Deep-learning-assisted reconfigurable metasurface antenna for real-time holographic beam steering

arXiv:2406.14585v116 citations
Originality Highly original
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This enables real-time operation of holographic antennas for applications like wireless communications, representing a strong specific gain in control speed.

The paper tackles the problem of slow iterative methods for determining metasurface antenna configurations by introducing a deep learning algorithm that combines an autoencoder with electromagnetic scattering equations, achieving a computing time of under 200 microseconds for real-time holographic beam steering.

We propose a metasurface antenna capable of real time holographic beam steering. An array of reconfigurable dipoeles can generate on demand far field patterns of radiation through the specific encoding of meta atomic states. i.e., the configuration of each dipole. Suitable states for the generation of the desired patterns can be identified using iteartion, but this is very slow and needs to be done for each far field pattern. Here, we present a deep learning based method for the control of a metasurface antenna with point dipole elements that vary in their state using dipole polarizability. Instead of iteration, we adopt a deep learning algorithm that combines an autoencoder with an electromagnetic scattering equation to determin the states required for a target far field pattern in real time. The scattering equation from Born approximation is used as the decoder in training the neural network, and analytic Green's function calculation is used to check the validity of Born approximation. Our learning based algorithm requires a computing time of within in 200 microseconds to determine the meta atomic states, thus enabling the real time opeartion of a holographic antenna.

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