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Kinematic state estimation of air-borne targets using frequency-weighted Kalman filter aided by artificial neural networks

机译:人工神经网络辅助的频率加权卡尔曼滤波在机载目标运动状态估计中的应用

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Estimation of target kinematic state by using a frequency-weighted Kalman filter (FWKF) to obviate the effect of high frequency noise components in estimates has been reported in Bhattacharya, S et al. (2003), Ananthasayanam, MR et al. (2003). However, this introduces phase lag in estimates, which may jeopardize the stability of the guidance system. Again, a target-tracking algorithm employing an artificial neural network (ANN) in cascade with a standard Kalman filter (SKF) has recently been presented in Bhattacharya, S et al. (2003), Bhattacharya, S et al., (2004). It has been shown that the proposed KF-ANN algorithm is promising in improving the quality of estimates without introducing any appreciable lag in the estimates. In the present paper, a synergic approach of KF-ANN and FWKF has been proposed, whereby the estimates from FWKF are post-processed by employing an appropriately trained ANN. The comparative results of SKF, FWKF and FWKF-ANN show remarkable improvement in the proposed FWKF-ANN. The estimates from FWKF-ANN in one hand have reduced high frequency error as compared to KF-ANN, and on the other hand do not contribute significant lag in the estimates as in FWKF, and thus fulfills the desired properties of an estimation algorithm required by advanced guidance system.
机译:在Bhattacharya,S等人中已经报道了通过使用频率加权卡尔曼滤波器(FWKF)来消除估计中的高频噪声分量的影响来估计目标运动状态。 (2003年),Ananthasayanam,MR等。 (2003)。但是,这会在估计中引入相位滞后,这可能会损害制导系统的稳定性。再次,最近在Bhattacharya,S等人提出了一种采用人工神经网络(ANN)与标准卡尔曼滤波器(SKF)级联的目标跟踪算法。 (2003),Bhattacharya,S等,(2004)。已经表明,所提出的KF-ANN算法有望在不增加任何明显的滞后的情况下提高估计的质量。在本文中,提出了一种KF-ANN和FWKF的协同方法,从而通过采用经过适当培训的ANN对来自FWKF的估计进行后处理。在拟议的FWKF-ANN中,SKF,FWKF和FWKF-ANN的比较结果显示出显着的改进。与KF-ANN相比,FWKF-ANN的估计一方面减少了高频误差,另一方面,与FWKF一样,在估计中没有显着滞后,因此满足了FWKF-ANN所要求的估计算法的特性。先进的制导系统。

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