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Synthesis of planar sparse arrays by perturbed compressive sampling framework

机译:扰动压缩采样框架合成平面稀疏阵列

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摘要

Recently, compressive sensing (CS) theory has been applied for synthesising maximally sparse arrays, in which the best subset of sampling element locations is chosen to compose a sparse array for matching a desired radiation pattern. However, their performances are strongly depended on the proper setting of the initial sampling locations, which are typically obtained by gridding the continuous array aperture. Such a setting is usually hard to handle for large planar array synthesis. To address this problem, a precision and effective method based on the perturbed compressive sampling (PCS) is proposed. Position perturbation variables are augmented to the traditional CS-based model, which allow continuous element placement. Then, a joint sparse recovery approach is used to optimise the excitations and position perturbations of the elements simultaneously. Moreover, the authors implement an extended PCS model with a secondary grid strategy to reduce the modelling error and the computational cost. The proposed design problem is solved with a general sparse recovery solver, named FOCal under-determined system solver. Numerical results show that the method yields a higher array sparsity, a faster computational speed and a better pattern matching accuracy than the existing CS-based methods.
机译:最近,压缩感测(CS)理论已被用于合成最大稀疏阵列,其中选择采样元素位置的最佳子集以组成一个稀疏阵列以匹配所需的辐射图。但是,它们的性能在很大程度上取决于初始采样位置的正确设置,通常通过对连续阵列孔径进行网格化来获得初始采样位置。对于大型平面阵列合成,通常很难处理这种设置。为了解决这个问题,提出了一种基于扰动压缩采样(PCS)的精确有效的方法。位置扰动变量增加到传统的基于CS的模型,该模型允许连续放置元素。然后,使用联合稀疏恢复方法来同时优化元素的激发和位置扰动。此外,作者使用辅助网格策略实现了扩展的PCS模型,以减少建模误差和计算成本。提出的设计问题使用通用的稀疏恢复求解器FOCal欠定系统求解器解决。数值结果表明,与现有的基于CS的方法相比,该方法具有更高的阵列稀疏性,更快的计算速度和更好的模式匹配精度。

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