 5G and beyond wireless technologies would find this valuable.
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Use this if you are developing or simulating Massive MIMO systems and need a more precise way to estimate wireless channels to improve system performance.
Not ideal if you are working with non-MIMO or small-scale wireless communication systems, as this is specifically designed for Massive MIMO environments.
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Jupyter Notebook
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GPL-3.0
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Jan 16, 2025
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