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General Optimized Design of E-Plane Waveguide Butler Matrix with Non-2n Beams Based on FFT

Bin-Yu Han, Xiang-Yun Chen,Jin-Dong Zhang,Wen Wu,Jing-Yi Zhang, Da-Gang Fang

IEEE Transactions on Antennas and Propagation(2024)

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Abstract
The Butler matrix is a well-known beamforming network (BFN) for antenna arrays that can achieve multi-orthogonal beams with the number of ports typically limited to 2 n . Current methods to achieve non-2 n ports are mainly based on additional power distribution networks or modifications of the directional coupler, resulting in larger sizes and higher insertion loss. This paper presents a generalized design procedure of the Butler matrix with arbitrary positive integer beams, including arbitrary non-2 n beams, based on the Fast Fourier Transform (FFT) algorithm. By making the transmission matrix of the Butler matrix equal to the target matrix, the parameters of each device in the network structure can be determined. Thanks to the feature of FFT, the proposed Butler matrix structure is compact, and the design procedure is general. The design procedure of Butler matrices for N = 5, 6, and 7 is presented as examples. To show the effectiveness of the proposed procedure, a prototype of the Butler matrix operating at Ku -band is designed and fabricated to feed an array. The E-plane waveguide feed network is used to achieve the low insertion loss and small size. The measured S-parameters are better than -10 dB, the insertion loss is less than 1.2 dB, the phase imbalance is ± 8.3°, and the steering angles are 0°, ± 22°, and ± 46°, respectively. The measured results are in good agreement with the simulated results.
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Key words
Butler matrix,non-2 n beams,fast Fourier transform (FFT),E-plane waveguide,beamforming network (BFN)
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