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首页> 外文期刊>IEEE Transactions on Signal Processing >Robust Array Beamforming With Sidelobe Control Using Support Vector Machines
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Robust Array Beamforming With Sidelobe Control Using Support Vector Machines

机译:使用支持向量机的带有旁瓣控制的鲁棒阵列波束成形

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Robust beamforming is a challenging task in a number of applications (radar, sonar, wireless communications, etc.) due to strict restrictions on the number of available snapshots, signal mismatches, or calibration errors. We present a new approach to adaptive beamforming that provides increased robustness against the mismatch problem as well as additional control over the sidelobe level. We generalize the conventional linearly constrained minimum variance cost function by including a regularization term that penalizes differences between the actual and the target (ideal) array responses. By using the so-called epsi-insensitive loss function for the penalty term, the final cost function adopts the form of a support vector machine (SVM) for regression. In particular, the resulting cost function is convex with a unique global minimum that has traditionally been found using quadratic programming (QP) techniques. To alleviate the computational cost of conventional QP techniques, we use an iterative reweighted least-squares (IRWLS) procedure, which also converges to the SVM solution. Computer simulations demonstrate an improved performance of the proposed SVM-based beamformer, in comparison with other recently proposed robust beamforming techniques
机译:由于对可用快照的数量,信号失配或校准错误有严格的限制,因此在许多应用(雷达,声纳,无线通信等)中,强大的波束成形是一项具有挑战性的任务。我们提出了一种新的自适应波束成形方法,该方法可增强针对失配问题的鲁棒性以及对旁瓣电平的额外控制。我们通过包括惩罚实际和目标(理想)阵列响应之间的差异的正则化项来概括常规的线性约束最小方差成本函数。通过对惩罚项使用所谓的epsi不敏感损失函数,最终成本函数采用支持向量机(SVM)的形式进行回归。特别是,生成的成本函数具有唯一全局最小值的凸性,而该最小值是传统上使用二次规划(QP)技术发现的。为了减轻常规QP技术的计算成本,我们使用迭代的加权最小二乘(IRWLS)过程,该过程也收敛于SVM解决方案。与其他最近提出的健壮波束形成技术相比,计算机仿真证明了所提出的基于SVM的波束形成器的性能有所提高

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