Zhong Lei, Li Yong, Cheng Wei, Zheng Yi
School of Electronics and Information, Northwestern Polytechnical University, Xi'an 710072, China.
Sensors (Basel). 2020 Jun 30;20(13):3669. doi: 10.3390/s20133669.
A novel robust particle filtering algorithm is proposed for updating both the waveform and noise parameter for tracking accuracy simultaneously and adaptively. The approach is a significant step for cognitive radar towards more robust tracking in random dynamic systems with unknown statistics. Meanwhile, as an intelligent sensor, it would be most desirable for cognitive radar to develop the application of a traditional filter to be adaptive and to expand the adaptation to a wider scope. In this paper, after analysis of the Bayesian bounds and the corresponding cost function design, we propose the cognitive radar tracking method based on a particle filter by completely reconstructing the propagation and the update process with a cognitive structure. Moreover, we develop the cost-reference particle filter based on optimizing the cost function design according to the complicated system or environment with unknown statistics. With this method, the update of the estimation cost and variance arrives at the approximate optimization, and the estimation error can be more adjacent to corresponding low bounds. Simulations about the tracking implementation in unknown noise are utilized to demonstrate the superiority of the proposed algorithm to the existing methods in traditional radar.
提出了一种新颖的鲁棒粒子滤波算法,用于同时自适应地更新波形和噪声参数,以提高跟踪精度。该方法是认知雷达在统计特性未知的随机动态系统中实现更鲁棒跟踪的重要一步。同时,作为一种智能传感器,认知雷达最希望将传统滤波器的应用发展为自适应的,并将自适应范围扩展到更广泛的领域。本文在分析贝叶斯边界和相应代价函数设计之后,通过用认知结构完全重构传播和更新过程,提出了基于粒子滤波器的认知雷达跟踪方法。此外,我们根据统计特性未知的复杂系统或环境优化代价函数设计,开发了代价参考粒子滤波器。通过这种方法,估计代价和方差的更新达到了近似最优,估计误差可以更接近相应的下界。利用在未知噪声中进行跟踪实现的仿真,证明了所提算法相对于传统雷达中现有方法的优越性。