Space-time interference suppression technology based on sub-band blind adaptive array processing

Ping Lai, Ruimin Lu, Yunzhi Liu
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引用次数: 5

Abstract

In the traditional Space-Time Adaptive Processing (STAP), adaptive algorithms require signal information so that lack real-time performance and the array processing techniques are not only of high complexity but also suffer from inadequate anti-jammer capability. In order to solve these problems, a subband blind adaptive array processing algorithm is proposed in this paper, which applies the space-time interference suppression technology to Direct Sequence Spread Spectrum (DSSS) system. For one thing, compared to the pure space-domain processing, Sub-band adaptive array (SBAA) greatly increases the freedoms of degree. For another, it also simplifies algorithm complexity relative to Tapped-delay-line adaptive array (TDLAA) structure of traditional STAP. The proposed sub-band blind adaptive array algorithm can provide higher convergence speed and better convergence accuracy with low algorithm complexity. Furthermore, the novel algorithm doesn't need training sequences, increasing the ability of tracing signal changes in real time. Simulation results show that the novel space-time interference suppression scheme exhibits a better anti-jamming performance.
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基于子带盲自适应阵列处理的空时干扰抑制技术
在传统的空时自适应处理(STAP)中,自适应算法需要信号信息,实时性差,阵列处理技术不仅复杂度高,而且抗干扰能力不足。为了解决这些问题,本文提出了一种子带盲自适应阵列处理算法,该算法将空时干扰抑制技术应用于直接序列扩频系统。首先,与纯空域处理相比,子带自适应阵列(SBAA)极大地提高了自由度。另一方面,相对于传统STAP的抽头延迟线自适应阵列(TDLAA)结构,简化了算法复杂度。提出的子带盲自适应阵列算法具有较快的收敛速度和较好的收敛精度,且算法复杂度较低。此外,该算法不需要训练序列,提高了实时跟踪信号变化的能力。仿真结果表明,该空时干扰抑制方案具有较好的抗干扰性能。
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