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Adaptive Weight Update Algorithm for Target Tracking of UUV Based on Improved Gaussian Mixture Cubature Kalman Filter

机译:基于改进的高斯混合Cubature Kalman滤波器的UUV目标跟踪自适应权重算法

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The Gaussian mixture filter can solve the non-Gaussian problem of target tracking in complex environment by the multimode approximation method, but the weights of the Gaussian component of the conventional Gaussian mixture filter are only updated with the arrival of the measurement value in the measurement update stage. When the nonlinear degree of the system is high or the measurement value is missing, the weight of the Gauss component remains unchanged, and the probability density function of the system state cannot be accurately approximated. To solve this problem, this paper proposes an algorithm to update adaptive weights for the Gaussian components of a Gaussian mixture cubature Kalman filter (CKF) in the time update stage. The proposed method approximates the non-Gaussian noise by splitting the system state, process noise, and observation noise into several Gaussian components and updates the weight of the Gaussian components in the time update stage. The method contributes to obtaining a better approximation of the posterior probability density function, which is constrained by the substantial uncertainty associated with the measurements or ambiguity in the model. The estimation accuracy of the proposed algorithm was analyzed using a Taylor expansion. A series of extensive trials was performed to assess the estimation precision corresponding to various algorithms. The results based on the data pertaining to the lake trial of an unmanned underwater vehicle (UUV) demonstrated the superiority of the proposed algorithm in terms of its better accuracy and stability compared to those of conventional tracking algorithms, along with the associated reasonable computational time that could satisfy real-time tracking requirements.
机译:高斯混合滤波器可以通过多模逼近方法解决复杂环境中的目标跟踪的非高斯问题,但是传统高斯混合滤波器的高斯组件的权重仅在测量更新中的测量值的到达时更新阶段。当系统的非线性程度高或缺少测量值时,高斯部件的重量保持不变,并且系统状态的概率密度函数不能精确地近似。为了解决这个问题,本文提出了一种算法在时间更新阶段中更新高斯混合Cubature Kalman滤波器(CKF)的高斯组件的自适应权重。所提出的方法通过将系统状态,处理噪声和观察噪声分成几个高斯组件来近似非高斯噪声,并更新时间更新阶段的高斯组件的权重。该方法有助于获得后验概率密度函数的更好近似,这受模型中的测量或模糊的实质性不确定性约束。使用泰勒膨胀分析所提出的算法的估计精度。进行了一系列广泛的试验以评估对应于各种算法的估计精度。基于与无人水下车辆(UUV)的湖泊试验有关的数据的结果证明了与传统跟踪算法相比其更好的准确性和稳定性的提出算法的优越性,以及相关合理的计算时间可以满足实时跟踪要求。

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