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Online estimation of transition probabilities for nonlinear discrete time systems

机译:在线估计非线性离散时间系统的转移概率

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Since the Markov transition probability matrix (MTPM) in the interactive multiple model (IMM) based on the unscented Kalman filter (UKF) is a constant value, the IMMUKF algorithm can't exactly describe the transition probability of each model and produce lots of error in the result. Taking account of this situation, in this paper, a novel method which combines the posterior Cramer-Rao lower bound (PCRLB) with the likelihood ratio is proposed to improve tracking accuracy. PCRLB is calculated by mean and covariance of the estimated online state. The residual covariance that can be used to calculate the likelihood function of each model is updated by substituting PCRLB for the filtering error covariance matrix of UKF. Real-time estimation of MTPM can be obtained according to updated likelihood function and likelihood ratio, and then applied in IMMUKF. An adaptive MTPM IMMUKF algorithm can be obtained. Finally, to verify the correctness and validity, the proposed method is applied to a missile trajectory tracking. The root-mean-square (RMS) error is used as a performance evaluation index. The simulation results show that the proposed algorithm outperforms the IMMUKF algorithm and achieves a RMS tracking performance which is quite close to the PCRLB.
机译:由于基于Unscented Kalman滤波器(UNF)的交互式多模型(IMM)中的Markov转换概率矩阵(MTPM)是恒定值,因此Immukf算法无法精确描述每个模型的转换概率并产生大量错误结果。考虑到这种情况,本文提出了一种与似然比相结合的后克拉姆 - RAO下限(PCRLB)的新方法,以提高跟踪精度。 PCRLB是通过估计在线状态的平均值和协方差计算的。通过代替UKF的滤波误差协方差矩阵来更新可用于计算每个模型的似函数的剩余协方差。根据更新的似然函数和似然比,可以获得MTPM的实时估计,然后在Immukf中应用。可以获得自适应MTPM Immukf算法。最后,为了验证正确性和有效性,所提出的方法应用于导弹轨迹跟踪。根均方(RMS)误差用作性能评估指标。仿真结果表明,该算法优于IMVukf算法,实现了与PCRLB非常接近的RMS跟踪性能。

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