Wideband Monostatic RCS Prediction of Complex Objects using Support Vector Regression and Grey-wolf Optimizer

Zhourui Zhang, Pengyuan Wang, Mang He

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摘要

– This paper presents a method based on the support vector regression (SVR) model and grey wolf optimizer (GWO) algorithm to efficiently predict the monostatic radar cross-section (mono-RCS) of complex objects over a wide angular range and frequency band. Using only a small-size of the mono-RCS data as the training set to construct the SVR model, the proposed method can predict accurate mono-RCS of complex objects under arbitrary incident angle over the entire three-dimensional space. In addition, the wideband prediction capability of the method is significantly enhanced by incorporating the meta-heuristic algorithm GWO. Numerical experiments verify the efficiency and accuracy of the proposed SVR-GWO model over a wide frequency band.

源语言英语
页(从-至)609-615
页数7
期刊Applied Computational Electromagnetics Society Journal
38
8
DOI
出版状态已出版 - 8月 2023

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Zhang, Z., Wang, P., & He, M. (2023). Wideband Monostatic RCS Prediction of Complex Objects using Support Vector Regression and Grey-wolf Optimizer. Applied Computational Electromagnetics Society Journal, 38(8), 609-615. https://doi.org/10.13052/2023.ACES.J.380808