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Efficient synthesis of sparse arrays as the solution of an inversion problem within the bayesian compressive sensing framework

机译:高效合成稀疏数组,作为贝叶斯压缩感测框架内反演问题的解决方案

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Designing sparse arrays requires the solution of a nonlinear inversion problem because of the dependence of the radiation pattern on the locations and the weights of the array elements. Unfortunately, the design of sparse layouts is usually a very challenging problem with respect to the synthesis of their filled counterparts since, although convenient from several viewpoints, they usually present a reduced control of the arising beam shape, the peak sidelobe level (PSL) as well as the mainbeam width [1]–[17]. Accordingly, several design techniques have been proposed to suitably address these issues. The sparse array design techniques have been usually conceived either as the solution of a “thinning” problem where the functional depends on the array PSL [4]–[15], or as the selection of the element positions an weights which exhibit a target pattern [16]–[17]. While a large set of approaches have been introduced for thinning both linear and planar arrangements (e.g., random architectures [2], stochastic optimizers [4]–[11] and analytical methods [12]–[15]), few methodologies have been developed for the solution of the latter synthesis problem [14]–[16] although recently an innovative approach based on the formulation of the sparse array synthesis problem as a “Compressive Sensing (CS) retrieval” one has been presented [18]–[19]. Such a method formulates the synthesis inversion problem at hand by imposing suitable sparseness constraints as regularization terms, then re-casting it in a probabilistic framework exploiting the so-called Bayesian Compressive Sensing formulation [20]. Successively, the an efficient Relevance Vector Machine (RVM) is applied to determine the array synthesis unknowns [21].
机译:设计稀疏阵列需要解决非线性反演问题,因为辐射方向图取决于阵列元素的位置和权重。不幸的是,相对于其填充的对应物的合成,稀疏布局的设计通常是一个非常具有挑战性的问题,因为尽管从几个角度来看很方便,但它们通常会减少对所产生的波束形状(峰值旁瓣电平(PSL))的控制。以及主光束宽度[1] – [17]。因此,已经提出了几种设计技术来适当地解决这些问题。稀疏数组设计技术通常被认为是“稀疏”问题的解决方案,其功能取决于数组PSL [4] – [15],或者作为元素位置的选择,权重表现出目标模式[16] – [17]。虽然引入了许多方法来简化线性和平面排列(例如,随机体系结构[2],随机优化器[4]-[11]和分析方法[12]-[15]),但很少有方法论被采用为解决后一种综合问题而开发的[14]-[16],尽管最近提出了一种基于稀疏阵列综合问题的创新方法,即“压缩感测(CS)检索” [18]-[ 19]。这种方法通过施加适当的稀疏约束作为正则项来制定手头的综合反演问题,然后利用所谓的贝叶斯压缩感测公式将其重新投射到概率框架中[20]。紧接着,一个有效的相关向量机(RVM)被应用于确定阵列合成未知数[21]。

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