TY - JOUR
T1 - Design of Sparse Antenna Array Using Physics-Aware Generative Adversarial Network
AU - Wang, Can
AU - Zhang, Yanming
AU - Gao, Steven
AU - Liu, Wei
N1 - Publisher Copyright:
© 1963-2012 IEEE.
PY - 2025/5
Y1 - 2025/5
N2 - An unsupervised machine learning method, referred to as the physics-aware generative adversarial network (PAGAN), is proposed for synthesizing a desired beam pattern by optimizing and configuring the feeding for each element, array spacing, and number of elements. By merging the related physical formulas for antenna synthesis into the loss function, the physics-aware neural network (PANN) generates the solution space, comprising the amplitude and phase of the array factor; then, the confrontation between expected and predicted beam patterns directs PAGAN with the PANN module to produce the desired radiation pattern. In the process, we integrate physical information and penalty terms to improve physical interpretability and guide the model toward consistent physical solutions, respectively. In addition, a new masking and encoding technique is established to guarantee the continuity of differentiation in the solution space and handle variable-length inputs. As shown by numerical examples, compared with existing methods, our proposed unsupervised machine learning method achieves the desired radiation pattern with fewer antennas automatically and in a faster and more efficient way.
AB - An unsupervised machine learning method, referred to as the physics-aware generative adversarial network (PAGAN), is proposed for synthesizing a desired beam pattern by optimizing and configuring the feeding for each element, array spacing, and number of elements. By merging the related physical formulas for antenna synthesis into the loss function, the physics-aware neural network (PANN) generates the solution space, comprising the amplitude and phase of the array factor; then, the confrontation between expected and predicted beam patterns directs PAGAN with the PANN module to produce the desired radiation pattern. In the process, we integrate physical information and penalty terms to improve physical interpretability and guide the model toward consistent physical solutions, respectively. In addition, a new masking and encoding technique is established to guarantee the continuity of differentiation in the solution space and handle variable-length inputs. As shown by numerical examples, compared with existing methods, our proposed unsupervised machine learning method achieves the desired radiation pattern with fewer antennas automatically and in a faster and more efficient way.
KW - array antenna
KW - Array synthesis
KW - cost reduction
KW - physics-aware GAN (PAGAN)
KW - sparse array
UR - https://www.scopus.com/pages/publications/105005773413
U2 - 10.1109/TAP.2025.3570528
DO - 10.1109/TAP.2025.3570528
M3 - Journal article
AN - SCOPUS:105005773413
SN - 0018-926X
JO - IEEE Transactions on Antennas and Propagation
JF - IEEE Transactions on Antennas and Propagation
ER -