A novel clutter suppression method in ground penetrating radar (GPR) is proposed. The preliminary result is obtained by using target resolution improved processing (TRIP). The preliminary result will be used as an...A novel clutter suppression method in ground penetrating radar (GPR) is proposed. The preliminary result is obtained by using target resolution improved processing (TRIP). The preliminary result will be used as an initial input for TRIP iteration. All TRIP iteration steps are the adaptive linear combination of the previous TRIP result and the preliminary result. This adaptive combination strategy can balance clutter suppression and target information protection, which is considered as a troublesome contradiction and a chronic problem in clutter suppression research. When the matrix entropy of iteration result converges, the algorithm can achieve a good result both in clutter suppression and target protection. Experimental results demonstrate that the new algorithm outperforms the existing approaches.展开更多
Integrated sensing and communication(ISAC)is regarded as a pivotal technology for 6G communication.In this paper,we employ Kullback-Leibler divergence(KLD)as the unified performance metric for ISAC systems and investi...Integrated sensing and communication(ISAC)is regarded as a pivotal technology for 6G communication.In this paper,we employ Kullback-Leibler divergence(KLD)as the unified performance metric for ISAC systems and investigate constellation and beamforming design in the presence of clutters.In particular,the constellation design problem is solved via the successive convex approximation(SCA)technique,and the optimal beamforming in terms of sensing KLD is proven to be equivalent to maximizing the signal-to-interference-plus-noise ratio(SINR)of echo signals.Numerical results demonstrate the tradeoff between sensing and communication performance under different parameter setups.Additionally,the beampattern generated by the proposed algorithm achieves significant clutter suppression and higher SINR of echo signals compared with the conventional scheme.展开更多
A new method combining space-time preprocessing with multistage Wiener filters(STPMWF)is proposed to improve the performance of space-time adaptive processing(STAP)in nonhomogeneous clutter scenario.The new scheme...A new method combining space-time preprocessing with multistage Wiener filters(STPMWF)is proposed to improve the performance of space-time adaptive processing(STAP)in nonhomogeneous clutter scenario.The new scheme only requires the data from the primary range bin,thus it can suppress discrete interferers efficiently,without calculating the inverse of covariance matrix.Comparing to the original MWF approach,the proposed scheme can be regarded as practical solutions for robust and effective STAP of nonhomogeneous radar data.The theoretical analysis shows that our STPMWF is simple in implementation and fast in convergence.The numeric results by using simulated data exhibit a good agreement with the proposed theory.展开更多
以无人机为代表的低慢小(Low,Slow and Small Targets,LSS)目标的检测在雷达探测中因杂波干扰而面临巨大挑战。为了解决低慢小目标杂波抑制问题,本文提出了一种将鲸鱼优化算法(Whale Optimization Algorithm,WOA)与变分模态分解(Variati...以无人机为代表的低慢小(Low,Slow and Small Targets,LSS)目标的检测在雷达探测中因杂波干扰而面临巨大挑战。为了解决低慢小目标杂波抑制问题,本文提出了一种将鲸鱼优化算法(Whale Optimization Algorithm,WOA)与变分模态分解(Variational Mode Decomposition,VMD)相结合的方法,该算法用WOA优化VMD的分解参数,以实现最佳的模态分离效果,有效分离出目标信号与杂波信号。实验结果表明,WOA-VMD方法在复杂环境下能够显著提升低慢小目标的检测概率,计算简单且误差较小,可以对多个目标以及不同多普勒频率大小的目标进行处理,优于传统的杂波抑制方法。展开更多
基金supported by the National Natural Science Foundation of China under Grant No. 40976114the National 863 Program under Grant No. 2008AA121702-3
文摘A novel clutter suppression method in ground penetrating radar (GPR) is proposed. The preliminary result is obtained by using target resolution improved processing (TRIP). The preliminary result will be used as an initial input for TRIP iteration. All TRIP iteration steps are the adaptive linear combination of the previous TRIP result and the preliminary result. This adaptive combination strategy can balance clutter suppression and target information protection, which is considered as a troublesome contradiction and a chronic problem in clutter suppression research. When the matrix entropy of iteration result converges, the algorithm can achieve a good result both in clutter suppression and target protection. Experimental results demonstrate that the new algorithm outperforms the existing approaches.
基金supported in part by National Key R&D Program of China under Grant No.2021YFB2900200in part by National Natural Science Foundation of China under Grant Nos.U20B2039 and 62301032in part by China Postdoctoral Science Foundation under Grant No.2023TQ0028.
文摘Integrated sensing and communication(ISAC)is regarded as a pivotal technology for 6G communication.In this paper,we employ Kullback-Leibler divergence(KLD)as the unified performance metric for ISAC systems and investigate constellation and beamforming design in the presence of clutters.In particular,the constellation design problem is solved via the successive convex approximation(SCA)technique,and the optimal beamforming in terms of sensing KLD is proven to be equivalent to maximizing the signal-to-interference-plus-noise ratio(SINR)of echo signals.Numerical results demonstrate the tradeoff between sensing and communication performance under different parameter setups.Additionally,the beampattern generated by the proposed algorithm achieves significant clutter suppression and higher SINR of echo signals compared with the conventional scheme.
基金supported by the National Nature Science Foundation of China under Grant No. 60702070
文摘A new method combining space-time preprocessing with multistage Wiener filters(STPMWF)is proposed to improve the performance of space-time adaptive processing(STAP)in nonhomogeneous clutter scenario.The new scheme only requires the data from the primary range bin,thus it can suppress discrete interferers efficiently,without calculating the inverse of covariance matrix.Comparing to the original MWF approach,the proposed scheme can be regarded as practical solutions for robust and effective STAP of nonhomogeneous radar data.The theoretical analysis shows that our STPMWF is simple in implementation and fast in convergence.The numeric results by using simulated data exhibit a good agreement with the proposed theory.
文摘以无人机为代表的低慢小(Low,Slow and Small Targets,LSS)目标的检测在雷达探测中因杂波干扰而面临巨大挑战。为了解决低慢小目标杂波抑制问题,本文提出了一种将鲸鱼优化算法(Whale Optimization Algorithm,WOA)与变分模态分解(Variational Mode Decomposition,VMD)相结合的方法,该算法用WOA优化VMD的分解参数,以实现最佳的模态分离效果,有效分离出目标信号与杂波信号。实验结果表明,WOA-VMD方法在复杂环境下能够显著提升低慢小目标的检测概率,计算简单且误差较小,可以对多个目标以及不同多普勒频率大小的目标进行处理,优于传统的杂波抑制方法。